A. Comte, Cours de philosophie positive, vol.1, 1830.
URL : https://hal.archives-ouvertes.fr/halshs-00792369

R. K. Merton, Science and Technology in a Democratic Order, Journal of Legal and Political Sociology, vol.1, issue.1, pp.115-126, 1942.

R. K. Merton, The Sociology of Science: Theoretical and Empirical Investigations, 1973.

T. S. Kuhn, The structure of scientific revolutions, 1970.

H. M. Collins and S. Yearley, Science as Practice and Culture, vol.10, pp.301-326, 1992.

B. Barnes, D. Bloor, and J. Henry, Scientific knowledge: A sociological analysis, 1996.

D. Bloor, , 1976.

K. D. Knorr-cetina, Scientific Communities or Transepistemic Arenas of Research? A Critique of Quasi-Economic Models of Science, Social Studies of Science, vol.12, issue.1, pp.101-130, 1982.

M. Mulkay, G. Gilbert, and S. Woolgar, Problem Areas and Research Networks in Science, Sociology, vol.9, issue.2, pp.187-203, 1975.

M. Serres, La Traduction, Hermès III, Collection « Critique » (Les Éditions de Minuit, 1974.

B. Latour and S. Woolgar, Laboratory life: The social construction of scientific facts, 1979.

M. Callon and B. Latour, Unscrewing the big Leviathan: how actors macro-structure reality and how sociologists help them to do so. In: Advances in social theory and methodology: Toward an integration of mircoand macro-sociologies, vol.10, pp.277-303, 1981.

J. Law and J. Hassard, Actor Network Theory and after, 1999.

T. Lenoir, Instituting science: The cultural production of scientific disciplines, 1997.

V. Dirita, Microbiology Is an Integrative Field, So Why Are We a Divided Society?, Microbe Magazine, vol.8, pp.384-385, 2013.

A. Casadevall and C. Ferric, Fang: Field Science-the Nature and Utility of Scientific Fields, mBio, vol.6, issue.5, pp.1259-1274, 2015.

J. Piaget, L'épistémologie des relations interdisciplinaires. In: Interdisciplinarity: Problems of teaching and research in universities, pp.127-140, 1972.

D. Price and D. Deb, Beaver: Collaboration in an invisible college, American Psychologist, vol.21, issue.11, pp.1011-1018, 1966.

D. Crane, Invisible colleges: Diffusion of knowledge in scientific communities, 1972.

D. E. Chubin, Beyond invisible colleges: Inspirations and aspirations of post-1972 social studies of science, Scientometrics, vol.7, issue.3-6, pp.221-254, 1985.

A. Zuccala, Modeling the invisible college, Journal of the American Society for Information Science and Technology, vol.57, issue.2, pp.152-168, 2005.

J. Gläser, Grit Laudel: Integrating Scientometric Indicators into Sociological Studies: Methodical and Methodological Problems, vol.52, pp.411-434, 2001.

M. Peter and . Haas, Introduction: Epistemic Communities and International Policy Coordination, International Organization, vol.46, issue.1, pp.1-35, 1992.

É. Wenger, Communities of practice: Learning, meaning, and identity, 1998.

R. P. Smiraglia, Domain Analysis of Domain Analysis for Knowledge Organization: Observations on an Emergent Methodological Cluster, Knowledge Organization, vol.42, issue.8, pp.602-611, 2015.

J. Gläser, A. Scharnhorst, and W. Glänzel, Same datadifferent results? Towards a comparative approach to the identification of thematic structures in science, Scientometrics, vol.111, issue.2, pp.979-979, 2017.

C. R. Sugimoto and S. Weingart, The kaleidoscope of disciplinarity, Journal of Documentation, vol.71, issue.4, pp.775-794, 2015.

R. Todorov, Representing a scientific field: A bibliometric approach, Scientometrics, vol.15, issue.5-6, pp.593-605, 1989.

J. W. Robert and . Tijssen, A quantitative assessment of interdisciplinary structures in science and technology: Co-classification analysis of energy research, Research Policy, vol.21, issue.1, pp.27-44, 1992.

C. S. Wagner, The new invisible college: Science for development, 2008.

A. Suominen and H. Toivanen, Map of science with topic modeling: Comparison of unsupervised learning and human-assigned subject classification, Journal of the Association for Information Science and Technology, vol.67, issue.10, pp.2464-2476, 2016.

E. C. Noyons and A. F. Van-raan, Monitoring scientific developments from a dynamic perspective: Self-organized structuring to map neural network research, Journal of the American Society for Information Science, vol.49, issue.1, pp.68-81, 1998.

M. Zitt and E. Bassecoulard, Delineating complex scientific fields by an hybrid lexical-citation method: An application to nanosciences, Information Processing, Management, vol.42, issue.6, pp.1513-1531, 2006.

J. Thompson-klein, Interdisciplinarity: History, theory, and practice, 1990.

C. K. Bernard, A. W. Choi, and . Pak, Multidisciplinarity, interdisciplinarity and transdisciplinarity in health research, services, education and policy: 1. Definitions, objectives, and evidence of effectiveness, Clinical and Investigative Medicine, vol.29, issue.6, pp.351-364, 2006.

T. Jahn, M. Bergmann, and F. Keil, Transdisciplinarity: Between mainstreaming and marginalization, Ecological Economics, vol.79, pp.1-10, 2012.

A. W. Russell, F. Wickson, and A. L. Carew, Transdisciplinarity: Context, contradictions and capacity, Futures, vol.40, issue.5, pp.460-472, 2008.

J. T. Klein, Evaluation of Interdisciplinary and Transdisciplinary Research, vol.35, pp.116-123, 2008.

T. R. Miller, T. D. Baird, C. M. Littlefield, G. Kofinas, F. Stuart-chapin et al., Epistemological pluralism: Reorganizing interdisciplinary research, vol.13, p.46, 2008.

A. Yegros-yegros, I. Rafols, and P. Este, Does Interdisciplinary Research Lead to Higher Citation Impact? The Different Effect of Proximal and Distal Interdisciplinarity, PLOS ONE, vol.10, issue.8, p.135095, 2015.

