Y. ;. Aggarwal, C. C. Yu, and P. S. , Online generation of association rules, Proceedings of the Fourteenth International Conference on Data Engineering, ICDE '98, pp.402-411, 1998.

. Arif, BEACON: an e cient sat-based tool for debugging EL?+ ontologies, SAT, vol.9710, pp.521-530, 2016.

F. Baader, The description logic handbook: Theory, implementation and applications, 2003.

F. Baader-;-baader, The instance problem and the most specific concept in the description logic el w.r.t. terminological cycles with descriptive semantics, 2003.

[. Baader, Pushing the EL envelope, Proceedings of IJCAI'05, 2005.

[. Baader, The description logic handbook: theory, implementation, and applications, 2010.

[. Baader, , 2017.

, An Introduction to Description Logic

M. Baader, F. Baader, and R. Molitor, Computing least common subsumers in description logics with existential restrictions, 1999.

[. Baader, Pinpointing in the description logic el. XXIII [Badea and Nienhuys-Cheng, International Conference on Inductive Logic Programming, pp.40-59, 2000.

. Berners-lee, The semantic web, Scientific american, vol.284, issue.5, pp.28-37, 2001.

. Bühmann, L. Lehmann-;-bühmann, and J. Lehmann, Universal owl axiom enrichment for large knowledge bases, International Conference on Knowledge Engineering and Knowledge Management, pp.57-71, 2012.

. Bühmann, L. Lehmann-;-bühmann, and J. Lehmann, Pattern based knowledge base enrichment, International Semantic Web Conference, pp.33-48, 2013.

C. Insaurralde and C. , Intelligent autonomy for aerospace engineering systems, pp.1-10, 2018.

[. Carlson, Toward an architecture for never-ending language learning, Twenty-Fourth AAAI Conference on Artificial Intelligence, 2010.

M. Cherkassky, V. Cherkassky, and F. M. Mulier, Learning from data: concepts, theory, and methods, 2007.

[. Chilton, Cascade: Crowdsourcing taxonomy creation, Proceedings of the SIGCHI Conference on Human Factors in Computing Systems, pp.1999-2008, 2013.

H. Cohen, W. W. Cohen, and H. Hirsh, Learning the classic description logic: Theoretical and experimental results, KR, vol.94, pp.121-133, 1994.

[. Consortium, Owl 2 web ontology language document overview, 2012.

D. Kleer, K. Kleer, J. Kurien, and J. , Fundamentals of model-based diagnosis, IFAC Proceedings Volumes, vol.36, pp.25-36, 2003.

. Dietz-saldanha, A core method for the weak completion semantics with skeptical abduction, Journal of Artificial Intelligence Research, vol.63, pp.51-86, 2018.

. Xxiv-[dittmann, , 2004.

, Performing fmea using ontologies, 18th International Workshop on Qualitative Reasoning, pp.209-216

[. Duda, Pattern classification, 2012.

[. Ebrahimipour, An ontology approach to support fmea studies, Expert Systems with Applications, vol.37, issue.1, pp.671-677, 2010.

Y. Ebrahimipour, V. Ebrahimipour, and S. Yacout, , 2015.

, Ontology-based schema to support maintenance knowledge representation with a case study of a pneumatic valve, IEEE Transactions on Systems, Man, and Cybernetics: Systems, vol.45, issue.4, pp.702-712

. Emmanouilidis, Condition monitoring based on incremental learning and domain ontology for condition-based maintenance, 11th International Conference on Advances in Production Management Systems, 2010.

[. Fanizzi, N. Fanizzi, and C. Amato, A hierarchical clustering method for semantic knowledge bases, KES, 2007.

[. Fanizzi, Conceptual clustering and its application to concept drift and novelty detection, European Semantic Web Conference, pp.318-332, 2008.

[. Fanizzi, Dlfoil concept learning in description logics, International Conference on Inductive Logic Programming, pp.107-121, 2008.

[. Fanizzi, Concept formation in expressive description logics, European Conference on Machine Learning, pp.99-110, 2004.

