. .. , Elaboration du programme Epidemium : organisation, financement, p.231

, Dispositifs et outils de gestion au sein du programme Epidemium

». .. ,

, Le programme Epidemium comme la résolution d'une tâche couplée

.. .. Durant-le-premier-challenge4cancer,

, La confrontation des projets aux données disponibles : les trajectoires d'exploration

, Une grande liberté organisationnelle : émergence de « sous-communautés éphémères », Organisation et dispositifs de gestion au sein d'Epidemium

, De la capitalisation « sauvage » à la mise en place d'un outil de gestion de la valeur

. .. , Une plus grande communauté avec moins de participation

. .. , Analyse de la production et extension de la fonction de valeur

, 280 3.1. La réussite du challenge 2 portée en partie par la capitalisation des participants

, Extension de la fonction de valeur

, Enfin, non examinées dans ce travail, les approches de conception sociales et psychologiques

R. Bonney, C. B. Cooper, J. Dickinson, S. Kelling, T. Phillips et al., Citizen Science: A Developing Tool for Expanding Science Knowledge and Scientific Literacy, 2009.

, BioScience, vol.59, issue.11, pp.977-984

C. Franzoni and H. Sauermann, Crowd science: The organization of scientific research in open collaborative projects, Research Policy, vol.43, issue.1, pp.1-20, 2014.

F. Houllier, Les sciences participatives en France: Etat des lieux, bonnes pratiques et recommandations. Les Sciences Participatives En France, p.63, 2016.

, Organisation des sciences citoyennes -Organisation et gestion du processus scientifique

I. Chompalov, J. Genuth, and W. Shrum, The organization of scientific collaborations, Crowdsourcing et modèle d'organisation de la foule, pp.749-767, 2002.

A. Afuah and C. L. Tucci, Crowdsourcing As A Solution To Distant Search DISTANT SEARCH, 2012.

K. J. Boudreau and K. R. Lakhani, Open" disclosure of innovations, incentives and follow-on reuse: Theory on processes of cumulative innovation and a field experiment in computational biology, Research Policy, vol.44, issue.1, pp.4-19, 2015.

J. Howe, The Rise of Crowdsourcing. Wired Magazine, vol.14, pp.1-5, 2006.

A. A. King and K. R. Lakhani, The Contingent Effect of Absorptive Capacity: An Open Innovation Analysis, SSRN Electronic Journal, 2012.

T. Brady and A. Davies, Building project capabilities: From exploratory to exploitative learning, Organization Studies, vol.25, issue.9, pp.1601-1621, 2004.

D. Laney, Application Delivery Strategies, Algorithmes d'Intelligence Artificielle Shmueli, vol.25, pp.289-310, 2001.

B. C. Anderson, The End of Theory : The Data Deluge Makes the Scientific Method Obsolete The End of Theory : The Data Deluge Makes the Scientific Method Obsolete, pp.14-16, 2008.

T. Hey, S. Tansley, and K. Tolle, The Fourth Paradigm: Data-Intesive Scientific Discovery. E-Science and Information Management, p.1, 2009.

R. Kitchin, Big Data, new epistemologies and paradigm shifts, Big Data & Society, vol.1, issue.1, p.205395171452848, 2014.

, Histoire des sciences et transformation par les données -Introduction des instruments scientifique

M. Daumas, Les Instruments scientifiques aux XVIIe et XVIIIe siècles, pp.402-403, 1953.

C. Licoppe, La Formation de la pratique scientifique : le discours de l'experiènce en France et en Angleterre, pp.1630-1820, 1996.

S. Shapin, The Invisible Technician, American Scientist, vol.77, issue.6, pp.554-563, 1989.

S. Schaffer, Astronomers Mark Time: Discipline and the Personal Equation, Science in Context, vol.2, issue.1, pp.115-145, 1988.

S. M. Stigler, The History of Statistics: The Measurement of Uncertainty before 1900, Technology and Culture, vol.29, 1986.

, Modèles de l'activité scientifique -Modèles de la logique de découverte scientifique

D. Kulkarni and H. A. Simon, The processes of scientific discovery: The strategy of experimentation, Cognitive Science, vol.12, issue.2, pp.139-175, 1988.

R. D. King, J. Rowland, W. Aubrey, M. Liakata, M. Markham et al., The robot scientist adam, Computer, vol.42, issue.8, pp.46-54, 2009.

D. Klahr and K. Dunbar, Dual space search during scientific reasoning, Cognitive Science, vol.12, issue.1, pp.1-48, 1988.

A. O. Kazakçi, On the imaginative constructivist nature of design: A theoretical approach, Research in Engineering Design, vol.24, issue.2, pp.127-145, 2013.

E. Von-hippel and G. Krogh, Identifying Viable "Need-Solution Pairs": Problem Solving Without Problem Formulation. Organization Science, orsc, 1023.

W. J. Abernathy and R. S. Rosenbloom, Parallel Strategies in Development Projects, Management Science, vol.15, issue.10, 1969.

C. Adam-bourdarios, G. Cowan, C. Germain, and I. Guyon, The Higgs boson machine learning challenge, NIPS Workshop on High-Energy Physics and Machine Learning, vol.42, pp.19-55, 2015.
URL : https://hal.archives-ouvertes.fr/hal-01208587

A. Afuah, Crowdsourcing: A Primer and Research Framework, vol.1, 2018.

A. Afuah and C. L. Tucci, Crowdsourcing As A Solution To Distant Search DISTANT SEARCH, 2012.

R. Agarwal and V. Dhar, Big data, data science, and analytics: The opportunity and challenge for IS research, Information Systems Research, vol.25, issue.3, pp.443-448, 2014.

F. Aggeri and J. Labatut, Une approche généalogie des theories fondées sur les instruments de gestion, FInance Contrôle Stratégie, vol.13, issue.3, pp.5-37, 2010.

M. Agogué, G. Comtet, J. Menudet, R. Picard, and P. Le-masson, Managing innovative design within the health ecosystem : the Living Lab as an architect of the unknown, Management & Avenir Santé, N°, vol.1, issue.1, p.17, 2017.

M. Agogué, A. O. Kazakçi, A. Hatchuel, P. Le-masson, B. Weil et al., The impact of type of examples on originality: Explaining fixation and stimulation effects, Journal of Creative Behavior, vol.48, issue.1, pp.1-12, 2014.

A. Agrawal and A. Choudhary, Perspective: Materials informatics and big data: Realization of the "fourth paradigm" of science in materials science, APL Materials, vol.4, issue.5, p.53208, 2016.

T. J. Allen, Studies of the problem-solving process in engineering design, IEEE Transactions on Engineering Management, 1966.

T. J. Allen and R. Katz, The dual ladder: motivational solution or managerial delusion? R&D Management, vol.16, pp.185-197, 1986.

T. J. Allen, D. M. Lee, and M. L. Tushman, R&D Performance as a Function of Internal Communication, Project Management, and the Nature of the Work, IEEE Transactions On Engineering Management, vol.27, issue.1, pp.2-12, 1980.

B. Alipanahi, A. Delong, M. T. Weirauch, and B. J. Frey, Predicting the sequence specificities of DNAand RNA-binding proteins by deep learning, Nature Biotechnology, vol.33, issue.8, pp.831-838, 2015.

R. Alonso, M. Piñeros, M. Laversanne, C. Musetti, M. Garau et al., Lung cancer incidence trends in Uruguay 1990-2014: An age-period-cohort analysis, Cancer Epidemiology, vol.55, pp.17-22, 2018.

X. Amatriain, Netflix Recommendatons -Beyond the 5 Stars, pp.1-5, 2012.

R. O. Amorín, E. Pérez-montero, and J. M. Vílchez, On the oxygen and nitrogen chemical abundances and the evolution of the "green pea" galaxies, Astrophysical Journal Letters, vol.715, issue.2 PART 2, pp.128-132, 2010.

B. C. Anderson, The End of Theory : The Data Deluge Makes the Scientific Method Obsolete The End of Theory : The Data Deluge Makes the Scientific Method Obsolete, pp.14-16, 2008.

T. Anderson and J. Dron, Teaching Crowds: Learning and Social Media. Teaching Crowds: Learning and Social Media, 2014.

E. Antonsson and J. Cagan, Formal Engineering Design Synthesis, 2001.

D. G. Appley and A. E. Winder, An Evolving Definition of Collaboration and Some Implications for the World of Work, The Journal of Applied Behavioral Science, vol.13, issue.3, pp.279-291, 1977.

S. R. Arnstein, A Ladder Of Citizen Participation, Journal of the American Planning Association, vol.35, issue.4, pp.216-224, 1969.

D. J. Armstrong and P. Cole, Managing distances and differences in geographically distributed work groups, Diversity in work teams: Research paradigms for a changing workplace, pp.187-215, 2004.

N. Asgharbeygi, P. Langley, S. Bay, and K. Arrigo, Inductive revision of quantitative process models, Ecological Modelling, vol.194, pp.70-79, 2006.

K. Ayas and N. Zeniuk, Project-based Learning: Building Communities of Reflective Practitioners, Management Learning, 2001.

C. A. Azencott, T. Aittokallio, S. Roy, T. Norman, S. Friend et al., The inconvenience of data of convenience: Computational research beyond postmortem analyses, Nature Methods, 2017.
URL : https://hal.archives-ouvertes.fr/hal-01679028

L. Bagla-gökalp, Le chercheur et son instrument: Changement des techniques de mesure et des pratiques scientifiques en mécanique des fluidesLe chercheur et son instrument: Changement des techniques de mesure et des pratiques scientifiques en mecanique des fluides, Revue Française de Sociologie, vol.37, issue.4, p.537, 1996.

M. Balconi, S. Breschi, and F. Lissoni, Networks of inventors and the role of academia: An exploration of Italian patent data, Research Policy, vol.33, issue.1, pp.127-145, 2004.

K. R. Ballantine, S. Hanna, S. Macfarlane, P. Bradbeer, L. Teague et al., Childhood cancer registration in New Zealand: A registry collaboration to asssess and improve data quality, Cancer Epidemiology, vol.55, pp.104-109, 2018.