E. A. Gregg, S. Solomon, A. L. Carley, and . Porter, How Multidisciplinary Are the Multidisciplinary Journals Science and Nature?, PLOS ONE, vol.11, issue.4, p.152637, 2016.

C. R. Sugimoto, N. Robinson-garcia, and R. Costas, Towards a global scientific brain: Indicators of researcher mobility using co-affiliation data, OECD Blue Sky III Forum on Science and Innovation Indicators, 2016.

M. Bordons, F. Morillo, and I. Gómez, Analysis of CrossDisciplinary Research Through Bibliometric Tools, Handbook of Quantitative Science and Technology Research: the Use of Publication and Patent Statistics in Studies of S&T Systems, pp.437-456, 2004.

G. Pinski and F. Narin, Citation influence for journal aggregates of scientific publications: Theory, with application to the literature of physics, Information Processing & Management, vol.12, issue.5, pp.297-312, 1976.

E. J. Rinia, N. Thed, . Van-leeuwen, E. W. Eppo, H. G. Bruins et al., Scientometrics, vol.54, issue.3, pp.347-362, 2002.

E. Bassecoulard and M. Zitt, Handbook of Quantitative Science and Technology Research: the Use of Publication and Patent Statistics in Studies of S&T Systems, pp.665-694, 2004.

K. Börner, R. Klavans, M. Patek, A. M. Zoss, J. R. Biberstine et al., Design and Update of a Classification System: The UCSD Map of Science, PLoS ONE, vol.7, issue.7, p.39464, 2012.

K. W. Boyack and R. Klavans, The Structure of Science, Places & Spaces: Mapping Science-1st Iteration, 2005.

A. Stirling, A general framework for analysing diversity in science, technology and society, Journal of The Royal Society Interface, vol.4, issue.15, pp.707-719, 2007.

D. Hicks, Limitations and More Limitations of Co-Citation Analysis/Bibliometric Modelling: A Reply to Franklin, Social Studies of Science, vol.18, issue.2, pp.375-384, 1988.

F. Henk, Moed: Citation Analysis in Research Evaluation, Information Science and Knowledge Management, vol.9, 2005.

F. J. Anthony, T. N. Van-raan, M. S. Van-leeuwen, and . Visser, Severe language effect in university rankings: Particularly Germany and France are wronged in citation-based rankings, Scientometrics, vol.88, issue.2, pp.495-498, 2011.

L. Soete, S. Schneegans, D. Eröcal, and B. Angathevar, Rajah Rasiah: A world in search of an effective growth strategy, UNESCO Science Report: Towards 2030, UNESCO Reference Works, pp.20-55, 2015.

J. Freyne, L. Coyle, B. Smyth, and P. Cunningham, Relative status of journal and conference publications in Computer Science, vol.53, pp.124-132, 2010.

A. J. Nederhof, Bibliometric monitoring of research performance in the Social Sciences and the Humanities: A Review, Scientometrics, vol.66, issue.1, pp.81-100, 2006.

. Mu-hsuan, Y. Huang, and . Chang, Characteristics of research output in social sciences and humanities: From a research evaluation perspective, vol.59, pp.1819-1828, 2008.

G. Sivertsen and B. Larsen, Comprehensive bibliographic coverage of the social sciences and humanities in a citation index: An empirical analysis of the potential, Scientometrics, vol.91, issue.2, pp.567-575, 2012.

N. Thed, H. F. Van-leeuwen, . Moed, J. W. Robert, M. S. Tijssen et al., Language biases in the coverage of the Science Citation Index and its consequences for international comparisons of national research performance, Scientometrics, vol.51, issue.1, pp.335-346, 2001.

M. Zitt, S. Ramanana-rahary, and E. Bassecoulard, Correcting glasses help fair comparisons in international science landscape: Country indicators as a function of ISI database delineation, Scientometrics, vol.56, issue.2, pp.259-282, 2003.

V. Larivière, É. Archambault, and Y. Gingras, Étienne VignolaGagné: The place of serials in referencing practices: Comparing natural sciences and engineering with social sciences and humanities, Journal of the American Society for Information Science and Technology, vol.57, issue.8, pp.997-1004, 2006.

C. Michels and U. Schmoch, The growth of science and database coverage, Scientometrics, vol.93, issue.3, pp.831-846, 2012.

S. Mikki, Comparing Google Scholar and ISI Web of Science for Earth Sciences, Scientometrics, vol.82, issue.2, pp.321-331, 2010.

A. Sinha, Z. Shen, Y. Song, H. Ma, D. Eide et al., WWW'15: Proceedings of the 24th International Conference on World Wide Web, pp.243-246, 2015.

D. Herrmannova and P. Knoth, An Analysis of the Microsoft Academic Graph, D-Lib Magazine, vol.22, p.online, 2016.

A. Harzing and S. Alakangas, Microsoft Academic: Is the phoenix getting wings?, Scientometrics, vol.110, issue.1, pp.371-383, 2017.

J. E. Gray, M. C. Hamilton, A. Hauser, M. M. Janz, J. P. Peters et al., Scholarish: Google Scholar and its Value to the Sciences, Issues in Science and Technology Librarianship, vol.12, 2012.

C. Labbé, Ike Antkare, one of the great stars in the scientific firmament, ISSI Newsletter, vol.6, issue.2, pp.48-52, 2010.

P. Jacsó, Metadata mega mess in Google Scholar, Online Information Review, vol.34, issue.1, pp.175-191, 2010.

A. Harzing and S. Alakangas, Google Scholar, Scopus and the Web of Science: A longitudinal and cross-disciplinary comparison, Scientometrics, vol.106, issue.2, pp.787-804, 2016.

Q. Wang and L. Waltman, Large-scale analysis of the accuracy of the journal classification systems of Web of Science and Scopus, Journal of Informetrics, vol.10, issue.2, pp.347-364, 2016.

M. Thelwall, S. Haustein, V. Larivière, and C. R. Sugimoto, Do Altmetrics Work? Twitter and Ten Other Social Web Services, vol.8, p.64841, 2013.

S. Haustein, I. Peters, J. Bar-ilan, J. Priem, and H. Shema, Jens Terliesner: Coverage and adoption of altmetrics sources in the bibliometric community, Scientometrics, vol.101, issue.2, pp.1145-1163, 2014.