[. Glimm, Ontology materialization by abstraction refinement in horn shoif, Thirty-First AAAI Conference on Artificial Intelligence, 2017.

[. Goodfellow, Deep learning, 2016.

. Xxv-[ha, A bisimulation-based method of concept learning for knowledge bases in description logics, Proceedings of the Third Symposium on Information and Communication Technology, pp.241-249, 2012.

P. J. Hayes-;-hayes, The logic of frames, Readings in Artificial Intelligence, pp.451-458, 1981.

, From nasa to eu: the evolution of the trl scale in public sector innovation, The Innovation Journal, vol.22, issue.2, pp.1-23, 2017.

M. Horridge, Justification based explanation in ontologies, 2011.

[. Inokuchi, An apriori-based algorithm for mining frequent substructures from graph data, Proceedings of the 4th European Conference on Principles of Data Mining and Knowledge Discovery, PKDD '00, pp.13-23, 2000.

[. Inokuchi, Complete mining of frequent patterns from graphs: Mining graph data, Machine Learning, vol.50, issue.3, pp.321-354, 2003.

[. James, An introduction to statistical learning, DICTIONARY OF TERMS FOR SOLID-STATE TECHNOLOGY, 7th Edition. Global Standards for the Microelectronics Industry, vol.112, 2013.

[. Kalyanpur, Finding all justifications of owl dl entailments, The Semantic Web, pp.267-280, 2007.

D. Karampinas and P. Triantafillou, Crowdsourcing taxonomies, Extended Semantic Web Conference, pp.545-559, 2012.

[. Karray, , 2012.

, A formal ontology for industrial maintenance, Applied Ontology, vol.7, issue.3, pp.269-310

[. Karunaratne, Pre-processing structured data for standard machine learning algorithms by supervised graph propositionalization -a case study with medicinal XXVI chemistry datasets, Ninth International Conference on Machine Learning and Applications, pp.828-833, 2010.

[. Kazakov, Practical reasoning with nominals in the el family of description logics, Thirteenth International Conference on the Principles of Knowledge Representation and Reasoning, 2012.

[. Kazakov, Y. Skocovský-;-kazakov, and P. Skocovský, Enumerating justifications using resolution, Proceedings of IJCAR'18: the 9th International Joint Conference on Automated Reasoning, pp.609-626, 2018.

R. M. Keller-;-keller, Ontologies for aviation data management, 2016 IEEE/AIAA 35th Digital Avionics Systems Conference (DASC), pp.1-9, 2016.

. Ketkar, Subdue: Compression-based frequent pattern discovery in graph data, Proceedings of the 1st International Workshop on Open Source Data Mining: Frequent Pattern Mining Implementations, OSDM '05, pp.71-76, 2005.

M. Kietz, J. Kietz, and K. Morik, A polynomial approach to the constructive induction of structural knowledge, Machine Learning, vol.14, issue.2, pp.193-217, 1994.

[. Kontchakov, The combined approach to ontology-based data access, IJCAI 2011, Proceedings of the 22nd International Joint Conference on Artificial Intelligence, pp.2656-2661, 2011.

O. Gray-;-lee and P. Gray, Knowledge base clustering for kbs maintenance, Journal of Software Maintenance: Research and Practice, vol.10, issue.6, pp.395-414, 1998.

F. Lehmann, Semantic networks in artificial intelligence, 1992.

J. Lehmann, Dl-learner: learning concepts in description logics, Journal of Machine Learning Research, vol.10, pp.2639-2642, 2009.

[. Lehmann, Class expression learning for ontology engineering, Web Semantics: Science, Services and Agents on the World Wide Web, vol.9, issue.1, pp.71-81, 2011.

. Xxvii-[lehmann, J. Haase-;-lehmann, and C. Haase, Ideal downward refinement in the\ mathcal {EL} description logic, International Conference on Inductive Logic Programming, pp.73-87, 2009.

H. Lehmann, J. Lehmann, and P. Hitzler, Concept learning in description logics using refinement operators, Machine Learning, vol.78, p.203, 2010.

[. Lehmann, , 2017.

