K. Aberer, P. Cudré-mauroux, and M. Hauswirth, Start making sense: The Chatty Web approach for global semantic agreements, Journal of Web Semantics, vol.1, issue.1, pp.89-114, 2003.

S. Abiteboul, R. Hull, and V. Vianu, Foundations of Databases, 1995.

E. Amigó, J. Artiles, J. Gonzalo, D. Spina, B. Liu et al., Weps3 evaluation campaign: Overview of the on-line reputation management task, 2010.

G. Antoniou, P. Groth, F. Van-van-harmelen, and R. Hoekstra, A Semantic Web Primer, 2012.

D. Ariely, Predictably Irrational, Revised and Expanded Edition: The Hidden Forces That Shape Our Decisions, 2010.

G. Bagan, A. Bonifati, R. Ciucanu, H. L. George, A. Fletcher et al., Generating flexible workloads for graph databases, Proc. VLDB Endow, vol.9, pp.1457-1460, 2016.
URL : https://hal.archives-ouvertes.fr/hal-01330111

H. Beck, Scatterbrain: How the Mind's Mistakes Make Humans Creative, Innovative, and Successful, 2019.

D. Beech, Data semantics on the information superhighway, Database Applications Semantics, Proceedings of the Sixth IFIP TC-2 Working Conference on Data Semantics (DS-6), pp.12-33, 1995.

R. Bekkerman and A. Mccallum, Disambiguating Web appearances of people in a social network, Proceedings of the 14th international conference on World Wide Web, pp.463-470, 2005.

, Schema Matching and Mapping. Data-Centric Systems and Applications, 2011.

O. Benjelloun, H. Garcia-molina, D. Menestrina, Q. Su, S. E. Whang et al., Swoosh: a generic approach to entity resolution, The VLDB Journal, vol.18, issue.1, pp.255-276, 2009.

A. Borgida and J. Mylopoulos, Data semantics revisited, Semantic Web and Databases, pp.9-26, 2005.

A. Bozzon, M. Brambilla, S. Ceri, M. Silvestri, and G. Vesci, Choosing the right crowd: Expert finding in social networks, Proceedings of the 16th International Conference on Extending Database Technology, EDBT '13, pp.637-648, 2013.

E. Brynjolfsson, The productivity paradox of information technology, Commun. ACM, vol.36, issue.12, pp.66-77, 1993.

A. Caliskan, J. J. Bryson, and A. Narayanan, Semantics derived automatically from language corpora contain human-like biases, Science, vol.356, issue.6334, pp.183-186, 2017.

K. Ashok, P. M. Chandra, and . Merlin, Optimal implementation of conjunctive queries in relational data bases, Proceedings of the 9th Annual ACM Symposium on Theory of Computing, pp.77-90, 1977.

S. Chaudhuri, V. Ganti, and R. Motwani, Robust Identification of Fuzzy Duplicates, Proceedings of the 21st International Conference on Data Engineering (ICDE), pp.865-876, 2005.

Z. Chen, D. V. Kalashnikov, and S. Mehrotra, Adaptive graphical approach to entity resolution, Proceedings of the 7th ACM/IEEE-CS joint conference on Digital libraries, pp.204-213, 2007.

F. Chollet, On the measure of intelligence, 2019.

P. Christen, Data Matching: Concepts and Techniques for Record Linkage, Entity Resolution, and Duplicate Detection, 2012.

F. Chung, Spectral Graph Theory, CBMS Regional Conference Series in Mathematics, vol.92, 1997.

A. Clark, Surfing Uncertainty: Prediction, Action, and the Embodied Mind, 2016.

E. F. Codd, Relational database: A practical foundation for productivity, Readings in Artificial Intelligence and Databases, pp.60-68, 1989.

P. Cudré-mauroux, K. Aberer, and A. Feher, Probabilistic message passing in peer data management systems, ICDE, p.41, 2006.