E. Mohammadi and M. Thelwall, Mendeley readership altmetrics for the social sciences and humanities: Research evaluation and knowledge flows, Journal of the Association for Information Science and Technology, vol.65, issue.8, pp.1627-1638, 2014.

Z. Zahedi, R. Costas, and P. Wouters, How well developed are altmetrics? A cross-disciplinary analysis of the presence of "alternative metrics" in scientific publications, Scientometrics, vol.101, issue.2, pp.1491-1513, 2014.

C. Luis-gonzález-valiente and J. Pacheco-mendoza, Ricardo Arencibia-Jorge: A review of altmetrics as an emerging discipline for research evaluation, Learned Publishing, vol.29, issue.4, pp.229-238, 2016.

A. E. Williams, Altmetrics: An overview and evaluation, Online Information Review, vol.41, issue.3, pp.311-317, 2017.

C. Daraio and W. Glänzel, Grand challenges in data integration-state of the art and future perspectives: An introduction, Scientometrics, vol.108, issue.1, pp.391-400, 2016.

, OECD: Revised Field of Science and Technology (FOS) Classification in the Frascati Manual-Report number DSTI/EAS/STP/NESTI(2006)19/FINAL, 2007.

E. Garfield, The evolution of the Science Citation Index, vol.10, pp.65-69, 2007.

A. I. Pudovkin and E. Garfield, Algorithmic procedure for finding semantically related journals, Journal of the American Society for Information Science and Technology, vol.53, issue.13, pp.1113-1119, 2002.

E. Garfield, Citation Analysis as a Tool in Journal Evaluation: Journals can be ranked by frequency and impact of citations for science policy studies, vol.178, pp.471-479, 1972.

E. Garfield, The History and Meaning of the Journal Impact Factor, vol.295, pp.90-93, 2006.

F. Narin, G. Pinski, and H. H. Gee, Structure of the Biomedical Literature, vol.27, pp.25-45, 1976.

P. Jacsó, As we may search: Comparison of major features of the Web of Science, Scopus, and Google Scholar citation-based and citationenhanced databases, Current Science, vol.89, issue.9, pp.1537-1547, 2005.

Z. Félix-de-moya-anegón, B. Chinchilla-rodríguez, E. Vargasquesada, F. J. Corera-Álvarez, and . Muñoz-fernández, Coverage analysis of Scopus: A journal metric approach, Scientometrics, vol.73, issue.1, pp.53-78, 2007.

L. Leydesdorff and E. Susan, Cozzens: The delineation of specialties in terms of journals using the dynamic journal set of the SCI, Scientometrics, vol.26, issue.1, pp.135-156, 1993.

E. Bassecoulard and M. Zitt, Indicators in a research institute: A multi-level classification of scientific journals, Scientometrics, vol.44, issue.3, pp.323-345, 1999.

I. Rafols and M. Meyer, Diversity and network coherence as indicators of interdisciplinarity: Case studies in bionanoscience, Scientometrics, vol.82, issue.2, pp.263-287, 2009.

W. Glänzel and A. Schubert, A new classification scheme of science fields and subfields designed for scientometric evaluation purposes, Scientometrics, vol.56, issue.3, pp.357-367, 2003.

E. Archambault, H. Olivier, J. Beauchesne, and . Caruso, Towards a multilingual, comprehensive and open scientific journal ontology, Proceedings of the 13th International Conference of the International Society for Scientometrics and Informetrics, vol.11, pp.66-77, 2011.

K. W. Boyack and R. Klavans, Creation of a highly detailed, dynamic, global model and map of science, Journal of the Association for Information Science and Technology, vol.65, issue.4, pp.670-685, 2014.

R. Klavans and K. W. Boyack, Which Type of Citation Analysis Generates the Most Accurate Taxonomy of Scientific and Technical Knowledge?, Journal of the Association for Information Science and Technology, vol.68, issue.4, pp.984-998, 2017.

A. Ruiz-iniesta and O. Corcho, A review of ontologies for describing scholarly and scientific documents, SePublica'14: Proceedings of the the 4th Workshop on Semantic Publishing co-located with the 11th Extended Semantic Web Conference, 2014.

A. M. Petersen and D. Rotolo, Loet Leydesdorff: A triple helix model of medical innovation: Supply, demand, and technological capabilities in terms of Medical Subject Headings, Research Policy, vol.45, issue.3, pp.666-681, 2016.

A. Mogoutov and B. Kahane, Data search strategy for science and technology emergence: A scalable and evolutionary query for nanotechnology tracking, Research Policy, vol.36, issue.6, pp.893-903, 2007.
URL : https://hal.archives-ouvertes.fr/hal-00871455

A. L. Porter, J. Youtie, P. Shapira, and D. J. Schoeneck, Refining search terms for nanotechnology, Journal of Nanoparticle Research, vol.10, issue.5, pp.715-728, 2007.

P. Ingwersen, Cognitive perspectives of information retrieval interaction: Elements of a cognitive IR theory, Journal of Documentation, vol.52, issue.1, pp.3-50, 1996.

J. Nicolaisen and B. Hjørland, Practical potentials of Bradford's law: A critical examination of the received view, Journal of Documentation, vol.63, issue.3, pp.359-377, 2007.

P. Ingwersen and K. Järvelin, The Turn: Integration of Information Seeking and Retrieval in Context, The Information Retrieval Series, vol.18, 2005.

T. E. Nisonger, Journals in the Core Collection: Definition, Identification, and Applications, vol.51, pp.51-73, 2007.

H. Small, Co-citation in the scientific literature: A new measure of the relationship between two documents, Journal of the American Society for Information Science, vol.24, issue.4, pp.265-269, 1973.

Q. L. Burrell, On the h-index, the size of the Hirsch core and Jin's A-index, Journal of Informetrics, vol.1, issue.2, pp.170-177, 2007.

W. Glänzel and B. Thijs, Using "core documents" for detecting and labelling new emerging topics, Scientometrics, vol.91, issue.2, pp.399-416, 2012.

J. Rocchio, Relevance Feedback in Information Retrieval, The SMART retrieval system: Experiments in automatic document processing, pp.313-323, 1971.