R. G. Baraniuk, More is less: Signal processing and the data deluge, 2011.

Y. Barthe, Epidémiologie populaire. In Dictionnaire de la participation dictionnaire critique interdisciplinaire de la participation, 2013.

H. Bathelt, A. Malmberg, and P. Maskell, Clusters and knowledge: Local buzz, global pipelines and the process of knowledge creation, Progress in Human Geography, 2004.

R. Beale, Supporting serendipity: Using ambient intelligence to augment user exploration for data mining and web browsing, International Journal of Human Computer Studies, 2007.

D. Beaver, B. De, and R. Rosen, Studies in scientific collaboration Part III. Professionalization and the natural history of modern scientific co-authorship, Scientometrics, vol.1, issue.3, pp.231-245, 1979.

D. Becquemont, , 1944.

H. Ben-aissa, Quelle méthodologie de recherche appropriée pour une construction de la recherche en gestion ? Xième Conférence de l'Association Internationale de Management Stratégique, p.27, 2001.

J. Benkert and I. Letina, Designing Dynamic Research Contests, 2016.

D. Berger, A brief history of medical diagnosis and the birth of the clinical laboratory. Part 1-Ancient times through the 19th century, In Medical Laboratory Observer, vol.31, issue.7, pp.28-40, 1999.

J. Bian, U. Topaloglu, and F. Yu, Towards large-scale twitter mining for drug-related adverse events, Proceedings of the 2012 international workshop on Smart health and wellbeing -SHB '12, p.25, 2012.

K. Bimpikis, S. Ehsani, and M. Mostagir, Designing Dynamic Contests, Proceedings of the Sixteenth ACM Conference on Economics and Computation -EC '15, pp.281-282, 2015.

J. P. Birnholtz and M. J. Bietz, Data at work, Proceedings of the 2003 international ACM SIGGROUP conference on Supporting group work -GROUP '03, p.339, 2003.

B. C. Björk and D. Solomon, The publishing delay in scholarly peer-reviewed journals, Journal of Informetrics, vol.7, issue.4, pp.914-923, 2013.

N. Blaikie and J. Priest, Designing Social Research The Logic of Anticipation, 2019.

J. Bohannon, The cyberscientist, Science, vol.357, issue.6346, pp.18-21, 2017.

R. Bolam, A. Mcmahon, L. Stoll, S. Thomas, M. Wallace et al., Creating and Sustaining Effective Professional Learning Communities, 2005.

R. Bonney, H. Ballard, R. Jordan, E. Mccallie, T. Phillips et al., Public Participation in Scientific Research: Defining the Field and Assessing Its Potential for Informal Science Education. A CAISE Inquiry Group Report. A CAISE Inquiry Group Report, 2009.

R. Bonney, C. B. Cooper, J. Dickinson, S. Kelling, T. Phillips et al., Citizen Science: A Developing Tool for Expanding Science Knowledge and Scientific Literacy, BioScience, vol.59, issue.11, pp.977-984, 2009.

R. Bonney, J. L. Shirk, T. B. Phillips, A. Wiggins, H. L. Ballard et al., Next Steps for Citizen Science, Science, vol.343, issue.6178, pp.1436-1437, 2014.

C. L. Borgman, Scholarship in the digital age : information, infrastructure, and the Internet, 2007.

K. J. Boudreau, N. Lacetera, and K. R. Lakhani, Incentives and Problem Uncertainty in Innovation Contests: An Empirical Analysis, Management Science, vol.57, issue.5, pp.843-863, 2011.

K. J. Boudreau and K. R. Lakhani, Open" disclosure of innovations, incentives and follow-on reuse: Theory on processes of cumulative innovation and a field experiment in computational biology, Research Policy, vol.44, issue.1, pp.4-19, 2015.

K. J. Boudreau, K. R. Lakhani, and N. Lacetera, Parallel Search , Incentives and Problem Type : Revisiting the Competition and Innovation Link, pp.1-41, 2008.

G. Boulton, M. Rawlins, P. Vallance, and M. Walport, Science as a public enterprise: The case for open data, The Lancet, 2011.

D. Boyd and K. Crawford, Six Provocations for Big Data, 2011.

D. C. Brabham, Crowdsourcing as a model for problem solving: An introduction and cases, Convergence, vol.14, pp.75-90, 2008.

T. Brady and A. Davies, Building project capabilities: From exploratory to exploitative learning, Organization Studies, vol.25, issue.9, pp.1601-1621, 2004.

T. Brady, N. Marshall, A. Prencipe, and F. Tell, Making Sense of Learning Landscapes in Project-Based Organisations, European Conferenece on Organizational Knowledge, Learning and Capabilities, 2002.

L. Brokaw, Could 'Citizen Science' Be Better Than Academy Science?, pp.11-13, 2011.

F. Brooks, The mythical man-month: Essays on software engineering, IEEE Annals of the History of Computing, 1996.

P. Brown, Popular Epidemiology: Community Response to Toxic Waste-Induced Disease in, Technology, & Human Values, vol.124, issue.3, pp.78-85, 1987.

P. Brown, Popular Epidemiology and Toxic Waste Contamination: Lay and Professional Ways of Knowing, Journal of Health and Social Behavior, vol.33, issue.3, p.267, 1992.

J. S. Brown and P. Duguid, Knowledge and Organization: A Social-Practice Perspective, Organization Science, vol.12, issue.2, pp.198-213, 2001.

T. Buecheler, J. H. Sieg, R. M. Füchslin, and R. Pfeifer, Crowdsourcing , Open Innovation and Collective Intelligence in the Scientific Method : A Research Agenda and Operational Framework, Proceedings of the Twelfth International Conference on the Synthesis and Simulation of Living Systems, pp.679-686, 2010.

H. J. Butler, L. Ashton, B. Bird, G. Cinque, K. Curtis et al., Using Raman spectroscopy to characterize biological materials, Nature Protocols, vol.11, issue.4, pp.664-687, 2016.

B. Cabanes, Modéliser l'émergence de l'expertise et sa gouvernance dans les entreprises innovantes : des communautés aux sociétés proto-épistémiques d'experts, 2017.

A. Cadeddu, Pasteur et le choléra des poules: révision critique d'un récit historique, History and Philosophy of the Life Sciences, vol.7, issue.1, pp.87-104, 1985.

A. Callahan, M. Dumontier, and N. H. Shah, HyQue: Evaluating hypotheses using Semantic Web technologies, Journal of Biomedical Semantics, vol.2, issue.2, 2011.

M. Callon, P. Lascoumes, and Y. Barthe, Agir dans un monde incertain: essai sur la démocratie technique, 2001.

C. Cardamone, K. Schawinski, M. Sarzi, S. P. Bamford, N. Bennert et al., , 2009.

, Galaxy Zoo Green Peas: Discovery of a class of compact extremely star-forming galaxies, Monthly Notices of the Royal Astronomical Society, vol.399, issue.3, pp.1191-1205

J. Cariou, Former l'esprit scientifique en privilégiant l'initiative des élèves dans une démarche s'appuyant sur l'épistémologie et l'histoire des sciences, 2009.

P. R. Carlile, Transferring, Translating, and Transforming: An Integrative Framework for Managing Knowledge Across Boundaries, Organization Science, vol.15, issue.5, pp.555-568, 2004.

R. Cavallo, W. Street, N. York, and N. Haven, Efficient Crowdsourcing Contests, Proceedings of the 11th International Conference on Autonomous Agents and Multiagent Systems (AAMAS 2012, 2012.

A. Casilli, Digital Labor : travail, technologies et conflictualités, 2015.

A. D. Chandler, Scale and Scope: The Dynamics of Industrial Capitalism, 1990.

Z. Chelly-dagdia, C. Zarges, B. Schannes, M. Micalef, L. Galiana et al., Rough Set Theory as a Data Mining Technique: A Case Study in Epidemiology and Cancer Incidence Prediction, European Conference on Machine Learning, 2018.

Y. Chen, T. Dai, C. G. Korpeoglu, E. Körpeo?lu, O. Sahin et al., Innovative Online Platforms: Research Opportunities. SSRN, 2018.

H. Chesbrough, Open Innovation : A New Paradigm for Understanding Industrial Innovation, 2006.

A. Chiolero, Big data in epidemiology: Too big to fail? Epidemiology, 2013.

I. Chompalov, J. Genuth, and W. Shrum, The organization of scientific collaborations, Research Policy, issue.5, pp.749-767, 2002.

J. R. Christianson, On Tycho's Island: Tycho Brahe and His Assistants, pp.1570-1601, 2000.

H. H. Clark and S. E. Brennan, Grounding in communication, Perspectives on socially shared cognition, pp.127-149, 2004.

W. M. Cohen and D. A. Levinthal, Absorptive Capacity: A New Perspective on Learning and Innovation, Administrative Science Quarterly, vol.35, issue.1, p.128, 1990.

J. P. Cohn, Citizen Science: Can Volunteers Do Real Research?, BioScience, vol.58, issue.3, pp.192-197, 2008.

S. A. Cole, Acculturating Forensic Science: What is 'Scientific Culture', and How Can Forensic Science Adopt It? SSRN, vol.38, 2011.

A. L. Cole, A. E. Austin, R. P. Hickson, M. S. Dixon, and E. L. Barber, Review of methodological challenges in comparing the effectiveness of neoadjuvant chemotherapy versus primary debulking surgery for advanced ovarian cancer in the United States, Cancer Epidemiology, 2018.

J. P. Cohn, Citizen Science: Can Volunteers Do Real Research?, BioScience, vol.58, issue.3, pp.192-197, 2008.

V. Comiti, Eléments historiques de l'utilisation de la méthode statistique en médecine, pp.607-609, 1976.

R. Coombs and R. Hull, Knowledge management practices" and path-dependency in innovation, 1998.

C. B. Cooper, J. Dickinson, T. Phillips, and . R. Bonney, Citizen science as a tool for conservation in residential ecosystems, Ecology and Society, vol.12, issue.2, pp.1-9, 2007.

E. A. Corley, P. C. Boardman, and B. Bozeman, Design and the management of multi-institutional research collaborations: Theoretical implications from two case studies, Research Policy, vol.35, issue.7, pp.975-993, 2006.