P. Cudré-mauroux, Emergent Semantics, pp.982-985, 2009.

Y. Le-cun, Quand la machine apprend (in French), 2019.

B. A. Davey and H. A. Priestley, Introduction to Lattices and Order, 2002.

R. Dechter, Constraint Processing, 2003.

M. Defferrard, X. Bresson, and P. Vandergheynst, Convolutional neural networks on graphs with fast localized spectral filtering, Advances in Neural Information Processing Systems 29: Annual Conference on Neural Information Processing Systems, pp.3837-3845, 2016.

S. Dehaene, Les talents du cerveau, le défi des machines (in French), Odile Jacob, 2018.

J. Deng, W. Dong, R. Socher, L. Li, K. Li et al., Imagenet: A large-scale hierarchical image database, 2009 IEEE Conference on Computer Vision and Pattern Recognition, pp.248-255, 2009.

J. Devlin, M. Chang, K. Lee, and K. Toutanova, BERT: Pretraining of deep bidirectional transformers for language understanding, Proceedings of the 2019 Conference of the North American Chapter of the Association for Computational Linguistics: Human Language Technologies, vol.1, pp.4171-4186, 2019.

H. Hong, E. Do, and . Rahm, COMA -A System for Flexible Combination of Schema Matching Approaches, Proceedings of 28th International Conference on Very Large Data Bases (VLDB'02), pp.610-621, 2002.

J. , P. Doignon, and J. Falmagne, Knowledge Spaces, 1999.

X. Dong, A. Halevy, and J. Madhavan, Reference reconciliation in complex information spaces, Proceedings of the 2005 ACM SIGMOD international conference on Management of data, pp.85-96, 2005.

S. N. Dorogovtsev and J. F. Mendes, Evolution of Networks: From Biological Nets to the Internet and WWW, 2003.

J. Eisenstein, Introduction to Natural Language Processing, 2019.

T. Eiter, G. Ianni, and T. Krennwallner, Answer set programming: A primer, Reasoning Web, pp.40-110, 2009.

J. Euzenat and P. Shvaiko, Ontology matching, 2007.
URL : https://hal.archives-ouvertes.fr/hal-00817824

J. , C. Falmagne, and J. Doignon, Learning Spaces, 2010.

T. Feder and M. Y. Vardi, The computational structure of monotone monadic SNP and constraint satisfaction: a study through datalog and group theory, SIAM Journal on Computing, vol.28, issue.1, pp.57-104, 1999.

I. Fellegi and A. Sunter, A theory for record linkage, Journal of the American Statistical Association, vol.64, issue.328, pp.1183-1210, 1969.

A. Gal, T. Sagi, M. Weidlich, E. Levy, V. Shafran et al., Making sense of top-k matchings: A unified match graph for schema matching, Proceedings of SIGMOD Workshop on Information Integration on the Web (IIWeb'12), 2012.

A. Gal, Uncertain Schema Matching, 2011.

A. Gal, M. Katz, T. Sagi, M. Weidlich, K. Aberer et al., Nguyen Quoc Viet Hung, Eliezer Levy, and Victor Shafran. Completeness and Ambiguity of Schema Cover, 21st International Conference on Cooperative Information Systems, 2013.

H. Gardner, Frames of mind: The theory of multiple intelligences, 1983.

M. Gelfond and V. Lifschitz, The stable model semantics for logic programming, ICLP/SLP, pp.1070-1080, 1988.

M. Gelfond and V. Lifschitz, Classical negation in logic programs and disjunctive databases, Journal of New Generation Computing, vol.9, issue.3/4, pp.365-386, 1991.

W. Gilks, S. Richardson, and D. Spiegelhalter, Markov Chain Monte Carlo in Practice, 1996.

I. Goodfellow, Y. Bengio, and A. Courville, Deep Learning, 2016.

G. Gottlob, G. Greco, Z. Miklós, F. Scarcello, and T. Schwentick, Graph Theory, Computational Intelligence and Thought. Essays Dedicated to Martin Charles Golumbic on the Occasion of His 60th Birthday, Game Characterization and Computational Aspects, vol.5420, pp.87-99, 2009.