G. Salton and C. Buckley, Improving retrieval performance by relevance feedback, Journal of the American Society for Information Science, vol.41, issue.4, pp.288-297, 1990.

C. Carpineto and G. Romano, A Survey of Automatic Query Expansion in Information Retrieval, ACM Computing Surveys, vol.44, issue.1, pp.1-50, 2012.

R. Agrawal, T. Imieli?ski, and A. Swami, Mining association rules between sets of items in large databases, ACM SIGMOD Record, vol.22, issue.2, pp.207-216, 1993.

D. Hric, R. K. Darst, and S. Fortunato, Community detection in networks: Structural communities versus ground truth, Physical Review E, vol.90, issue.6, p.62805, 2014.

M. Myer and . Kessler, Bibliographic coupling between scientific papers, vol.14, pp.10-25, 1963.

N. Jardine and C. Van-rijsbergen, The use of hierarchic clustering in information retrieval, Information Storage and Retrieval, vol.7, issue.5, pp.217-240, 1971.

P. Mayr and A. Scharnhorst, Combining bibliometrics and information retrieval: Preface, Scientometrics, vol.102, issue.3, pp.2191-2192, 2015.

P. Mayr and A. Scharnhorst, Scientometrics and information retrieval: Weak-links revitalized, Scientometrics, vol.102, issue.3, pp.2193-2199, 2015.

M. Zitt, Meso-level retrieval: IR-bibliometrics interplay and hybrid citation-words methods in scientific fields delineation, vol.102, pp.2223-2245, 2015.

P. Mayr, I. Frommholz, G. Cabanac, M. Kumar-chandrasekaran, K. Jaidka et al., Special Issue on Bibliometric-Enhanced Information Retrieval and Natural Language Processing for Digital Libraries, International Journal on Digital Libraries, vol.19, 2018.

M. E. Newman, The structure of scientific collaboration networks, vol.98, pp.404-409, 2001.

M. E. Newman, Coauthorship networks and patterns of scientific collaboration, Proceedings of the National Academy of Sciences, vol.101, pp.5200-5205, 2004.

A. Barabási, H. Jeong, Z. Néda, E. Ravasz, A. Schubert et al., Vicsek: Evolution of the social network of scientific collaborations, Physica A: Statistical Mechanics and its Applications, vol.311, issue.3-4, pp.590-614, 2002.

D. Price, A general theory of bibliometric and other cumulative advantage processes, Journal of the American Society for Information Science, vol.27, issue.5, pp.292-306, 1976.

R. Albert and A. Barabási, Statistical mechanics of complex networks, vol.74, pp.47-97, 2002.

C. S. Wagner, Loet Leydesdorff: Network structure, selforganization, and the growth of international collaboration in science, Research Policy, vol.34, issue.10, pp.1608-1618, 2005.

G. Csányi and B. Szendr?i, Fractal-small-world dichotomy in realworld networks, Physical Review E, vol.70, issue.1, p.16122, 2004.

L. Miller-mcpherson, J. M. Smith-lovin, and . Cook, Birds of a Feather: Homophily in Social Networks, vol.27, pp.415-444, 2001.

N. Carayol and P. Roux, Knowledge flows and the geography of networks: A strategic model of small world formation, Journal of Economic Behavior & Organization, vol.71, issue.2, pp.414-427, 2009.
URL : https://hal.archives-ouvertes.fr/hal-00390685

K. Börner, W. Glänzel, and A. Scharnhorst, Peter van den Besselaar: Modeling science: Studying the structure and dynamics of science, Scientometrics, vol.89, issue.1, pp.347-348, 2011.

M. Cadot, A. Lelu, and M. Zitt, Benchmarking 17 clustering methods, 2018.

A. Mccallum, K. Nigam, and L. H. Ungar, Efficient clustering of high-dimensional data sets with application to reference matching, KDD'00: Proceedings of the sixth ACM SIGKDD international conference on Knowledge discovery and data mining, pp.169-178, 2000.

M. Zitt and E. Bassecoulard, Reassessment of co-citation methods for science indicators: Effect of methods improving recall rates, Scientometrics, vol.37, issue.2, pp.223-244, 1996.

K. W. Boyack and R. Klavans, Co-citation analysis, bibliographic coupling, and direct citation: Which citation approach represents the research front most accurately?, Journal of the American Society for Information Science and Technology, vol.61, issue.12, pp.2389-2404, 2010.

G. W. Milligan, A Review Of Monte Carlo Tests Of Cluster Analysis, Multivariate Behavioral Research, vol.16, issue.3, pp.379-407, 1981.

G. W. Milligan and M. C. Cooper, Methodology Review: Clustering Methods, Applied Psychological Measurement, vol.11, issue.4, pp.329-354, 1987.

M. Ester, H. Kriegel, J. Sander, and X. Xu, A densitybased algorithm for discovering clusters a density-based algorithm for discovering clusters in large spatial databases with noise, KDD'96: Proceedings of the Second International Conference on Knowledge Discovery and Data Mining, pp.226-231, 1996.

A. Rodriguez and A. Laio, Clustering by fast search and find of density peaks, Science, vol.344, issue.6191, pp.1492-1496, 2014.

M. Reinert, Un logiciel d'analyse lexicale, Les cahiers de l'analyse des données, vol.11, pp.471-481, 1986.

J. Benzécri, L'analyse des correspondances, vol.2, 1973.

D. Peter, P. Turney, and . Pantel, From frequency to meaning: vector space models of semantics, Journal of Artificial Intelligence Research, vol.37, issue.1, pp.141-188, 2010.

S. Deerwester, S. T. Dumais, T. K. Landauer, G. W. Furnas, and L. Beck, Improving information retrieval with latent semantic indexing, Proceedings of the 51st Annual Meeting of the American Society for Information Science, vol.25, pp.36-40, 1988.

A. Lelu, Clusters and factors: Neural algorithms for a novel representation of huge and highly multidimensional data sets, New Approaches in Classification and Data Analysis, pp.241-248, 1994.

C. H. Papadimitriou, H. Tamaki, and P. Raghavan, Santosh Vempala: Latent semantic indexing: A probabilistic analysis, PODS'98: Proceedings of the 17th ACM SIGACT-SIGMOD-SIGART symposium on Principles of database systems, pp.159-168, 1998.