M. Cottle and W. Hoover, Transforming Health Care Through Big Data, pp.1-24, 2013.

J. Cranshaw and A. Kittur, The Polymath Project: Lessons from a Successful Online Collaboration in Mathematics. Proceedings of the 2011 Annual Conference on Computer Human Interaction, pp.1865-1874, 2011.

K. Crawford, The Hidden Biases in Big Data, HBR Blog Network, pp.9-10, 2013.

M. A. Cronin and L. R. Weingart, REPRESENTATIONAL GAPS , INFORMATION PROCESSING, AND CONFLICT IN FUNCTIONALLY DIVERSE TEAMS, vol.32, issue.3, pp.761-773, 2007.

N. Cross, Design Cognition: results from protocol and other empirical studies of design activity, Design Knowing and Learning: Cognition in Design Education, pp.79-103, 2001.

J. N. Cummings and S. Kiesler, Coordination costs and project outcomes in multi-university collaborations, Research Policy, vol.36, issue.10, pp.1620-1634, 2007.

K. B. Dahlin, L. R. Weingart, and P. J. Hinds, Team diversity and information use, 2005.
URL : https://hal.archives-ouvertes.fr/hal-00480406

M. Daumas, Quelques fabricants d'instruments scientifiques anciens, vol.3, pp.364-370, 1950.

M. Daumas, Les Instruments scientifiques aux XVIIe et XVIIIe siècles, pp.402-403, 1953.

T. H. Davenport and D. J. Patil, Data scientist: the sexiest job of the 21st century, Harvard Business Review, vol.90, issue.10, pp.70-76, 2012.

A. David, Structure et dynamique des innovations managériales. Cinquième Conférence de l'AIMS, pp.1-29, 1996.

A. David, Logique, épistémologie et méthodologie en sciences de gestion, Conférence de l'AIMS, pp.1-23, 1999.

A. David, A. Hatchuel, and R. Laufer, Les nouvelles fondations des sciences de gestion : éléments d'épistémologie de la recherche en management, 2012.

P. A. David, THE HISTORICAL ORIGINS OF ' OPEN SCIENCE ' An Essay on Patronage , Reputation and Common Agency Contracting in the Scientific Revolution, 2007.

A. Davies and T. Brady, Organisational capabilities and learning in complex product systems: towards repeatable solutions, Research Policy, vol.29, issue.7-8, pp.931-953, 2000.

C. K. De-dreu and M. A. West, Minority dissent and team innovation: The importance of participation in decision making, Journal of Applied Psychology, vol.86, issue.6, pp.1191-1201, 2001.

R. J. Defillippi, C. Jones, and M. B. Arthur, Project-Based Learning as the Interplay of Career and Company Non-Financial Capital, Management Learning, 2001.

S. Delamont and P. Atkinson, Doctoring Uncertainty : Mastering Craft Knowledge Doctoring Uncertainty : Mastering Craft Knowledge, vol.31, pp.87-107, 2001.

J. Denrell, C. Fang, and S. G. Winter, The economics of strategic opportunity, Strategic Management Journal, 2003.

R. Dersimonian and N. Laird, Meta-analysis in clinical trials revisited, Contemporary Clinical Trials, vol.45, pp.139-145, 2015.

D. Dipalantino and M. Vojnovic, Crowdsourcing and all-pay auctions, Proceedings of the tenth ACM conference on Electronic commerce -EC '09, p.119, 2009.

V. Dhar, Data science and prediction, Communications of the ACM, vol.56, issue.12, pp.64-73, 2013.

M. C. Domroese and E. A. Johnson, Why watch bees? Motivations of citizen science volunteers in the Great Pollinator Project, 2016.

D. Dubois, P. Hájek, and H. Prade, Knowledge-Driven versus Data-Driven Logics, Journal of Logic, Language, and Information, vol.9, 2000.

M. A. Dummett, Elements of intuitionism, 2000.

J. Dyche, Big data '"Eurekas!"' don't just happen, 2012.

D. Fyffe, W. Hines, W. Kee-lee, and N. , System Reliability Allocation and a Computational Algorithm, IEEE Transactions on Reliability, R, vol.17, issue.2, pp.64-69, 1968.

J. Edelman, UNDERSTANDING RADICAL BREAKS: MEDIA AND BEHAVIOR IN SMALL TEAMS ENGAGED IN REDESIGN SCENARIOS, 2011.

L. Egghe, Theory and practise of the g-index, Scientometrics, vol.69, issue.1, pp.131-152, 2006.

K. M. Eisenhardt and M. E. Graebner, Theory building from cases: Opportunities and challenges, vol.50, pp.25-32, 2007.

A. A. Elias, R. Y. Cavana, and L. S. Jackson, Stakeholder analysis for R & D project management. R and D Management, vol.32, pp.301-310, 2002.

T. Erickson, Some Thoughts on a Framework for Crowdsourcing, pp.1-4, 2011.

O. Eris, Insisting on truth at the expense of conceptualization: Can engineering portfolios help?, International Journal of Engineering Education, vol.22, issue.3, pp.551-559, 2006.

E. Estellés-arolas and F. González-ladrón-de-guevara, Towards an integrated crowdsourcing definition, Journal of Information Science, vol.38, issue.2, pp.189-200, 2012.

S. K. Ethiraj, P. Kale, M. S. Krishnan, and J. V. Singh, Where do capabilities come from and how do they matter? A study in the software services industry, Strategic Management Journal, 2005.

A. D. Ewing, K. E. Houlahan, Y. Hu, K. Ellrott, C. Caloian et al., Combining tumor genome simulation with crowdsourcing to benchmark somatic single-nucleotidevariant detection, Nature Methods, vol.12, issue.7, pp.623-630, 2015.

J. Fan, F. Han, and H. Liu, Challenges of Big Data analysis, National Science Review, 2014.

D. Fanelli, How many scientists fabricate and falsify research? A systematic review and meta-analysis of survey data, 2009.

S. Faraj and A. Majchrzak, Knowledge Collaboration in Online Communities, vol.22, pp.1224-1239, 2011.

A. Fayard and G. Desanctis, Kiosks, Clubs and Neighborhoods: The Language Games of Online Forums, Journal of the Association for Information Systems, vol.9, issue.10, pp.677-705, 2008.

B. Fecher and S. Friesike, Open Science: One Term, Five Schools of Thought, Opening Science, pp.17-47, 2014.

C. Franzoni and H. Sauermann, Crowd science: The organization of scientific research in open collaborative projects, Research Policy, vol.43, issue.1, pp.1-20, 2014.

D. A. Fischer, M. E. Schwamb, K. Schawinski, C. Lintott, J. Brewer et al., Planet Hunters: The first two planet candidates identified by the public using the Kepler public archive data, Monthly Notices of the Royal Astronomical Society, vol.419, issue.4, pp.2900-2911, 2012.

A. Foster and N. Ford, Serendipity and information seeking: An empirical study, Journal of Documentation, 2003.

J. Galegher, L. Sproull, and S. Kiesler, Legitimacy, authority, and community in electronic support groups, Written Communication, vol.15, issue.4, pp.493-530, 1998.

J. Gallaugher and S. Ransbotham, Social media and customer dialog management at Starbucks, MIS Quarterly Executive, 2010.

Y. Gao, J. Kinoshita, E. Wu, E. Miller, R. Lee et al., SWAN: A distributed knowledge infrastructure for Alzheimer disease research, Web Semantics, vol.4, issue.3, pp.222-228, 2006.

P. Gaulon, Les instruments scientifiques -Définition et historique, Bulletin de La Sabix, vol.18, issue.18, pp.9-15, 1997.

A. Gandomi and M. Haider, Beyond the hype: Big data concepts, methods, and analytics, International Journal of Information Management, vol.35, issue.2, pp.137-144, 2015.

D. M. Gann and A. Salter, Learning and Innovation Management in Project-Based, Service-Enhanced Firms, International Journal of Innovation Management, issue.04, pp.431-454, 1998.

D. M. Gann and A. J. Salter, Innovation in project-based, service-enhanced firms: the construction of complex products and systems, Research Policy, vol.29, issue.7-8, pp.955-972, 2000.

D. Geiger, S. Seedorf, R. Nickerson, and M. Schader, Managing the Crowd: Towards a Taxonomy of Crowdsourcing Processes, Proceedings of the 17th Americas Conference on Information Systems, AMCIS 2011, pp.1-11, 2011.

G. George, M. R. Haas, and A. Pentland, From the editors: Big data and management, Academy of Management Journal. Academy of Management, 2014.

C. M. Gibbons, C. Limoges, H. Nowotny, P. Scott, and M. Trow, The New Production of Knowledge: The Dynamics of Science and Research in Contemporary Societies The new production of knowledge: The dynamics of science and research in contemporary societies, pp.155-167, 2010.

T. Gillier, G. Piat, B. Roussel, and P. Truchot, Managing innovation fields in a cross-industry exploratory partnership with C-K design theory, Journal of Product Innovation Management, vol.27, issue.6, pp.883-896, 2010.
URL : https://hal.archives-ouvertes.fr/hal-00586603

T. Gillier and L. Sylvain, Experimenting in the Unknown: Lessons from The Manhattan Project, European Management Review, 2018.
URL : https://hal.archives-ouvertes.fr/hal-01483018

V. V. Gligorov, Real-time data analysis at the LHC: present and future, pp.1-18, 2015.

S. González-bailõn, Social science in the era of big data, Policy and Internet, vol.5, pp.147-160, 2013.

T. Gowers, Massively collaborative mathematics, vol.461, pp.879-881, 2009.

R. M. Grant, TOWARD A KNOWLEDGE-BASED THEORY OF THE FIRM, Strategic Management Journal, vol.17, pp.109-122, 1996.

J. Gray, Fourth Paradigm: Data-Intensive Scientific Discovery -Microsoft Research, 2009.

M. Griffith, N. C. Spies, K. Krysiak, J. F. Mcmichael, A. C. Coffman et al., CIViC is a community knowledgebase for expert crowdsourcing the clinical interpretation of variants in cancer, Nature Genetics, 2017.

C. Haeussler and H. Sauermann, Credit where credit is due? The impact of project contributions and social factors on authorship and inventorship, 2012.

W. O. Hagstrom, Traditional and Modern Forms of Scientific Teamwork, Administrative Science Quarterly, vol.9, issue.3, pp.241-263, 1964.