C. N. , Distributed semantic analytics using the sansa stack, International Semantic Web Conference, pp.147-155, 2017.

. Lehmann, J. Voelker-;-lehmann, and J. Voelker, An introduction to ontology learning, Perspectives on Ontology Learning, 2014.

. Lehmann, J. Völker-;-lehmann, and J. Völker, Perspectives on ontology learning, vol.18, 2014.

. Lisi, F. A. Esposito-;-lisi, and F. Esposito, Nonmonotonic onto-relational learning, International Conference on Inductive Logic Programming, pp.88-95, 2009.

M. Minsky and H. Motoda, Pattern Discovery from Graph-Structured Data -A Data Mining Perspective, pp.12-22, 1974.

L. A. Nguyen and A. Sza-las, Logic-based roughification. Rough Sets and Intelligent Systems-Professor Zdzis law Pawlak in Memoriam, pp.517-543, 2013.

-. Nienhuys, D. Wolf, ;. Nienhuys-cheng, S. Wolf, and R. , Foundations of inductive logic programming, vol.1228, 1997.

A. Nowak-brzezi?ska-;-nowak-brzezi?ska, Mining rule-based knowledge bases inspired by rough set theory, Fundamenta Informaticae, vol.148, issue.1-2, pp.35-50, 2016.

D. Olson, D. L. Olson, and D. Delen, Advanced data mining techniques, 2008.

. [palacios-medinacelli, Knowledge discovery for avionics maintenance support, 2018 IEEE/AIAA 37th Digital Avionics Systems Conference (DASC), pp.1-8, 2018.

. [palacios-medinacelli, Avionics maintenance ontology building for failure diagnosis support, Proceedings of the 8th International Joint Conference on Knowledge Discovery, Knowledge Engineering and Knowledge Management, pp.204-209, 2016.

. [palacios-medinacelli, Data driven concept refinement to support avionics maintenance, Proceedings of the IJCAI Workshop on Semantic Machine Learning, 2017.
URL : https://hal.archives-ouvertes.fr/hal-01632675

W. Pedrycz, Knowledge-based clustering: from data to information granules, 2005.

R. Peñaloza and A. Turhan, Towards approximative most specific concepts by completion for el with subjective probabilities, 2010.

M. R. Quillian, Word concepts: A theory and simulation of some basic semantic capabilities, Behavioral science, vol.12, issue.5, pp.410-430, 1967.

T. ;. Ratcli?e, D. Ratcli?e, and K. Taylor, Refinementbased owl class induction with convex measures, Joint International Semantic Technology Conference, pp.49-65, 2017.

T. Regal and C. Pereira, Building an ontology for intelligent maintenance systems and spare parts supply chain integration, IFAC Proceedings Volumes (IFAC-PapersOnline), vol.19, pp.7843-7848, 2014.

. Simperl, Ontocom: A reliable cost estimation method for ontology development projects, Web Semantics: Science, Services and Agents on the World Wide Web, vol.16, pp.1-16, 2012.

J. F. Sowa, , 1987.

[. Tran, Concept learning for description logic-based information systems, Knowledge and Systems Engineering (KSE), 2012 Fourth International Conference on, pp.65-73, 2012.

. Xxix-[tran, Bisimulation-based concept learning for information systems in description logics, Vietnam Journal of Computer Science, vol.2, issue.3, pp.149-167, 2015.

J. Völker, M. Niepert, and . Wu, Ontologybased modeling of aircraft to support maintenance management system, IIE Annual Conference. Proceedings, page 1159. Institute of Industrial and Systems Engineers (IISE), pp.124-138, 2011.

Y. , H. Yan, X. Han, and J. , Closegraph: Mining closed frequent graph patterns, Proceedings of the Ninth ACM SIGKDD International Conference on Knowledge Discovery and Data Mining, KDD '03, pp.286-295, 2003.

Y. , , 2014.

, Embedding entities and relations for learning and inference in knowledge bases

[. Yoshida, Graphbased induction as a unified learning framework, Applied Intelligence, vol.4, issue.3, pp.297-316, 1994.