T. Hofmann, Probabilistic latent semantic indexing, SIGIR'99: Proceedings of the 22nd annual international ACM SIGIR conference on Research and development in information retrieval, pp.50-57, 1999.

D. M. Blei, A. Y. Ng, and M. I. Jordan, Latent Dirichlet Allocation, Journal of Machine Learning Research, vol.3, pp.993-1022, 2003.

D. Vincent, J. Blondel, R. Guillaume, E. Lambiotte, and . Lefebvre, Fast unfolding of communities in large networks, Journal of Statistical Mechanics: Theory and Experiment, issue.10, p.10008, 2008.

M. Rosvall and T. Carl, Bergstrom: An information-theoretic framework for resolving community structure in complex networks, Proceedings of the National Academy of Sciences, vol.104, issue.18, pp.7327-7331, 2007.

L. Nees-jan-van-eck and . Waltman, Software survey: VOSviewer, a computer program for bibliometric mapping, Scientometrics, vol.84, issue.2, pp.523-538, 2010.

M. Meila and J. Shi, Learning Segmentation by Random Walks, NIPS'00: Proceedings of the Neural Information Processing Systems Conference, pp.873-879, 2000.

A. Lancichinetti and S. Fortunato, Community detection algorithms: A comparative analysis, Physical Review E, vol.80, issue.5, p.56117, 2009.

J. Leskovec, K. J. Lang, and M. Mahoney, Empirical comparison of algorithms for network community detection, WWW'10: Proceedings of the 19th international conference on World Wide Web, pp.631-640, 2010.

J. Yang, Jure Leskovec: Defining and Evaluating Network Communities Based on Ground-Truth, ICDM'12: Proceedings of the 12th International Conference on Data Mining, pp.745-754, 2012.

Y. Shen, X. He, J. Gao, L. Deng, and G. Mesnil, A Latent Semantic Model with Convolutional-Pooling Structure for Information Retrieval, CIKM'14: Proceedings of the 23rd ACM conference on Information and knowledge mining, pp.101-110, 2014.

C. Van-gysel and M. De-rijke, Evangelos Kanoulas: Neural vector spaces for unsupervised information retrieval, 2017.

T. Mikolov, G. Wen-tau-yih, and . Zweig, Linguistic Regularities in Continuous Space Word Representations, NAACL-HLT'13: Proceedings of the Conference of the North American Chapter of the Association for Computational Linguistics: Human Language Technologies, pp.746-751, 2013.

O. Levy and Y. Goldberg, Neural Word Embeddings as Implicit Matrix Factorization, NIPS'14: Proceedings of the Neural Information Processing Systems Conference, pp.2177-2185, 2014.

S. E. Robertson, S. Walker, S. Jones, M. Hancockbeaulieu, and M. Gatford, Okapi at TREC-3, TREC'94: Proceedings of the 3rd Text REtrieval Conference, pp.109-126, 1994.

M. J. Thomas, E. M. Fruchterman, and . Reingold, Graph Drawing by Force-directed Placement, Software: Practice and Experience, vol.21, pp.1129-1164, 1991.

S. Mathieu-bastian, M. Heymann, and . Jacomy, Gephi: An Open Source Software for Exploring and Manipulating Networks, ICWSM'09: Proceedings of the 3rd International AAAI Conference on Weblogs and Social Media, pp.361-362, 2009.

S. Martin, W. M. Brown, R. Klavans, and K. W. Boyack, OpenOrd: An open-source toolbox for large graph layout, Proceedings of Visualization and Data Analysis, p.786806, 2011.

A. Wouter-de-nooy, V. Mrvar, and . Batagelj, Exploratory Social Network Analysis with Pajek, 2011.

M. Cadot and A. Lelu, Optimized Representation for Classifying Qualitative Data, DBKDA'10: Proceedings of the 2nd International Conference on Advances in Databases, Knowledge, and Data Applications, Les Menuires, pp.241-246, 2010.

D. Cai, X. He, and J. Han, Document clustering using locality preserving indexing, IEEE Transactions on Knowledge and Data Engineering, vol.17, issue.12, pp.1624-1637, 2005.

W. M. Rand, Objective Criteria for the Evaluation of Clustering Methods, Journal of the American Statistical Association, vol.66, issue.336, pp.846-850, 1971.

T. M. Cover and J. A. Thomas, Elements of Information Theory, 1991.

Z. Peter-ronhovde and . Nussinov, Multiresolution community detection for megascale networks by information-based replica correlations, Physical Review E, vol.80, issue.1, p.16109, 2009.

E. Garfield, A. I. Pudovkin, and V. S. Istomin, Why do we need algorithmic historiography?, Journal of the American Society for Information Science and Technology, vol.54, issue.5, pp.400-412, 2003.

I. Marshakova, System of Document Connections Based on References, vol.6, pp.3-8, 1973.

H. D. White, C. Belver, and . Griffith, Author cocitation: A literature measure of intellectual structure, Journal of the American Society for Information Science, vol.32, issue.3, pp.163-171, 1981.

G. Salton, The SMART retrieval system: Experiments in automatic document processing, 1971.

M. Callon, J. Courtial, and W. A. Turner, Serge Bauin: From translations to problematic networks: An introduction to co-word analysis, Social Science Information, vol.22, issue.2, pp.191-235, 1983.

W. A. Turner, G. Chartron, F. Laville, and B. , Michelet: Packaging information for peer review: New co-word analysis techniques, Handbook of Quantitative Science and Technology, pp.291-323, 1988.

J. Whittaker, Creativity and Conformity in Science: Titles, Keywords and Co-word Analysis, vol.19, pp.473-496, 1989.

C. Linton and . Freeman, The development of social network analysis:a study in the sociology of science, 2004.

C. Chen, CiteSpace II: Detecting and visualizing emerging trends and transient patterns in scientific literature, Journal of the American Society for Information Science and Technology, vol.57, issue.3, pp.359-377, 2006.

W. Glänzel and H. Czerwon, A new methodological approach to bibliographic coupling and its application to the national, regional and institutional level, Scientometrics, vol.37, issue.2, pp.195-221, 1996.