W. O. Hagstrom, The Scientific Community, Historisches Wörterbuch der Philosophie, vol.8, 1965.

M. Haklay, Citizen Science and Policy: A European Perspective. Common Labs. Case Study Series, vol.4, p.76, 2015.

G. Hamel and C. K. Prahalad, Competing for the future, 1994.

G. Harman, Internal critique: A logic is not a theory of reasoning and a theory of reasoning is not a logic, Studies in Logic and Practical Reasoning, vol.1, issue.C, pp.171-186, 2002.

J. Han and M. Kamber, Data mining : concepts and techniques, 2010.

T. Hastie, R. Tibshirani, and J. Friedman, The Elements of Statistical Learning, 2009.

A. Hatchuel and B. Weil, L'expert et le système : gestion des savoirs et métamorphose des acteurs dans l'entreprise industrielle, suivi de quatre histoires de systèmes-experts, 1992.

A. Hatchuel, Towards design theory and expandable rationality: The unfinished programme of Herbert Simon, Journal of Management and Governance, vol.5, issue.3-4, pp.260-273, 2001.

A. Hatchuel and B. Weil, a New Approach of Innovative Design : an Introduction To C-K Theory, pp.1-15, 2003.

A. Hatchuel and B. Weil, C-K design theory: An advanced formulation, Research in Engineering Design, vol.19, issue.4, pp.181-192, 2009.

A. Hatchuel, P. Le-masson, Y. Reich, and B. Weil, A Systematic Approach of Design Theories Using Generativeness and Robustness, 11th International Conference on Engineering Design, pp.1-12, 2011.

A. Hatchuel, Y. Reich, P. Le-masson, B. Weil, and A. Kazakçi, Beyond models and decisions: Situating design through generative functions, DS 75-2: Proceedings of the 19th International Conference on Engineering Design (ICED13), Design for Harmonies, vol.2, pp.233-242, 2013.
URL : https://hal.archives-ouvertes.fr/hal-01485144

S. A. Hawley, Abundances in "Green Pea, Star-forming Galaxies. Publications of the Astronomical Society of the Pacific, vol.124, issue.911, pp.21-35, 2012.

Z. L. He, X. S. Geng, and C. Campbell-hunt, Research collaboration and research output: A longitudinal study of 65 biomedical scientists in a New Zealand university, Research Policy, vol.38, issue.2, pp.306-317, 2009.

J. D. Herbsleb, A. Mockus, T. A. Finholt, and R. E. Grinter, Distance, dependencies, and delay in a global collaboration, pp.319-328, 2004.

T. Hey, S. Tansley, and K. Tolle, The Fourth Paradigm: Data-Intesive Scientific Discovery. E-Science and Information Management, pp.1-1, 2009.

P. J. Hinds and M. Mortensen, Understanding Conflict in Geographically Distributed Teams: The Moderating Effects of Shared Identity, Shared Context, and Spontaneous Communication, Organization Science, vol.16, issue.3, pp.290-307, 2005.

E. Hippel, . Von, G. Krogh, and . Von, open Source Software and the " Private-Collective " Innovation Model : Issues for Organization Science, pp.209-224, 2003.

J. E. Hirsch, An index to quantify an individual's scientific research output, Proceedings of the National Academy of Sciences of the United States of America, vol.102, pp.16569-72, 2005.

M. Hobday, The project-based organisation: an ideal form for managing complex products and systems?, Research Policy, vol.29, issue.7-8, pp.871-893, 2002.

M. Hossain and I. Kauranen, Crowdsourcing: a comprehensive literature review, Strategic Outsourcing: An International Journal, vol.8, issue.1, pp.2-22, 2015.

F. Houllier, Les sciences participatives en France: Etat des lieux, bonnes pratiques et recommandations. Les Sciences Participatives En France, p.63, 2016.

J. Howe, The Rise of Crowdsourcing. Wired Magazine, vol.14, pp.1-5, 2006.

C. Hsieh, J. A. Nickerson, and T. R. Zenger, Opportunity discovery, problem solving and a theory of the entrepreneurial firm, Journal of Management Studies, 2007.

J. Hughes, William Kay, Samuel Devons and memories of practice in Rutherford's Manchester laboratory. Notes and Records of the, vol.62, pp.97-121, 2008.

J. P. Ioannidis, Anticipating consequences of sharing raw data and code and of awarding badges for sharing, Journal of Clinical Epidemiology, 2016.

A. Irwin, The politics of talk: Coming to terms with the "new" scientific governance, Social Studies of Science, vol.36, issue.2, pp.299-320, 2006.

B. A. Israel, A. J. Schulz, E. A. Parker, and A. B. Becker, REVIEW OF COMMUNITY-BASED RESEARCH: Assessing Partnership Approaches to Improve Public Health, Annual Review of Public Health, vol.19, issue.1, pp.173-202, 1998.

Y. I. Izotov, N. G. Guseva, and T. X. Thuan, Green pea galaxies and cohorts: Luminous compact emission-line galaxies in the Sloan Digital Sky Survey, Astrophysical Journal, vol.728, issue.2, p.161, 2011.

S. E. Jackson and K. A. Bantel, Top management and innovations in banking : Does the composition of the top team make a difference ?, Strategic Management Journal, vol.10, issue.S1, pp.107-124, 1989.

A. Jaime, M. Gardoni, J. Mosca, and D. Vinck, BASIC Lab: A software tool for supporting the production of knowledge in research organizations through the management of scientific concepts, Journal of Knowledge Management, vol.9, issue.6, pp.53-66, 2005.
URL : https://hal.archives-ouvertes.fr/hal-00260977

L. Janzik and C. Herstatt, Innovation communities: Motivation and incentives for community members to contribute, Proceedings of the 4th IEEE International Conference on Management of Innovation and Technology, ICMIT, pp.350-355, 2008.

L. B. Jeppesen and L. Frederiksen, Why Do Users Contribute to Firm-Hosted User Communities? The Case of Computer-Controlled Music Instruments, Organization Science, vol.17, issue.1, pp.45-63, 2006.

L. B. Jeppesen and K. R. Lakhani, Marginality and Problem-Solving Effectiveness in Broadcast Search, Organization Science, vol.21, issue.5, pp.1016-1033, 2010.

M. Jirotka, C. P. Lee, and G. M. Olson, Supporting scientific collaboration: Methods, tools and concepts, Computer Supported Cooperative Work, vol.22, issue.4-6, pp.667-715, 2013.

M. Jouvenet, La culture du «bricolage» instrumental et l'organisation du travail scientifique enquête dans un centre de recherche en nanosciences. Revue d'anthropologie Des Connaissances, vol.1, p.189, 2009.

L. Kalinichenko, D. Kovalev, D. Kovaleva, and O. Malkov, METHODS AND TOOLS FOR HYPOTHESIS-DRIVEN RESEARCH SUPPORT: A SURVEY *, p.9, 2015.

N. Kaplan, The Role of the Research Administrator, Administrative Science Quarterly, vol.4, issue.1, pp.20-42, 1959.

J. S. Katz and B. R. Martin, What is research collaboration? Research Policy, vol.26, pp.1-18, 1997.

A. O. Kazakçi, On the imaginative constructivist nature of design: A theoretical approach, Research in Engineering Design, vol.24, issue.2, pp.127-145, 2013.

A. O. Kazakçi, Conceptive artificial intelligence: Insights from design theory, Proceedings of International Design Conference, DESIGN, pp.33-48, 2014.

A. O. Kazakçi, Data science as a new frontier for design, International Conference on Engineering Design, pp.1-10, 2015.

S. Kelling, W. M. Hochachka, D. Fink, M. Riedewald, R. Caruana et al., Dataintensive Science: A New Paradigm for Biodiversity Studies, vol.59, pp.613-620, 2009.

A. Keegan and J. R. Turner, Quantity versus Quality in Project-based Learning Practices, Management Learning, 2001.

B. Kégl, A. Boucaud, M. Cherti, A. Kazakç?, A. Gramfort et al., The RAMP framework: from reproducibility to transparency in the design and optimization of scientific workflows, International Conference on Machine Learning, 2018.

S. Kelling, W. M. Hochachka, D. Fink, M. Riedewald, R. Caruana et al., Dataintensive Science: A New Paradigm for Biodiversity Studies, vol.59, pp.613-620, 2009.

F. Khatib, F. Dimaio, S. Cooper, M. Kazmierczyk, M. Gilski et al., Crystal structure of a monomeric retroviral protease solved by protein folding game players, Nature Structural and Molecular Biology, vol.18, issue.10, pp.1175-1177, 2010.

A. Kieser, Why Organization Theory Needs Historical Analyses-Should Be And How This Performed, Organization Science, vol.5, issue.4, pp.608-620, 1994.

S. Kiesler and J. N. Cummings, What Do We Know about Proximity and Distance in Work Groups? A Legacy of, pp.76-109, 2002.

A. A. King and K. R. Lakhani, The Contingent Effect of Absorptive Capacity: An Open Innovation Analysis, SSRN Electronic Journal, 2012.

A. King and K. Lakhani, Using Open Innovation to Identify the Best Ideas, Sloanreview.Mit.Edu, vol.50, issue.55121, pp.69-76, 2013.

R. D. King, J. Rowland, W. Aubrey, M. Liakata, M. Markham et al., The robot scientist adam, Computer, vol.42, issue.8, pp.46-54, 2009.

E. W. Kitch, The Nature and Function of the Patent System, The Journal of Law and Economics, vol.20, issue.2, pp.265-290, 1977.

R. Kitchin, Big Data, new epistemologies and paradigm shifts, Big Data & Society, vol.1, issue.1, p.205395171452848, 2014.

R. Kitchin and G. Mcardle, What makes Big Data, Big Data? Exploring the ontological characteristics of 26 datasets, Big Data & Society, vol.3, issue.1, p.205395171663113, 2016.

A. Kittur, E. H. Chi, and B. Suh, Crowdsourcing user studies with Mechanical Turk, Proceeding of the twenty-sixth annual CHI conference on Human factors in computing systems -CHI '08, p.453, 2008.