G. Gottlob, Z. Miklos, and T. Schwentick, Generalized Hypertree Decompositions: NP-hardness and Tractable Variants, Journal of the ACM, vol.56, issue.6, pp.1-32, 2009.

G. David-alan, When Computers Were Human, 2007.

D. Haas, J. Ansel, L. Gu, and A. Marcus, Argonaut: Macrotask crowdsourcing for complex data processing, Proc. VLDB Endow, vol.8, issue.12, pp.1642-1653, 2015.

A. Halevy, Why your data won't mix, Queue, vol.3, issue.8, pp.50-58, 2005.

Y. Noah-harari, Homo Deus: a brief history of tomorrow, 2016.

M. A. Hernández and S. J. Stolfo, The merge/purge problem for large databases, ACM SIGMOD Record, vol.24, issue.2, pp.127-138, 1995.

P. Hitzler, M. Krtzsch, and S. Rudolph, Foundations of Semantic Web Technologies, 2009.

E. Hollnagel, D. D. Woods, and N. Leveson, Resilience Engineering -Concepts and Precepts, 2006.
URL : https://hal.archives-ouvertes.fr/hal-00572766

B. Hou, Q. Chen, J. Shen, X. Liu, P. Zhong et al., Gradual machine learning for entity resolution, The World Wide Web Conference, WWW '19, pp.3526-3530, 2019.

V. Nguyen-quoc, X. H. Hung, Z. Luong, . Miklos, T. Tho et al., Collaborative Schema Matching Reconciliation, 21st International Conference on Cooperative Information Systems, 2013.
URL : https://hal.archives-ouvertes.fr/hal-00842697

V. Nguyen-quoc, X. H. Hung, Z. Luong, . Miklos, K. Tho-quan-thanh et al., An MAS Negotiation Support Tool for Schema Matching (Demonstration), Twelfth International Conference on Autonomous Agents and Multiagent Systems (AA-MAS'2013), 2013.

V. Nguyen-quoc, . Hung, T. Nguyen, Z. Tam, K. Miklos et al., On Leveraging Crowdsourcing Techniques for Schema Matching Networks, DASFAA 2013, 2013.
URL : https://hal.archives-ouvertes.fr/hal-00812037

V. Nguyen-quoc, . Hung, T. Nguyen, Z. Tam, K. Miklós et al., Reconciling schema matching networks through crowdsourcing, EAI Endorsed Trans. Collaborative Computing, vol.1, issue.2, p.2, 2014.
URL : https://hal.archives-ouvertes.fr/hal-01103662

V. Nguyen-quoc, . Hung, T. Nguyen, Z. Tam, K. Miklos et al., Pay-as-you-go Reconciliation in Schema Matching Networks, 30th International Conference on Data Engineering, 2014.
URL : https://hal.archives-ouvertes.fr/hal-00875448

V. Nguyen-quoc, M. Hung, . Weidlich, T. Nguyen, Z. Tam et al., Handling probabilistic integrity constraints in pay-as-you-go reconciliation of data models, Information Systems, vol.83, pp.166-180, 2019.

J. R. Hurford, The Origins of Meaning. Studies in the Evolution of Language, 2007.

E. Yannis, Ioannidis. Query optimization. ACM Comput. Surv, vol.28, issue.1, pp.121-123, 1996.

E. Ioannou, S. Sathe, N. Bonvin, A. Jain, S. Bondalapati et al., Entity Search with NECES-SITY (demo paper), 12th International Workshop on the Web and Databases, 2009.

E. Ioannou and Y. Velegrakis, Embench ++ : Data for a thorough benchmarking of matching-related methods, Semantic Web, vol.10, pp.435-450, 2019.

G. Panagiotis, F. Ipeirotis, J. Provost, and . Wang, Quality management on amazon mechanical turk, Proceedings of the ACM SIGKDD Workshop on Human Computation, HCOMP '10, pp.64-67, 2010.

G. Panagiotis, V. S. Ipeirotis, A. K. Verykios, and . Elmagarmid, Duplicate record detection: A survey, IEEE Transactions on Knowledge and Data Engineering, vol.19, issue.1, pp.1-16, 2007.