N. Ludo-waltman and . Jan-van-eck, A new methodology for constructing a publication-level classification system of science, Journal of the American Society for Information Science and Technology, vol.63, issue.12, pp.2378-2392, 2012.

N. Shibata, Y. Kajikawa, and Y. Takeda, Katsumori Matsushima: Comparative study on methods of detecting research fronts using different types of citation, Journal of the American Society for Information Science and Technology, vol.60, issue.3, pp.571-580, 2009.

B. Jarneving, A comparison of two bibliometric methods for mapping of the research front, Scientometrics, vol.65, issue.2, pp.245-263, 2005.

K. Börner, Atlas of Science: Visualizing What We Know, 2010.

M. Zitt and E. Bassecoulard, Development of a method for detection and trend analysis of research fronts built by lexical or cocitation analysis, Scientometrics, vol.30, issue.1, pp.333-351, 1994.

L. Leydesdorff and I. Rafols, Interactive overlays: A new method for generating global journal maps from Web-of-Science data, Journal of Informetrics, vol.6, issue.2, pp.318-332, 2012.

L. Leydesdorff and P. Zhou, Nanotechnology as a field of science: Its delineation in terms of journals and patents, Scientometrics, vol.70, issue.3, pp.693-713, 2007.

K. W. Boyack, Investigating the effect of global data on topic detection, Scientometrics, vol.111, issue.2, pp.999-1015, 2017.

C. Bergstrom, Eigenfactor: Measuring the value and prestige of scholarly journals, College & Research Libraries News, vol.68, issue.5, pp.314-316, 2007.

M. Zitt and H. Small, Modifying the journal impact factor by fractional citation weighting: The audience factor, Journal of the American Society for Information Science and Technology, vol.59, issue.11, pp.1856-1860, 2008.

N. Ludo-waltman, T. N. Jan-van-eck, M. S. Van-leeuwen, and . Visser, Some modifications to the SNIP journal impact indicator, Journal of Informetrics, vol.7, issue.2, pp.272-285, 2013.

M. Zitt and J. Cointet, Citation impacts revisited: How novel impact measures reflect interdisciplinarity and structural change at the local and global level, ISSI'13: Proceedings of the 14th International Conference of the International Society for Scientometrics and Informetrics, pp.285-299, 2013.

H. Small and E. Sweeney, Clustering the Science Citation Index R using co-citations: I. A comparison of methods, Scientometrics, vol.7, issue.3-6, pp.391-409, 1985.

R. J. Terttu-luukkonen, O. Tijssen, G. Persson, and . Sivertsen, The measurement of international scientific collaboration, Scientometrics, vol.28, issue.1, pp.15-36, 1993.

M. Zitt, E. Bassecoulard, and Y. Okubo, Shadows of the Past in International Cooperation: Collaboration Profiles of the Top Five Producers of Science, Scientometrics, vol.47, issue.3, pp.627-657, 2000.

K. W. Boyack, R. Klavans, and K. Börner, Mapping the backbone of science, Scientometrics, vol.64, issue.3, pp.351-374, 2005.

G. Lewison and G. Paraje, The classification of biomedical journals by research level, Scientometrics, vol.60, issue.2, pp.145-157, 2004.

S. Teufel, J. Carletta, and M. Moens, An annotation scheme for discourse-level argumentation in research articles, EACL'99: Proceedings of the 9th Conference of the European chapter of the Association for Computational Linguistics, pp.110-117, 1999.

M. Liakata, S. Saha, S. Dobnik, C. Batchelor, and D. Rebholz-schuhmann, Automatic recognition of conceptualization zones in scientific articles and two life science applications, Bioinformatics, vol.28, issue.7, pp.991-1000, 2012.

S. Teufel and M. Moens, Summarizing Scientific Articles: Experiments with Relevance and Rhetorical Status, Computational Linguistics, vol.28, issue.4, pp.409-445, 2002.

C. Lyon, J. Malcolm, and B. Dickerson, Detecting short passages of similar text in large document collections, EMNLP'01: Proceedings of the Conference on Empirical Methods in Natural Language Processing, pp.118-125, 2001.

R. Cilibrasi, M. B. Paul, and . Vitányi, Clustering by Compression, IEEE Transactions on Information Theory, vol.51, issue.4, pp.1523-1545, 2005.

C. H. Bennett, P. Gács, M. Li, M. B. Paul, . Vitányi et al., Zurek: Information Distance, IEEE Transactions on Information Theory, vol.44, issue.4, pp.1407-1423, 1998.

M. Li, X. Chen, X. Li, B. Ma, M. B. Paul et al., The Similarity Metric, IEEE Transactions on Information Theory, vol.50, issue.12, pp.3250-3264, 2004.

R. Cilibrasi, M. B. Paul, and . Vitányi, The Google Similarity Distance, IEEE Transactions on Knowledge and Data Engineering, vol.19, issue.3, pp.370-383, 2007.

J. Macqueen, Some methods for classification and analysis of multivariate observations, Proceedings of the 5th Berkeley Symposium on Mathematical Statistics and Probabilities, pp.281-297, 1967.

E. W. Forgy, Cluster analysis of multivariate data: Efficiency versus interpretability of classifications, Biometrics, vol.21, pp.768-769, 1965.

N. Sahoo, J. Callan, R. Krishnan, G. Duncan, and R. Padman, Incremental hierarchical clustering of text documents, CIKM'06: Proceedings of the 15th ACM international conference on Information and knowledge management, 2006.

V. Yu, E. Tsotras, B. Fox, and . Liu, , pp.357-366, 2006.

H. Yu, D. Searsmith, X. Li, and J. Han, Scalable Construction of Topic Directory with Nonparametric Closed Termset Mining, ICDM'04: Proceedings of the 4th IEEE International Conference on Data Mining, pp.1-4, 2004.

F. Åström, Changes in the LIS research front: Time-sliced cocitation analyses of LIS journal articles, vol.58, pp.947-957, 1990.

D. M. Blei and J. D. Lafferty, Dynamic topic models, ICML'06: Proceedings of the 23rd international conference on Machine learning, pp.113-120, 2006.

Q. Mei and C. Zhai, Discovering evolutionary theme patterns from text: An exploration of temporal text mining, KDD'05: Proceedings of the 11th ACM SIGKDD international conference on Knowledge discovery and data mining, pp.198-207, 2005.