A. Kittur, R. E. Kraut, and R. E. Kraut, Harnessing the Wisdom of Crowds in Wikipedia : Quality through Coordination Harnessing the Wisdom of Crowds in Wikipedia, 2008.

D. Klahr and K. Dunbar, Dual space search during scientific reasoning, Cognitive Science, vol.12, issue.1, pp.1-48, 1988.

D. Klahr and H. A. Simon, Studies of Scientific Creativity: Complimentary approaches and convergent findings, Psychological Bulletin, vol.125, issue.5, pp.524-543, 1999.

O. Kokshagina, P. Le-masson, B. Weil, and P. Cogez, Risk Management strategies in a highly uncertain environment: understanding the role of common unknown, 19th International Product Development Management Conference, pp.1-26, 2012.

O. Kokshagina, T. Gillier, P. Cogez, P. Le-masson, and B. Weil, Towards a new form of ideas contests in high-tech environment: design community building, p.16743, 2014.
URL : https://hal.archives-ouvertes.fr/hal-00975740

B. König, K. Diehl, K. Tscherning, and K. Helming, A framework for structuring interdisciplinary research management, vol.42, pp.261-272, 2013.

R. T. Kouzes, J. D. Myers, and W. A. Wulf, Collaboratories: Doing science on the internet, Computer, vol.29, issue.8, pp.40-46, 1996.

T. S. Kuhn and H. Ian, The structure of scientific revolutions, 1962.

D. Kulkarni and H. A. Simon, The processes of scientific discovery: The strategy of experimentation, Cognitive Science, vol.12, issue.2, pp.139-175, 1988.

C. Laboulaye and C. Babbage, Économie des machines et des manufactures, BnF-P, 2016.

A. Labrinidis and H. V. Jagadish, Challenges and opportunities with big data, Proceedings of the VLDB Endowment, vol.5, pp.2032-2033, 2012.

K. R. Lakhani and E. Von-hippel, How open source software works: "free" user-to-user assistance, 2003.

B. Lallé, Production de la connaissance et de l'action en sciences de gestion. Le statut expérimenté de « chercheur-acteur, Revue Française de Gestion, vol.30, issue.148, pp.45-65, 2004.

D. Laney, Application Delivery Strategies, Meta Group, 2001.

P. Langley, H. A. Simon, G. L. Bradshaw, and J. M. Zytkow, Scientific discovery: computational explorations of the creative processes, 1987.

J. Largeaut, La logique. (PUF, Ed.). Paris: Que sais-je?, 1993.

B. Latour and S. Woolgar, La Vie de laboratoire. La production des faits scientifiques, 1988.
URL : https://hal.archives-ouvertes.fr/hal-02057284

D. Lazer, R. Kennedy, G. King, and A. Vespignani, The parable of google flu: Traps in big data analysis, 2014.

L. Bon and G. , The crowd: A study of the popular mind, 1908.

L. Masson, P. Weil, and B. , Réinventer l'entreprise : la gestion collégiale des inconnus communs non appropriables, L'entreprise, 2014.

J. L. Le-moigne, Les épistémologies constructivistes. PUF, 1995.

N. Lechopier, Recherche et non-recherche. Les valeurs à l'oeuvre dans l'évaluation des protocoles épidémiologiques. Revue d'Epidemiologie et de Sante Publique, vol.58, pp.41-48, 2010.
URL : https://hal.archives-ouvertes.fr/halshs-01638143

,

J. Lee, W. Kladwang, M. Lee, D. Cantu, M. Azizyan et al., RNA design rules from a massive open laboratory, Proceedings of the National Academy of Sciences, vol.111, issue.6, pp.2122-2127, 2014.

C. Leifert and S. Woodward, Laboratory Contamination Management; the Requirement for Microbiological Quality Assurance, Plant Cell, Tissue and Organ Culture, vol.52, pp.237-244, 2013.

S. S. Levine and M. J. Prietula, Open source, open innovation, open communities: What drives the performance of "open, Academy of Management 2012 Annual Meeting, 2012.

S. S. Levine, M. J. Prietula, and S. S. Levine, Performance Open Collaboration for Innovation : Principles and Performance, 2014.

E. Y. Li, C. H. Liao, and H. R. Yen, Co-authorship networks and research impact: A social capital perspective, Research Policy, vol.42, issue.9, pp.1515-1530, 2013.

M. J. Liberatore and G. J. Titus, The Practice of Management Science in R & D Project Management, Management Science, vol.29, issue.8, pp.962-974, 1983.

C. Lichten, R. Ioppolo, C. D', A. Rebecca, K. Simmons et al., Citizen science: crowdsourcing for research, 2018.

C. Licoppe, La Formation de la pratique scientifique : le discours de l'experiènce en France et en Angleterre, pp.1630-1820, 1996.

M. Lin and H. C. Lucas, Too Big to Fail : Large Samples and the p -Value Problem, Information Systems Research, vol.7047, pp.1-12, 2013.

R. K. Lindsay, B. G. Buchanan, E. A. Feigenbaum, and J. Lederberg, DENDRAL: A case study of the first expert system for scientific hypothesis formation, Artificial Intelligence, vol.61, issue.2, pp.209-261, 1993.

C. H. Loch, C. Terwiesch, and S. Thomke, Parallel and Sequential Testing of Design Alternatives, Management Science, vol.47, issue.5, pp.663-678, 2001.

C. H. Loch, M. E. Solt, and E. M. Bailey, Diagnosing unforeseeable uncertainty in a new venture, In Journal of Product Innovation Management, vol.25, pp.28-46, 2008.

A. J. Lotka, The frequency distribution of scientific productivity, Journal of the Washington Academy of Sciences, vol.16, pp.317-323, 1926.

S. Lourenço, V. B. Gunge, T. M. Andersson, .. Andersen, C. L. Lund et al., Avoidable colorectal cancer cases in Denmark -The impact of red and processed meat, Cancer Epidemiology, vol.55, pp.1-7, 2018.

S. Louvel, Des patrons aux managers : Les laboratoires de la recherche publique depuis les années 1970. Presses universitaires de Rennes, 2011.

P. Louwman, Christiaan Huygens and his telescopes, Special Publication) ESA SP, vol.1278, pp.103-114, 2004.

R. A. Lundin and A. Söderholm, A theory of the temporary organization, Scandinavian Journal of Management, vol.11, issue.4, pp.437-455, 1995.

D. Lüttgens, P. Pollok, D. Antons, and F. Piller, Wisdom of the crowd and capabilities of a few: internal success factors of crowdsourcing for innovation, Journal of Business Economics, vol.84, issue.3, pp.339-374, 2014.

D. Maclean, R. Macintosh, and S. Grant, Mode 2 management research, British Journal of Management, vol.13, issue.3, pp.189-207, 2002.

T. L. Madsen, J. Woolley, and K. Sarangee, Using Internet-based Collaboration Technologies for Innovation: Crowdsourcing vs, Expertsourcing. Academy of Management Proceedings, vol.2012, issue.1, p.14965, 2012.

A. Majchrzak and A. Malhotra, Journal of Strategic Information Systems Towards an information systems perspective and research agenda on crowdsourcing for innovation, Journal of Strategic Information Systems, vol.22, issue.4, pp.257-268, 2013.

T. W. Malone, R. Laubacher, and C. Dellarocas, The Collective Intelligence Genome THE LEADING, MIT Sloan Management Review, vol.51, pp.21-31, 2010.

A. Mao, E. Kamar, and E. Horvitz, Why Stop Now? Predicting Worker Engagement in Online Crowdsourcing. First Conference on Human Computation (HCOMP 2013, pp.103-111, 2013.

D. L. Marples, The Decisions of Engineering Design, IRE Transactions on Engineering Management, 1961.

J. Matthews, History of Biostatistics. Http://Journal.Emwa.Org, vol.25, issue.3, pp.8-11, 2016.

S. Matthias, Epistemology, The Stanford Encyclopedia of Philosophy, 2018.

M. A. Mcfadyen, A. A. Jr, S. The, M. Journal, N. Oct et al., , 2004.

, Social Capital and Knowledge Creation : Diminishing Returns of the Number and Strength of Exchange, Academy of Management Journal, vol.47, issue.5, pp.735-746

P. L. Mcleod, S. A. Lobel, and T. H. Cox, Ethnic Diversity and Creativity in Small Groups, Small Group Research, vol.27, issue.2, pp.248-264, 2007.

A. L. Mello and J. R. Rentsch, Cognitive Diversity in Teams, Small Group Research, vol.46, issue.6, pp.623-658, 2015.

V. Menger, M. Spruit, K. Hagoort, and F. Scheepers, Transitioning to a Data Driven Mental Health Practice: Collaborative Expert Sessions for Knowledge and Hypothesis Finding, Computational and Mathematical Methods in Medicine, pp.1-11, 2016.

R. K. Merton, Science and Technology in a Democratic Order, Journal of Legal and Political Sociology, pp.115-126, 1942.

R. K. Merton, Priorities in Scientific Discovery: A Chapter in the Sociology of Science, American Sociological Review, vol.22, issue.6, p.635, 1957.

R. K. Merton and N. W. Storer, The Sociology of Science: Theoretical and Empirical Investigations, Contemporary Sociology, vol.5, issue.5, p.557, 1973.

R. K. Merton and E. G. Barber, The travels and adventures of serendipity : a study in sociological semantics and the sociology of science, 2004.

H. J. Miller, The data avalanche is here. Shouldn't we be digging, Journal of Regional Science, vol.50, issue.1, pp.181-201, 2010.

F. J. Milliken, C. A. Bartel, and T. R. Kurtzberg, Diversity and Creativity in Work Groups A Dynamic Perspective on, p.346, 1997.

E. Mjolsness and D. Decoste, Machine learning for science: State of the art and future prospects, Science, 2001.

E. Mollick and R. Nanda, Wisdom or Madness? Comparing Crowds with Expert Evaluation in Funding the Arts, Management Science, vol.62, issue.6, pp.1533-1553, 2016.

J. C. Molloy, The role of feedback in managing the internet-based volunteer work force, Information Systems Research, vol.9, issue.12, pp.494-515, 2008.

I. T. Morus, Invisible Technicians, Instrument Makers and Artisans, pp.97-109, 2016.

F. Murray and S. Mahony, Exploring the Foundations of Cumulative Innovation: Implications for Organization Science, Organization Science, vol.18, issue.6, pp.1006-1021, 2007.