D. Jurafsky and J. H. Martin, Speech and Language Processing, 2008.

J. Kaplan, Humans Need Not Apply: A Guide to Wealth and Work in the Age of Artificial Intelligence, 2015.

M. Kearns and A. Roth, The Ethical Algorithm. The Science of Socially Aware Algorithm Design, 2019.

K. Kelly, Inevitable: understanding the 12 technological forces that will shape our future. Penguin Random House LLC, 2016.

. G. Ph, M. Y. Kolaitis, and . Vardi, Conjunctive query containment and constraint satisfaction, J. Comput. System Sci, vol.61, pp.302-332, 2000.

F. R. Kschischang, B. J. Frey, and H. A. Loeliger, Factor graphs and the sum-product algorithm, IEEE Trans. Inf. Theor, vol.47, issue.2, pp.498-519, 2006.

H. W. Kuhn, The hungarian method for the assignment problem, Naval Research Logistics Quarterly, vol.2, pp.83-97, 1955.

M. Brenden, R. Lake, J. B. Salakhutdinov, and . Tenenbaum, Human-level concept learning through probabilistic program induction, Science, vol.350, pp.1332-1338, 2015.

M. Brenden, . Lake, D. Tomer, J. B. Ullman, S. J. Tenenbaum et al., Building machines that learn and think like people, 2016.

G. Lakoff, What Categories Reveal about the Mind, 1987.

V. Latora, V. Nicosia, and G. Russo, Complex Networks: Principles, Methods and Applications, 2017.

P. Lieberman, Toward an evolutionary biology of language, 2006.

D. Lin, An information-theoretic definition of similarity, Proceedings of the Fifteenth International Conference on Machine Learning, ICML '98, pp.296-304, 1998.

C. D. Manning, P. Raghavan, and H. Schütze, Introduction to Information Retrieval, 2008.

J. Mao, C. Gan, P. Kohli, J. B. Tenenbaum, and J. Wu, The neuro-symbolic concept learner: Interpreting scenes, words, and sentences from natural supervision, 7th International Conference on Learning Representations, ICLR 2019, 2019.

P. Mavridis, D. Gross-amblard, and Z. Miklós, Using hierarchical skills for optimized task assignment in knowledge-intensive crowdsourcing, Proceedings of the 25th International Conference on World Wide Web, pp.843-853, 2016.
URL : https://hal.archives-ouvertes.fr/hal-01306481

P. Mavridis, D. Gross-amblard, and Z. Miklós, Using hierarchical skills for optimized task assignment in knowledge-intensive crowdsourcing, 2019.
URL : https://hal.archives-ouvertes.fr/hal-01306481

P. Mccorduck, Machines who think : a personal inquiry into the history and prospects of artificial intelligence, 2004.

D. Menestrina, O. Benjelloun, and H. Garcia-molina, Generic Entity Resolution with Data Confidences, First International VLDB Workshop on Clean Databases, 2006.

H. Mercier and D. Sperber, The Enigma of Reason, 2019.

Z. Miklós, Understanding tractable decompositions for constraint satisfaction, 2008.

Z. Miklós, N. Bonvin, P. Bouquet, M. Catasta, D. Cordioli et al., From Web Data to Entities and Back, The 22nd International Conference on Advanced Information Systems Engineering (CAiSE'10), vol.6051, pp.302-316, 2010.

Z. Miklos, M. Foursov, F. Lia, I. Jeantet, and D. Gross-amblard, Understanding the evolution of science: analyzing evolving term co-occurrence graphs with spectral techniques, Third international workshop on advances on managing and mining evolving graphs (LEG@ECMLPKDD), 2019.
URL : https://hal.archives-ouvertes.fr/hal-02195026

T. Mikolov, I. Sutskever, K. Chen, G. S. Corrado, and J. Dean, Distributed representations of words and phrases and their compositionality, Advances in Neural Information Processing Systems, vol.26, pp.3111-3119, 2013.