F. Janssens and W. Glänzel, Bart De Moor: Dynamic hybrid clustering of bioinformatics by incorporating text mining and citation analysis, KDD'07: Proceedings of the 13th ACM SIGKDD international conference on Knowledge discovery and data mining, pp.360-369, 2007.

C. Chen, F. Ibekwe-sanjuan, and J. Hou, The structure and dynamics of cocitation clusters: A multiple-perspective cocitation analysis, Journal of the American Society for Information Science and Technology, vol.61, issue.7, pp.1386-1409, 2010.
URL : https://hal.archives-ouvertes.fr/hal-00638091

D. Chavalarias and J. Cointet, Phylomemetic Patterns in Science Evolution-The Rise and Fall of Scientific Fields, PLOS ONE, vol.8, issue.2, p.54847, 2013.
URL : https://hal.archives-ouvertes.fr/hal-01401779

S. Shane, Technological Opportunities and New Firm Creation, vol.47, pp.205-220, 2001.

K. B. Dahlin and M. Dean, Behrens: When is an invention really radical? Defining and measuring technological radicalness, Research Policy, vol.34, issue.5, pp.717-737, 2005.

H. Small, H. Tseng, and M. Patek, Discovering discoveries: Identifying biomedical discoveries using citation contexts, Journal of Informetrics, vol.11, issue.1, pp.46-62, 2017.

E. Garfield and I. H. Sher, KeyWords Plus TM-algorithmic derivative indexing, vol.44, pp.298-299, 1993.

R. N. Kostoff, J. Antonio-del-río, J. A. Humenik, E. O. García, and A. M. Ramírez, Citation mining: Integrating text mining and bibliometrics for research user profiling, Journal of the American Society for Information Science and Technology, vol.52, issue.13, pp.1148-1156, 2001.

B. Verspagen and C. Werker, The Invisible College of The Economics of Innovation and Technological Change, Estudios de Economía Aplicada, vol.21, issue.3, pp.187-203, 1975.

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

T. Luukkonen, O. Persson, and G. Sivertsen, Understanding Patterns of International Scientific Collaboration, Technology, & Human Values, vol.17, issue.1, pp.101-126, 1992.

H. Kretschmer, Coauthorship networks of invisible colleges and institutionalized communities, vol.30, pp.363-369, 1994.

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

J. S. Katz, Geographical proximity and scientific collaboration, vol.31, pp.31-43, 1994.

J. Hoekman, K. Frenken, J. W. Robert, and . Tijssen, Research collaboration at a distance: Changing spatial patterns of scientific collaboration within Europe, Research Policy, vol.39, issue.5, pp.662-673, 2010.

T. Velden, A. Haque, and C. Lagoze, A new approach to analyzing patterns of collaboration in co-authorship networks: Mesoscopic analysis and interpretation, Scientometrics, vol.85, issue.1, pp.219-242, 2010.

P. Mutschke and A. Q. Haase, Collaboration and cognitive structures in social science research fields. Towards socio-cognitive analysis in information systems, Scientometrics, vol.52, issue.3, pp.487-502, 2001.

J. Raffo and S. Lhuillery, How to play the "Names Game": Patent retrieval comparing different heuristics, Research Policy, vol.38, issue.10, pp.1617-1627, 2009.

K. W. Mccain, The author cocitation structure of macroeconomics, Scientometrics, vol.5, issue.5, pp.277-289, 1983.

G. Gilbert, Referencing as Persuasion, Social Studies of Science, vol.7, issue.1, pp.113-122, 1977.

C. Roth and J. Cointet, Social and semantic coevolution in knowledge networks, Social Networks, vol.32, issue.1, pp.16-29, 2010.
URL : https://hal.archives-ouvertes.fr/hal-01401786

X. Polanco, L. Grivel, and J. Royauté, How to do things with terms in informetrics : terminological variation and stabilization as science watch indicators, ISSI'95: Proceedings of the 5th International Conference of the International Society for Scientometrics and Informetrics, pp.435-444, 1995.

F. Martin, Porter: An algorithm for suffix stripping, Program, vol.14, issue.3, pp.130-137, 1980.

L. Egghe and R. Rousseau, Introduction to informetrics: Quantitative methods in library, documentation, and information science, 1990.

K. W. Mccain, Descriptor and citation retrieval in the Medical Behavioral Sciences literature: Retrieval overlaps and novelty distribution, Journal of the American Society for Information Science, vol.40, issue.2, pp.110-114, 1989.

M. Pao, Term and citation retrieval: A field study, Information Processing & Management, vol.29, issue.1, pp.95-112, 1993.

L. Bornmann and H. Daniel, What do citation counts measure? A review of studies on citing behavior, Journal of Documentation, vol.64, issue.1, pp.45-80, 2008.

B. Cronin, The Citation Process: The Role and Significance of Citations in Scientific Communication, 1984.

G. Henry and . Small, Cited Documents as Concept Symbols, vol.8, pp.327-340, 1978.

B. Latour, Science in Action: How to Follow Scientists and Engineers Through Society, 1987.

A. Cambrosio, P. Keating, S. Mercier, and G. Lewison, Andrei Mogoutov: Mapping the emergence and development of translational cancer research, European Journal of Cancer, vol.42, issue.18, pp.3140-3148, 2006.

F. Narin and E. Noma, Is technology becoming science?, Scientometrics, vol.7, issue.3-6, pp.369-381, 1985.
DOI : 10.1007/bf02017155

M. Callon, Pinpointing Industrial Invention: An Exploration of Quantitative Methods for the Analysis of Patents. In: Mapping the Dynamics of Science and Technology, vol.10, pp.163-188, 1986.

V. Larivière, É. Archambault, and Y. Gingras, Long-term variations in the aging of scientific literature: From exponential growth to steadystate science (1900-2004), Journal of the American Society for Information Science and Technology, vol.59, issue.2, pp.288-296, 2008.

C. M. Ed, R. K. Noyons, . Buter, F. J. Anthony, H. Van-raan et al., The Role of Europe in World-Wide Science and Technology: Monitoring and Evaluation in a Context of Global Competition-Report for the European Commission, 2000.