E. Naeser, H. Møller, U. Fredberg, and P. Vedsted, Mortality of patients examined at a diagnostic centre: A matched cohort study, Cancer Epidemiology, vol.55, pp.130-135, 2018.

R. R. Nelson, Bounded rationality , cognitive maps , and trial and error learning, vol.67, pp.78-89, 2005.

A. Newell, J. C. Shaw, and H. A. Simon, The processes of creative thinking, Contemporary approaches to creative thinking: A symposium held at the University of Colorado, pp.63-119, 1959.

M. Nielsen, Reinventing Discovery: The New Era of Networked Science. Portal : Libraries and the Academy, vol.13, pp.214-216, 2011.

B. A. Nosek, G. Alter, G. C. Banks, D. Borsboom, S. D. Bowman et al., Promoting an open research culture, Science, 2015.

T. Olsen and E. Carmel, The process of atomization of business tasks for crowdsourcing. Strategic Outsourcing, An International Journal, vol.6, issue.3, pp.3-7, 2013.

G. M. Olson and J. S. Olson, Distance matters. Human-Computer Interaction, vol.15, pp.139-178, 2000.

D. Partha and P. A. David, Toward a new economics of science, Research Policy, vol.23, issue.5, pp.487-521, 1994.

J. M. Pearce, Return on investment for open source scientific hardware development, Science and Public Policy, vol.43, issue.2, pp.192-195, 2016.
URL : https://hal.archives-ouvertes.fr/hal-02119548

D. C. Pelz, Interaction and Attitudes between Scientists and the Auxiliary Staff: II. Viewpoint of Scientists, Administrative Science Quarterly, vol.4, issue.4, p.410, 1960.

M. Perkmann and H. Schildt, Open data partnerships between firms and universities : The role of boundary organizations, Research Policy, vol.44, issue.5, pp.1133-1143, 2015.

E. Penrose, The theory of the growth of the firm, 1959.

R. Peto, M. C. Pike, P. Armitage, N. E. Breslow, D. R. Cox et al., Design and analysis of randomized clinical trials requiring prolonged observation of each patient. I. Introduction and design, British Journal of Cancer, vol.34, issue.6, pp.585-612, 1976.

K. W. Phillips, E. A. Mannix, M. A. Neale, and D. H. Gruenfeld, Diverse groups and information sharing: The effects of congruent ties, Journal of Experimental Social Psychology, vol.40, issue.4, pp.497-510, 2004.

H. Piezunka and L. Dahlander, Distant search, narrow attention: How crowding alters organizations' filtering of suggestions in crowdsourcing, Academy of Management Journal, vol.58, issue.3, pp.856-880, 2015.

L. S. Pilyugin, J. M. Vílchez, L. Mattsson, and T. X. Thuan, Abundance determination from global emission-line SDSS spectra: Exploring objects with high N/O ratios, Monthly Notices of the Royal Astronomical Society, vol.421, issue.2, pp.1624-1634, 2012.

M. K. Poetz and M. Schreier, The value of crowdsourcing: Can users really compete with professionals in generating new product ideas, Journal of Product Innovation Management, vol.29, issue.2, pp.245-256, 2012.

J. P. Poitou, Prony et babbage: apercus sur l'histoire de la division du travail mental, History of European Ideas, vol.3, issue.3, pp.295-302, 1982.

M. Polanyi, The tacit dimension, 1966.

D. Poole, A. Mackworth, and R. Goebel, Computational Intelligence: A Logical Approach, 1998.

K. Popper, J. F. Porac, J. B. Wade, H. M. Fischer, J. Brown et al., Human capital heterogeneity, collaborative relationships, and publication patterns in a multidisciplinary scientific alliance: a comparative case study of two scientific teams, Journal of the Franklin Institute, vol.268, issue.3, pp.661-678, 1959.

W. W. Powell, K. W. Koput, and L. Smith-doerr, Interorganizational Collaboration and the Locus of Innovation: Networks of Learning in Biotechnology, Administrative Science Quarterly, vol.41, issue.1, 1963.

F. Provost and T. Fawcett, Data Science and its Relationship to Big Data and Data-Driven Decision Making, Big Data, vol.1, issue.1, pp.51-59, 2013.

S. A. Racunas, N. H. Shah, I. Albert, and N. V. Fedoroff, HyBrow: A prototype system for computeraided hypothesis evaluation, In Bioinformatics, vol.20, pp.1-8, 2004.

M. J. Raddick, G. Bracey, P. L. Gay, C. J. Lintott, C. Cardamone et al., Galaxy Zoo: Motivations of Citizen Scientists, 2013.

W. Raghupathi and V. Raghupathi, Big data analytics in healthcare: promise and potential, Health Information Science and Systems, vol.2, issue.1, p.3, 2014.
URL : https://hal.archives-ouvertes.fr/hal-01663474

E. Raymond, The cathedral and the bazaar. Knowledge, Technology & Policy, vol.12, issue.3, pp.23-49, 1999.

J. Reed, M. J. Raddick, A. Lardner, and K. Carney, An exploratory factor analysis of motivations for participating in Zooniverse, a collection of virtual citizen science projects, Proceedings of the Annual Hawaii International Conference on System Sciences, pp.610-619, 2013.

S. Renault, Comment orchestrer la participation de la foule à une activité de crowdsourcing ? La taxonomie des 4 C. Systèmes d'information & Management, vol.19, p.77, 2014.

G. B. Richardson, The Organisation of Industry, The Economic Journal, 1972.

C. Riedl and A. W. Woolley, Teams vs. Crowds: A Field Test of the Relative Contribution of Incentives, Member Ability, and Emergent Collaboration to Crowd-Based Problem Solving Performance, vol.3, pp.382-403, 2017.

L. Rosen, Open source licensing: Software freedom and intellectual property law, 2004.

L. Rosenkopf and P. Almeida, Overcoming Local Search Through Alliances and Mobility, Management Science, vol.49, issue.6, pp.751-766, 2003.

D. Rotman, J. Hammock, J. Preece, D. Hansen, C. Boston et al., Motivations Affecting Initial and Long-Term Participation in Citizen Science Projects in Three Countries, Proceedings. iSchools, 2014.

S. J. Russell and P. Norvig, Artificial intelligence a modern approach, 2007.

P. Russom, S. Sarker, R. Chiang, and A. Abbasi, Big Data Research in Information Systems: Toward an Inclusive Research Agenda, Journal of the Association for Information Systems, vol.38, issue.2, 2011.

H. Sauermann and C. Franzoni, Crowd science user contribution patterns and their implications, 2014.

S. Schaffer, Astronomers Mark Time: Discipline and the Personal Equation, Science in Context, vol.2, issue.1, pp.115-145, 1988.

S. Schaffer, Babbage's Intelligence: Calculating Engines and the Factory System, Critical Inquiry, vol.21, issue.1, pp.203-227, 1994.

T. Scholz, Digital labor : the Internet as playground and factory, 2013.

C. D. Schunn and D. Klahr, A 4-space model of scientific discovery, Proceedings of the Fourteenth Annual Cognitive Science Society Conference, pp.106-111, 1992.

L. See, P. Mooney, G. Foody, L. Bastin, A. Comber et al., Crowdsourcing, Citizen Science or Volunteered Geographic Information? The Current State of Crowdsourced Geographic Information, ISPRS International Journal of Geo-Information, vol.5, issue.5, p.55, 2016.

S. Sen, Automatic Effective Model Discovery, Rennes, vol.1, 2010.
URL : https://hal.archives-ouvertes.fr/tel-00507530

S. Shapin, The Invisible Technician, American Scientist, vol.77, issue.6, pp.554-563, 1989.

S. Shapin, The scientific life: A moral history of a late modern vocation, Science Education, 2008.

S. Shapiro, The limits of logic : higher-order logic and the Löwenheim-Skolem theorem. The international research library of philosophy, 1996.

T. G. Shaposhnikova-tatyana, Jacques Hadamard: Un mathématicien universel, 2005.

M. A. Shelly, E. By, and D. Birnbaum, Exploratory Data Analysis: Data Visualization or Torture? Statistics for Hospital Epidemiolog Exploratory Data Analysis: Data Visualization or Torture?, Source: Infection Control and Hospital Epidemiology INFECTION CONTROL AND HOSPITAL EPIDEMIOLOGY, vol.17, issue.605, pp.605-612, 1996.

T. Shinn, Division du savoir et spécificité organisationnelle : Les laboratoires de recherche industrielle en France. Revue Française de Sociologie, vol.21, 1980.

G. Shmueli, To Explain or to Predict?, Statistical Science, vol.25, issue.3, pp.289-310, 2011.

J. H. Sieg, M. W. Wallin, G. Krogh, and . Management, Managerial challenges in open innovation: A study of innovation intermediation in the chemical industry, vol.40, pp.281-291, 2010.

E. Siegel, Predictive analytics : the power to predict who will click, buy, lie, or die, 2013.

N. J. Sigglekow, PERSUASION WITH CASE STUDIES, Academy of Management Journal, vol.50, issue.1, pp.20-24, 2007.

J. Silvertown, A new dawn for citizen science, Trends in Ecology and Evolution, vol.24, issue.9, pp.467-471, 2009.

R. J. Simpson, M. S. Povich, S. Kendrew, C. J. Lintott, E. Bressert et al., The Milky Way Project First Data Release: A bubblier Galactic disc, Monthly Notices of the Royal Astronomical Society, vol.424, issue.4, pp.2442-2460, 2012.

H. A. Simon, A Behavioral Model of Rational Choice, The Quarterly Journal of Economics, vol.69, issue.1, pp.99-118, 1955.

H. A. Simon and A. Newell, Human problem solving: The state of the theory in 1970, American Psychologist, vol.26, issue.2, pp.145-159, 1971.

H. A. Simon, The structure of ill structred problems, Artificial Intelligence, issue.4, pp.181-202, 1973.

Y. Sitruk and A. Kazakçi, Pilotage de la performance des projets de science citoyenne pour la génération d'hypothèses scientifiques data-driven : le principe de capitalisation séquentielle, 2019.