G. Mulgan, Big Mind: How Collective Intelligence Can Change Our World, 2017.

Q. Viet, H. Nguyen, T. Kurniawan-wijaya, Z. Miklos, K. Aberer et al., Minimizing Human Effort in Reconciling Match Networks, 32nd International Conference on Conceptual Modeling, 2013.
URL : https://hal.archives-ouvertes.fr/hal-00838259

C. Ogden and I. Richards, The Meaning of Meaning -A Study of the Influence of Language upon Thought and of the Science of Symbolism, 1923.

G. Papadakis and J. Svirsky, Comparative analysis of approximate blocking techniques for entity resolution, Avigdor Gal, and Themis Palpanas, vol.9, pp.684-695, 2016.

A. G. Parameswaran, H. Garcia-molina, H. Park, N. Polyzotis, A. Ramesh et al., Crowdscreen: algorithms for filtering data with humans, SIGMOD, pp.361-372, 2012.

S. Kyung and . Park, Human reliability : analysis, prediction, and prevention of human errors, 1986.

J. Pearl, Probabilistic Reasoning in Intelligent Systems: Networks of Plausible Inference, 1988.

E. Peukert, J. Eberius, and E. Rahm, AMC -A framework for modelling and comparing matching systems as matching processes, Proceedings of the 27th International Conference on Data Engineering (ICDE'11), pp.1304-1307, 2011.

L. Kun-qian, P. Popa, and . Sen, Active learning for large-scale entity resolution, Proceedings of the 2017 ACM on Conference on Information and Knowledge Management, CIKM '17, pp.1379-1388, 2017.

A. Radford, J. Wu, R. Child, D. Luan, D. Amodei et al., Language models are unsupervised multitask learners, 2019.

R. Ramakrishnan, B. Sridharan, J. R. Douceur, P. Kasturi, B. Krishnamachari-sampath et al., Azure data lake store: A hyperscale distributed file service for big data analytics, Proceedings of the 2017 ACM International Conference on Management of Data, SIGMOD '17, pp.51-63, 2017.

J. Reason, Human Error, 1990.

R. Reiter, A logic for default reasoning, Artificial Intelligence, vol.13, issue.1-2, pp.81-132, 1980.

P. Resnik, Semantic similarity in a taxonomy: An information-based measure and its application to problems of ambiguity in natural language, Journal of Artificial Intelligence Research (JAIR), vol.11, pp.95-130, 1999.

I. Senjuti-basu-roy, S. Lykourentzou, and . Thirumuruganathan, Sihem Amer-Yahia, and Gautam Das. Task assignment optimization in knowledge-intensive crowdsourcing, VLDB Journal, vol.24, issue.4, pp.467-491, 2015.

S. Russell and P. Norvig, Artificial Intelligence: A Modern Approach, 2009.

T. Sagi and A. Gal, In schema matching, even experts are human: Towards expert sourcing in schema matching, Workshops Proceedings of the 30th International Conference on Data Engineering Workshops, ICDE 2014, pp.45-49, 2014.

A. Sandryhaila and J. M. Moura, Discrete signal processing on graphs, IEEE Transactions on Signal Processing, vol.61, issue.7, pp.1644-1656, 2013.

H. Schmitz and I. Lykourentzou, Online sequencing of non-decomposable macrotasks in expert crowdsourcing, Trans. Soc. Comput, vol.1, issue.1, p.33, 2018.

G. Seni and J. Elder, Ensemble Methods in Data Mining: Improving Accuracy Through Combining Predictions, 2010.

C. E. Shannon, A mathematical theory of communication, The Bell System Technical Journal, vol.27, issue.3, pp.379-423, 1948.

P. Amit and . Sheth, Panel: Data semantics: What, where and how?, Proceedings of the Sixth IFIP TC-2 Working Conference on Data Semantics: Database Applications Semantics, DS-6, pp.601-610, 1996.