C. M. Ed, R. K. Noyons, . Buter, F. J. Anthony, U. Van-raan et al., Rangnow: Mapping Excellence in Science and Technology across Europe Nanoscience and Nanotechnology-Report of project EC-PPN CT-2002-0001 to the European Commission (CWTS and Fraunhofer ISI, 2003.

M. Zitt, A. Lelu, and E. Bassecoulard, Hybrid citation-word representations in science mapping: Portolan charts of research fields?, Journal of the American Society for Information Science and Technology, vol.62, issue.1, pp.19-39, 2011.
URL : https://hal.archives-ouvertes.fr/hal-00516860

P. Laurens, M. Zitt, and E. Bassecoulard, Delineation of the genomics field by hybrid citation-lexical methods: interaction with experts and validation process, Scientometrics, vol.82, issue.3, pp.647-662, 2010.

A. Steven, G. G. Morris, and . Yen, Crossmaps: Visualization of overlapping relationships in collections of journal papers, Proceedings of the National Academy of Sciences, vol.101, pp.5291-5296, 2004.

C. Reilly, C. Wang, and M. Rutherford, A rapid method for the comparison of cluster analyses, Statistica Sinica, vol.15, issue.1, pp.19-33, 2005.

R. Klavans and W. Kevin, Boyack: Toward a consensus map of science, Journal of the American Society for Information Science and Technology, vol.60, issue.3, pp.455-476, 2009.

L. Leydesdorff and I. Rafols, A global map of science based on the ISI subject categories, Journal of the American Society for Information Science and Technology, vol.60, issue.2, pp.348-362, 2009.

B. Per-ahlgren and . Jarneving, Bibliographic coupling, common abstract stems and clustering: A comparison of two document-document similarity approaches in the context of science mapping, Scientometrics, vol.76, issue.2, pp.273-290, 2008.

E. Yan and Y. Ding, Scholarly network similarities: How bibliographic coupling networks, citation networks, cocitation networks, topical networks, coauthorship networks, and coword networks relate to each other, Journal of the American Society for Information Science and Technology, vol.63, issue.7, pp.1313-1326, 2012.
DOI : 10.1002/asi.22680

T. Velden, K. W. Boyack, J. Gläser, R. Koopman, A. Scharnhorst et al., Comparison of topic extraction approaches and their results, Scientometrics, vol.111, issue.2, pp.1169-1221, 2017.
DOI : 10.1007/s11192-017-2306-1

URL : https://pure.knaw.nl/ws/files/4247535/preprint_Velden_comparison.pdf

H. Small, Co-Citation Context Analayses And The Structure of Paradigms, Journal of Documentation, vol.36, issue.3, pp.183-196, 1980.

, Henry Small: Maps of science as interdisciplinary discourse: Co-citation contexts and the role of analogy, Scientometrics, vol.83, issue.3, pp.835-849, 2010.

S. Teufel, A. Siddharthan, and D. Tidhar, Automatic classification of citation function, EMNLP'06: Proceedings of the Conference on Empirical Methods in Natural Language Processing, pp.103-110, 2006.

A. Ritchie, S. Robertson, and S. Teufel, Comparing citation contexts for information retrieval, CIKM'08: Proceeding of the 17th ACM conference on Information and knowledge mining, pp.213-222, 2008.

S. Liu and C. Chen, The differences between latent topics in abstracts and citation contexts of citing papers, Journal of the American Society for Information Science and Technology, vol.64, issue.3, pp.627-639, 2013.

H. Small, Interpreting maps of science using citation context sentiments: A preliminary investigation, Scientometrics, vol.87, issue.2, pp.373-388, 2011.

A. Elkiss, S. Shen, A. Fader, G. Erkan, and D. States, Dragomir Radev: Blind men and elephants: What do citation summaries tell us about a research article?, Journal of the American Society for Information Science and Technology, vol.59, issue.1, pp.51-62, 2008.

A. Callahan, S. Hockema, and G. Eysenbach, Contextual cocitation: Augmenting cocitation analysis and its applications, Journal of the American Society for Information Science and Technology, vol.61, issue.6, pp.1130-1143, 2010.

C. H. Xiaofeng-he, H. Ding, H. D. Zha, and . Simon, Automatic topic identification using webpage clustering, ICDM'01: Proceedings of the International Conference on Data Mining, pp.195-202, 2001.

S. Brin and L. Page, The anatomy of a large-scale hypertextual Web search engine, Computer Networks and ISDN Systems, vol.30, issue.1-7, pp.107-117, 1998.

G. Peter-van-den-besselaar and . Heimeriks, Mapping research topics using word-reference co-occurrences: A method and an exploratory case study, Scientometrics, vol.68, issue.3, pp.377-393, 2006.

C. Per-ahlgren and . Colliander, Document-document similarity approaches and science mapping: Experimental comparison of five approaches, Journal of Informetrics, vol.3, issue.1, pp.49-63, 2009.

F. Janssens and W. Glänzel, Bart De Moor: A hybrid mapping of information science, Scientometrics, vol.75, issue.3, pp.607-631, 2008.

W. Glänzel and B. Thijs, Using "core documents" for the representation of clusters and topics, Scientometrics, vol.88, issue.1, pp.297-309, 2011.

R. Koopman, S. Wang, and A. Scharnhorst, Contextualization of topics: Browsing through the universe of bibliographic information, Scientometrics, vol.111, issue.2, pp.1119-1139, 2017.

Y. Lecun, A Path to AI, BAI'17: Workshop on Beneficial Artificial Intelligence, Asilomar, CA 2017, 2017.

R. R. Braam, H. F. Moed, F. J. Anthony, and . Van-raan, Mapping of science by combined co-citation and word analysis. I. Structural aspects, Journal of the American Society for Information Science, vol.42, issue.4, pp.233-251, 1991.

B. Larsen, Exploiting citation overlaps for Information Retrieval: Generating a boomerang effect from the network of scientific papers, Scientometrics, vol.54, issue.2, pp.155-178, 2002.

Y. Huang, J. Schuehle, and A. L. Porter, Youtie: A systematic method to create search strategies for emerging technologies based on the Web of Science: Illustrated for "Big Data, Scientometrics, vol.105, issue.3, pp.2005-2022, 2015.