Y. Sitruk and A. Kazakçi, Crowd-based data-driven hypothesis generation from data and the organisation of participative scientific process, Proceedings of International Design Conference, DESIGN, vol.4, pp.1673-1684, 2018.
URL : https://hal.archives-ouvertes.fr/hal-01787696

R. Sivasubramanian, V. Selladurai, and A. Gunasekaran, Utilization of bottleneck resources for profitability through a synchronized operation of marketing and manufacturing, Integrated Manufacturing Systems, vol.14, issue.3, pp.238-246, 2003.

A. M. Smith, S. Lynn, M. Sullivan, C. J. Lintott, P. E. Nugent et al., Galaxy Zoo Supernovae, Monthly Notices of the Royal Astronomical Society, vol.412, issue.2, pp.1309-1319, 2011.

J. Snoek, H. Larochelle, and R. P. Adams, Practical Bayesian Optimization of Machine Learning Algorithms, 2012.

L. N. Soldatova and A. Rzhetsky, Scientific Collaboration : A Synthesis of Challenges and Strategies, Annual Review of Information Science and Technology, vol.2, issue.2, pp.2-37, 2006.

R. Sorrenson, Perfect Mechanics: Instrument Makers at the Royal Society of London in the Eighteenth Century, 2013.

A. Spithoven, B. Clarysse, and M. Knockaert, Building Absorptive Capacity to Organise Inbound Open Innovation in Low Tech Industries, 2009.

P. E. Stephan, The economics of science, Handbook of the Economics of Innovation, 1996.

S. M. Stigler, The History of Statistics: The Measurement of Uncertainty before 1900, Technology and Culture, vol.29, 1986.

D. Stokols, R. Harvey, J. Gress, J. Fuqua, and K. Phillips, In vivo studies of transdisciplinary scientific collaboration: Lessons learned and implications for active living research, In American Journal of Preventive Medicine, vol.28, pp.202-213, 2005.

M. Strevens, The wisdom of crowds: why the many are smarter than the few and how collective wisdom shapes business, economies, societies and nations, In Encyclopedia of Philosophy. Stanford University. Surowiecki, vol.42, issue.03, pp.42-1645, 2004.

M. Swan, K. Hathaway, C. Hogg, R. Mccauley, and A. Vollrath, Citizen science genomics as a model for crowdsourced preventive medicine research, J Participat Med, vol.2, p.20, 2010.

M. Swan, The Quantified Self: Fundamental Disruption in Big Data Science and Biological Discovery, Big Data, vol.1, issue.2, pp.85-99, 2013.

J. Saez-rodriguez, J. C. Costello, S. H. Friend, M. R. Kellen, L. Mangravite et al., Crowdsourcing biomedical research: Leveraging communities as innovation engines, Nature Reviews Genetics, 2016.

C. F. Salgueiredo and A. Hatchuel, Beyond analogy: A model of bioinspiration for creative design, Artificial Intelligence for Engineering Design, vol.30, issue.2, pp.159-170, 2016.
URL : https://hal.archives-ouvertes.fr/hal-01396212

H. Sauermann and C. Franzoni, Crowd science user contribution patterns and their implications, 2014.

H. Sauermann and M. Roach, Science PhD career preferences: Levels, changes, and advisor encouragement, PLoS ONE, vol.7, issue.5, p.36307, 2012.

S. Schaffer, Astronomers Mark Time: Discipline and the Personal Equation, Science in Context, vol.2, issue.1, pp.115-145, 1988.

D. Schlagwein and N. Bjorn-andersen, Organizational Learning with Crowdsourcing: The Revelatory Case of LEGO, Journal of the Association for Information Systems, vol.15, issue.11, pp.754-778, 2018.

B. Schemmann, A. M. Herrmann, M. M. Chappin, and G. J. Heimeriks, Crowdsourcing ideas: Involving ordinary users in the ideation phase of new product development, Research Policy, vol.45, issue.6, pp.1145-1154, 2016.

D. Schlagwein and N. Bjorn-andersen, Organizational Learning with Crowdsourcing: The Revelatory Case of LEGO, Journal of the Association for Information Systems, vol.15, issue.11, pp.754-778, 2018.

J. D. Schoenfeld and J. P. Ioannidis, Is everything we eat associated with cancer? A systematic cookbook review, The American Journal of Clinical Nutrition, vol.97, issue.1, pp.127-134, 2013.

A. Schulze and M. Hoegl, Organizational knowledge creation and the generation of new product ideas: A behavioral approach, Research Policy, vol.37, issue.10, pp.1742-1750, 2008.

C. D. Schunn and D. Klahr, A 4-space model of scientific discovery, Proceedings of the Fourteenth Annual Cognitive Science Society Conference, pp.106-111, 1992.

F. M. Schweitzer, W. Buchinger, O. Gassmann, and M. Obrist, Crowdsourcing: Leveraging Innovation through Online Idea Competitions, Research-Technology Management, vol.55, issue.3, pp.32-38, 2012.

L. See, P. Mooney, G. Foody, L. Bastin, A. Comber et al., Crowdsourcing, Citizen Science or Volunteered Geographic Information? The Current State of Crowdsourced Geographic Information, ISPRS International Journal of Geo-Information, vol.5, issue.5, p.55, 2016.

S. Sen, Automatic Effective Model Discovery, Rennes, vol.1, 2010.
URL : https://hal.archives-ouvertes.fr/tel-00507530

R. Shankar, N. Mittal, S. Rabinowitz, A. Baveja, and S. Acharia, A collaborative framework to minimise knowledge loss in new product development, International Journal of Production Research, vol.51, issue.7, pp.2049-2059, 2013.

S. Shapin, The Invisible Technician, American Scientist, vol.77, issue.6, pp.554-563, 1989.

S. Shapin, The scientific life: A moral history of a late modern vocation, Science Education, 2008.

T. Shinn and P. Ragouet, Formes de division du travail scientifique et convergence intellectuelle . La recherche technico-instrumentale, vol.41, pp.447-473, 2000.

G. Shmueli, To Explain or to Predict?, Statistical Science, vol.25, issue.3, pp.289-310, 2011.

J. H. Sieg, M. W. Wallin, G. Krogh, and . Management, Managerial challenges in open innovation: A study of innovation intermediation in the chemical industry, vol.40, pp.281-291, 2010.

H. A. Simon and P. A. Simon, Trial and error search in solving difficult problems: Evidence from the game of chess, Behavioral Science, vol.7, issue.4, pp.425-429, 1962.

H. A. Simon, P. W. Langley, and G. L. Bradshaw, Scientific discovery as problem solving, Synthese, vol.47, issue.1, pp.1-27, 1981.

H. A. Simon and A. Newell, Human problem solving: The state of the theory in 1970, American Psychologist, vol.26, issue.2, pp.145-159, 1971.

H. A. Simon, The structure of ill structred problems, Artificial Intelligence, issue.4, pp.181-202, 1973.

R. Sivasubramanian, V. Selladurai, and A. Gunasekaran, Utilization of bottleneck resources for profitability through a synchronized operation of marketing and manufacturing, Integrated Manufacturing Systems, vol.14, issue.3, pp.238-246, 2003.

K. Smith, The wisdom of crowds, Nature Reports Climate Change, issue.0908, pp.89-91, 2009.

A. Spithoven, B. Clarysse, and M. Knockaert, Building Absorptive Capacity to Organise Inbound Open Innovation in Low Tech Industries, 2009.

D. Stokols, R. Harvey, J. Gress, J. Fuqua, and K. Phillips, In vivo studies of transdisciplinary scientific collaboration: Lessons learned and implications for active living research, In American Journal of Preventive Medicine, vol.28, pp.202-213, 2005.

. Surowiecki, The wisdom of crowds: why the many are smarter than the few and how collective wisdom shapes business, economies, societies and nations, Choice Reviews Online, vol.42, issue.03, pp.42-1645, 2004.

M. Swan, The Quantified Self: Fundamental Disruption in Big Data Science and Biological Discovery, Big Data, vol.1, issue.2, pp.85-99, 2013.

J. Sybrandt, M. Shtutman, and I. Safro, MOLIERE: Automatic Biomedical Hypothesis Generation System, 2017.

S. Szymczak, J. M. Biernacka, H. J. Cordell, O. González-recio, I. R. Kö-nig et al., Machine Learning in Genome-Wide Association Studies. Genetic Epidemiology, vol.33, pp.51-57, 2009.

M. Talibov, J. Sormunen, J. Hansen, K. Kjaerheim, J. I. Martinsen et al., Benzene exposure at workplace and risk of colorectal cancer in four Nordic countries, Cancer Epidemiology, vol.55, pp.156-161, 2018.

D. Tapscott and A. D. Williams, Innovation in the Age of Mass Collaboration, 2007.

D. Tapscott and A. D. Williams, Innovation Contests, Open Innovation, and Multiagent Problem Solving, Management Science, vol.54, issue.9, pp.1529-1543, 2006.

P. Thagard, Ulcers and bacteria I: Discovery and acceptance, Studies in History and Philosophy of Science Part C :Studies in History and Philosophy of Biological and Biomedical Sciences, vol.29, issue.1, pp.107-136, 1998.

K. Theisz, Crowdsourcing and Citizen Science: Investigating Data Quality and Utility, 2017.

D. Thomas, M. J. Raddick, K. W. Willett, R. A. Skibba, K. R. Casteels et al., Galaxy Zoo 2: detailed morphological classifications for 304 122 galaxies from the Sloan Digital Sky Survey, Monthly Notices of the Royal Astronomical Society, vol.435, issue.4, pp.2835-2860, 2013.

S. H. Thomke, Experimentation Matters: Unlocking the Potential of New Technologies for Innovation, Journal of Engineering and Technology Management, 2003.

N. Thompson and D. Hanley, Science Is Shaped by Wikipedia: Evidence From a Randomized Control Trial, 2017.

A. Tillas, Social Perception, Encyclopedia of Philosophy and the Social Sciences, p.621, 2012.

H. Torrens, Mary anning (1799-1847) of lyme; 'the greatest fossilist the world ever knew, The British Journal for the History of Science, vol.28, issue.3, pp.257-284, 1995.