D. I. Shuman, S. K. Narang, P. Frossard, A. Ortega, and P. Vandergheynst, The emerging field of signal processing on graphs: Extending high-dimensional data analysis to networks and other irregular domains, IEEE Signal Processing Magazine, vol.30, issue.3, pp.83-98, 2013.

L. Steels, Semiotic dynamics for embodied agents, IEEE Intelligent Systems, vol.21, issue.3, pp.32-38, 2006.

S. Tranquillini, F. Daniel, P. Kucherbaev, and F. Casati, Modeling, enacting, and integrating custom crowdsourcing processes, ACM Trans. Web, vol.9, issue.2, 2015.

A. M. , Turing. I.-Computing machinery and intelligence, vol.10, p.1950

S. Ullmann, Grundzüge der Semantik, 1967.

M. Vaccaro and J. Waldo, The effects of mixing machine learning and human judgment, Commun. ACM, vol.62, issue.11, pp.104-110, 2019.

D. Vandic, F. Frasincar, U. Kaymak, and M. Riezebos, Scalable entity resolution for web product descriptions, Information Fusion, vol.53, pp.103-111, 2020.

G. Wiederhold, Value-added mediation in large-scale information systems, Database Applications Semantics, Proceedings of the Sixth IFIP TC-2 Working Conference on Data Semantics (DS-6), pp.34-56, 1995.

L. Wittgenstein, Philosophical investigations, 1953.

W. Woods, What's in a link: Foundations for semantic networks. Representation and Understanding, vol.11, p.1975

Z. Wu and M. Palmer, Verb semantics and lexical selection, Proceedings of the 32nd Annual meeting of the Associations for Computational Linguistics, pp.133-138, 1994.

T. Yan and V. Kumar, CrowdSearch: exploiting crowds for accurate real-time image search on mobile phones, MobiSys, pp.77-90, 2010.

Z. Surender-reddy-yerva, K. Miklós, and . Aberer, It was easy, when apples and blackberries were only fruits, Third WePS Evaluation Workshop: Searching Information about Entities in the Web, CLEF (Notebook Papers/LABs/Workshops), 2010.

Z. Surender-reddy-yerva, K. Miklós, and . Aberer, Towards better entity resolution techniques for Web document collections, 1st International Workshop on Data Engineering meets the Semantic Web (DESWeb'2010) (co-located with ICDE'2010), 2010.

Z. Surender-reddy-yerva, K. Miklós, and . Aberer, What have fruits to do with technology? The case of Orange, Blackberry and Apple, International Conference on Web Intelligence, Mining and Semantics (WIMS'2011), 2011.

Z. Surender-reddy-yerva, K. Miklós, and . Aberer, Quality-aware similarity assessment for entity matching in Web data, Information Systems, vol.37, pp.336-351, 2012.

Z. Surender-reddy-yerva, F. Miklós, T. Grosan, K. Alexandru, and . Aberer, TweetSpector: Entity-based retrieval of Tweets, SIGIR'2012, 2012.

Z. Surrender-reddy-yerva, K. Miklós, and . Aberer, Entity-based Classification of Twitter Messages, International Journal of Computer Science & Applications, vol.9, issue.1, pp.88-115, 2012.

A. Zafeiris and T. Vicsek, Why We Live in Hierarchies? A Quantitative Treatise, 2018.

C. Zhang and C. Ré, Towards high-throughput gibbs sampling at scale: A study across storage managers, Proceedings of the 2013 ACM SIGMOD International Conference on Management of Data, SIGMOD '13, pp.397-408, 2013.

J. Zhang, J. Tang, and J. Li, Expert finding in a social network, Lecture Notes in Computer Science, vol.4443, pp.1066-1069

. Springer, , 2007.

S. Zhang, H. Tong, J. Xu, and R. Maciejewski, Graph convolutional networks: a comprehensive review, Computational Social Networks, vol.6, issue.1, p.11, 2019.

Y. Zheng, G. Li, Y. Li, C. Shan, and R. Cheng, Truth inference in crowdsourcing: Is the problem solved?, Proc. VLDB Endow, vol.10, pp.541-552, 2017.