N. Tran, C. Baral, V. J. Nagaraj, and L. Joshi, Knowledge-based integrative framework for hypothesis formation in biochemical networks, Data Integration in the Life Sciences, pp.121-136, 2005.

D. J. Trumbull, R. Bonney, D. Bascom, and A. Cabral, Thinking scientifically during participation in a citizen-science project, Science Education, vol.84, issue.2, pp.265-275, 2000.

C. L. Tucci, A. Afuah, and G. Viscusi, Creating and capturing value through crowdsourcing, 2018.

P. R. Tuertscher, R. Garud, and M. Nordberg, The Emergence of Architecture: Coordination Across Boundaries at ATLAS, CERN. Academy of Management Annual Meeting Proceedings, p.42, 2008.

P. Andel, Anatomy of the unsought finding. Serendipity: Orgin, history, domains, traditions, appearances, patterns and programmability, British Journal for the Philosophy of Science, 1994.

L. Van-der-maaten and G. Hinton, Visualizing Data using t-SNE, Journal of Machine Learning Research, vol.9, 2008.

T. Van-der-velde, G. Davis, G. Perkins, T. J. Lawson, C. Wilcox et al., Comparison of marine debris data collected by researchers and citizen scientists: Is citizen science data worth the effort?, Biological Conservation, vol.208, pp.127-138, 2016.

J. Vanderplas, A. Passos, D. Cournapeau, M. Brucher, M. Perrot et al., Scikit-learn: Machine learning in Python, Journal of Machine Learning Research, vol.12, pp.2825-2830, 2011.
URL : https://hal.archives-ouvertes.fr/hal-00650905

D. Vinck, L'équipement du chercheur : comme si la technique était déterminante, Ethnographiques.Org, issue.9, 2006.

G. Krogh, S. Spaeth, and K. R. Lakhani, Community, joining, and specialization in open source software innovation: a case study, Research Policy, vol.32, issue.7, pp.1217-1241, 2003.

E. Von-hippel and M. J. Tyre, How learning by doing is done: problem identification in novel process equipment, 1996.

E. Hippel, G. ;. Krogh, O. Gassmann, and R. Boutellier, Identifying Viable "Need-Solution Pairs": Problem Solving Without Problem Formulation, orsc.2015.1023. von Zedtwitz, vol.10, pp.21-49, 2004.

J. Wales, Internet encyclopaedias go head to head, Nature, 2005.

J. P. Walsh and Y. N. Lee, The bureaucratization of science, Research Policy, vol.44, issue.8, pp.1584-1600, 2015.

E. Walster, G. W. Walster, and E. Berscheid, Equity: Theory and Research, p.22046, 1978.

S. C. Warby, S. L. Wendt, P. Welinder, E. G. Munk, O. Carrillo et al., , 2014.

, Sleep-spindle detection: Crowdsourcing and evaluating performance of experts, non-experts and automated methods, Nature Methods, vol.11, issue.4, pp.385-392

M. Wasko, S. Kudaravalli, and S. Faraj, Leading Collaboration in Online Communities, MIS Quarterly, 2017.

K. Weick, The social psychology of organizing. Reading, vol.2, 1979.

B. Weil, Conception collective, coordination et savoirs, les rationalisations de la conception automobile. Ingénierie et gestion, 1999.

S. Weisband, Maintaining Awareness in Distributed Team Collaboration: Implications for Leadership and Performance, Distributed Work, pp.311-333, 2002.

J. West and J. Sims, How Firms Leverage Crowds and Communities for Open Innovation, Creating and Capturing Value through Crowdsourcing, 2018.

R. Whitley, The intellectual and social organization of the sciences, 2000.

A. Wiggins and K. Crowston, From conservation to crowdsourcing: A typology of citizen science, Proceedings of the Annual Hawaii International Conference on System Sciences, pp.1-10, 2011.

C. C. Wilderman, Citizen Science Toolkit Conference models of community science: design lessons from the field, 2007.

D. Wildschut, The need for citizen science in the transition to a sustainable peer-to-peer-society, Futures, vol.91, pp.46-52, 2017.

S. G. Winter, Understanding dynamic capabilities, Strategic Management Journal, vol.24, issue.10, pp.991-995, 2003.

J. O. Wooten and K. T. Ulrich, Idea Generation and the Role of Feedback: Evidence from Field Experiments with Innovation Tournaments, vol.26, pp.80-99, 2017.

D. Yadav and A. B. Lowenfels, The epidemiology of pancreatitis and pancreatic cancer, Gastroenterology, 2013.

E. Yan and Y. Ding, Applying centrality measures to impact analysis: a coauthorship network analysis, Journal of the American Society for Information Science and Technology, vol.60, issue.10, pp.2107-2118, 2009.

R. K. Yin, Case Study Research: Design and Methods, 2003.

C. Zhang and Y. Ma, Ensemble machine learning : methods and applications, 2012.

Y. Zhao and Q. Zhu, Evaluation on crowdsourcing research: Current status and future direction, Information Systems Frontiers, vol.16, issue.3, pp.417-434, 2014.

H. Zheng, D. Li, and W. Hou, Task Design, Motivation, and Participation in Crowdsourcing Contests, International Journal of Electronic Commerce, vol.15, issue.4, pp.57-88, 2011.

M. Zollo and S. G. Winter, Deliberate Learning and the Evolution of Dynamic Capabilities, Organization Science, vol.13, issue.3, pp.339-351, 2003.

-. Annexe and . Challenge,

D. Projet-viz4cancer-note-globale-sur, ANNEXE 4 -CROWD-BASED HYPOTHESIS GENERATION FROM DATA AND THE ORGANISATION OF THE PARTICIPATIVE SCIENTIFIC PROCESS (DESIGN CONFERENCE 2018, vol.50, 2018.

. Dubrovnik--croatia,

C. Adam-bourdarios, G. Cowan, C. Germain, I. Guyon, B. Kégl et al., The higgs boson machine learning challenge, NIPS 2014 Workshop on High-energy Physics and Machine Learning, vol.42, p.37, 2014.
URL : https://hal.archives-ouvertes.fr/hal-01208587

A. Afuah and C. L. Tucci, Crowdsourcing as a solution to distant search, Academy of Management Review, vol.37, issue.3, pp.355-375, 2012.

C. Anderson, The end of theory: The data deluge makes the scientific method obsolete, p.5, 2008.

E. K. Antonsson and . Cagan, Formal engineering design synthesis, 2005.

D. Boyd and K. Crawford, Critical questions for big data: Provocations for a cultural, technological, and scholarly phenomenon. Information, communication & society, vol.15, pp.662-679, 2012.

M. Callon, Acting in an uncertain world, 2009.
URL : https://hal.archives-ouvertes.fr/hal-02183993

A. David and A. Hatchuel, From actionable knowledge to universal theory in management research, Handbook of Collaborative Management Research, 2008.

I. Douven, Abduction, The Stanford Encyclopedia of Philosophy, 2017.

M. L. Escandon-quintanilla, Effects of data exploration and use of data mining tools to extract knowledge from databases (KDD) in early stages of the Engineering design process (EDP) (Doctoral dissertation, 2017.

U. Fayyad, G. Piatetsky-shapiro, and P. Smyth, Crowd science: The organization of scientific research in open collaborative projects, Research Policy, vol.17, issue.3, pp.1-20, 1996.

D. Geiger, S. Seedorf, T. Schulze, R. C. Nickerson, and M. Schader, Managing the Crowd: Towards a Taxonomy of Crowdsourcing Processes, AMCIS, 2011.

A. Hatchuel, Towards Design Theory and expandable rationality: The unfinished program of Herbert Simon, Journal of management and governance, vol.5, issue.3, pp.260-273, 2001.

A. Hatchuel, P. L. Masson, Y. Reich, and B. Weil, A systematic approach of design theories using generativeness and robustness, Proceedings of the 18th International Conference on Engineering Design (ICED11), vol.2, pp.87-97, 2011.

R. Kitchin, Big Data, new epistemologies and paradigm shifts, MIT Sloan management review, vol.1, issue.1, p.41, 2013.

O. Kokshagina and Y. Sitruk, Open Science: how to identify exploration axes in a transdisciplinary context? Medium, 2017.

D. Kulkarni and H. A. Simon, The processes of scientific discovery: The strategy of experimentation, Cognitive science, vol.12, issue.2, pp.139-175, 1988.

D. Laney, ad949-3D-DataManagement-Controlling-Data-Volume-Velocity-and-Var iety, Meta Group, p.16, 2001.

R. K. Lindsay, B. G. Buchanan, E. A. Feigenbaum, and J. Lederberg, DENDRAL: a case study of the first expert system for scientific hypothesis formation, Artificial intelligence, vol.61, issue.2, pp.209-261, 1993.

L. Monostori, AI and machine learning techniques for managing complexity, changes and uncertainties in manufacturing, Engineering applications of artificial intelligence, vol.16, issue.4, pp.277-291, 2003.

R. Obépi-roche, Enquête épidémiologique nationale sur le surpoids et l'obésité, 2012.

J. H. Panchal, Using Crowds in Engineering Design-Towards a Holistic Framework, 2015 International Conference on Engineering Design, pp.27-30, 2015.

M. Prensky, H. sapiens digital: From digital immigrants and digital natives to digital wisdom, Innovate: journal of online education, vol.5, issue.3, p.1, 2009.

J. D. Schoenfeld and J. P. Ioannidis, Is everything we eat associated with cancer? A systematic cookbook review, Am J Clin Nutr, vol.97, pp.127-161, 2013.

A. B. Shani, S. A. Mohrman, W. A. Pasmore, B. Stymme, and N. Adler, Handbook of Collaborative Management Research, 2008.

H. A. Simon, P. W. Langley, and G. L. Bradshaw, Scientific discovery as problem solving, Synthese, vol.47, issue.1, pp.1-27, 1981.

G. Shmueli, To explain or to predict, Statistical science, vol.25, pp.289-310, 2010.

X. Wu, X. Zhu, G. Q. Wu, and W. Ding, Data mining with big data, IEEE transactions on knowledge and data engineering, vol.26, issue.1, pp.97-107, 2014.

A. Wiggins and K. Crowston, From conservation to crowdsourcing: A typology of citizen science, System Sciences (HICSS), pp.1-10, 2011.