, T2>T+365 . Listing 5.1: Recognition of stable patients

X. , Y. , and L. B. , map(X, T1 ) , map(Y, T2) , T2>UB+T1, vol.6, pp.2-3

A. Achar, S. Laxman, and P. S. Sastry, A unified view of automata-based algorithms for frequent episode discovery, 2010.

A. Adam, H. Blockeel, S. Govers, A. , and A. , Sccql: A constraint-based clustering system, Joint European Conference on Machine Learning and Knowledge Discovery in Databases, pp.681-684, 2013.

R. Agrawal, J. Gehrke, D. Gunopulos, and P. Raghavan, Automatic subspace clustering of high dimensional data, Data Mining and Knowledge Discovery, vol.11, issue.1, pp.5-33, 2005.

R. Agrawal, T. Imielinski, and A. Swami, Mining association rules between sets of items in large databases, Proceedings of the ACM SIGMOD Conference on Management of Data, pp.207-216, 1993.

R. Agrawal and R. Srikant, Fast algorithms for mining association rules, Proceedings of the 20th Internationnal Conference in Very Large Databases, pp.487-499, 1994.

R. Agrawal and R. Srikant, Mining sequential patterns, Proceedings of the International Conference on Data Engineering, pp.3-14, 1995.

J. Allen, Towards a general theory of action and time, Artificial Intelligence, vol.23, pp.123-154, 1984.

M. R. Alvarez, P. Felix, and P. Carinena, Discovering metric temporal constraint networks on temporal databases, Artificial Intelligence in Medicine, vol.58, issue.3, pp.139-154, 2013.

G. Amendola, Towards quantified answer set programming, RCRA@ FLoC, 2018.

S. Andrews, I. Tsochantaridis, and T. Hofmann, Support vector machines for multipleinstance learning, Advances in neural information processing systems, pp.577-584, 2003.

D. Anicic, P. Fodor, S. Rudolph, R. Stühmer, N. Stojanovic et al., ETALIS: Rule-based reasoning in event processing, Proceedings of Reasoning in event-based distributed systems, pp.99-124, 2011.

A. Artale, R. Kontchakov, A. Kovtunova, V. Ryzhikov, F. Wolter et al., Ontology-mediated query answering over temporal data: A survey (invited talk), 24th International Symposium on Temporal Representation and Reasoning, 2017.

E. Bacry, S. Gaffas, F. Leroy, M. Morel, D. P. Nguyen et al., Scalpel3: a scalable open-source library for healthcare claims databases, 2019.
URL : https://hal.archives-ouvertes.fr/hal-02409058

J. Bakalara, Temporal models of care sequences for the exploration of medico-administrative data, Proceedings of the 17th Conference on Artificial Intelligence in Medicine (AIME), pp.1-7, 2019.
URL : https://hal.archives-ouvertes.fr/hal-02265743

P. Balbiani and J. Condotta, Computational complexity of propositional linear temporal logics based on qualitative spatial or temporal reasoning, International Workshop on Frontiers of Combining Systems, pp.162-176, 2002.

C. Barrett and C. Tinelli, Satisfiability modulo theories, Handbook of Model Checking, pp.305-343, 2018.
URL : https://hal.archives-ouvertes.fr/hal-01095009

S. D. Bay and M. J. Pazzani, Detecting group differences: Mining contrast sets, Data Mining and Knowledge Discovery, vol.5, issue.3, pp.213-246, 2001.

P. Besnard and T. Guyet, , 2019.

P. Besnard, T. Guyet, and V. Masson, Admissible generalizations of examples as rules, Proceedings of the International Conference on Tools with Artificial Intelligence (ICTAI), pp.1480-1485, 2019.
URL : https://hal.archives-ouvertes.fr/hal-02267166

M. Bienvenu, Ontology-mediated query answering: harnessing knowledge to get more from data, IJCAI: International Joint Conference on Artificial Intelligence, 2016.
URL : https://hal.archives-ouvertes.fr/lirmm-01367866

A. Biere, M. Heule, H. Van-maaren, and T. Walsh, Handbook of satisfiability, Frontiers in Artificial Intelligence and Applications, vol.185, 2009.

C. Biernacki, G. Celeux, G. Govaert, and F. Langrognet, Model-based cluster and discriminant analysis with the MIXMOD software, Computational Statistics and Data Analysis, vol.51, issue.2, pp.587-600, 2006.
URL : https://hal.archives-ouvertes.fr/inria-00069878

S. Bistarelli and F. Bonchi, Soft constraint based pattern mining, Data & Knowledge Engineering, vol.62, issue.1, pp.118-137, 2007.

H. Blockeel, D. Page, and A. Srinivasan, Multi-instance tree learning, Proceedings of the 22nd international conference on Machine learning, pp.57-64, 2005.

F. Bonchi, F. Giannotti, C. Lucchese, S. Orlando, R. Perego et al., Conquest: a constraint-based querying system for exploratory pattern discovery, Proceedings of the International Conference on Data Engineering, pp.159-159, 2006.

G. Bosc, J. Boulicaut, C. Raïssi, and M. Kaytoue, Anytime discovery of a diverse set of patterns with monte carlo tree search, Data Mining and Knowledge Discovery, vol.32, issue.3, pp.604-650, 2018.
URL : https://hal.archives-ouvertes.fr/hal-01418663

J. Boulicaut and B. Jeudy, Constraint-based data mining, The Data Mining and Knowledge Discovery Handbook, pp.399-416, 2005.
URL : https://hal.archives-ouvertes.fr/hal-00567915

M. Boullé, A parameter-free classification method for large scale learning, J. Mach. Learn. Res, vol.10, pp.1367-1385, 2009.

M. Boullé, C. Charnay, and N. Lachiche, A scalable robust and automatic propositionalization approach for bayesian classification of large mixed numerical and categorical data, Machine Learning, vol.108, pp.229-266, 2019.

G. Brewka, J. P. Delgrande, J. Romero, and T. Schaub, asprin: Customizing answer set preferences without a headache, Proceedings of the Conference on Artificial Intelligence (AAAI), pp.1467-1474, 2015.
URL : https://hal.archives-ouvertes.fr/hal-01187001

B. Bringmann, S. Nijssen, and A. Zimmermann, Pattern-based classification: a unifying perspective, Proceedings of the 2nd workshop 'From Local Patterns to Global Models, p.10, 2009.

P. Cabalar, R. P. Otero, and S. G. Pose, Temporal constraint networks in action, ECAI, pp.543-547, 2000.

L. Cao, X. Dong, and Z. Zheng, e-nsp: Efficient negative sequential pattern mining, Artificial Intelligence, vol.235, pp.156-182, 2016.

L. Cao, P. S. Yu, and V. Kumar, Nonoccurring behavior analytics: A new area, IEEE Intelligent Systems, vol.15, pp.4-11, 2015.

H. Cheng, X. Yan, and J. Han, Incspan: incremental mining of sequential patterns in large database, Proceedings of the tenth ACM SIGKDD international conference on Knowledge discovery and data mining, pp.527-532, 2004.

L. Chittaro and A. Montanari, Temporal representation and reasoning in artificial intelligence: Issues and approaches, Annals of Mathematics and Artificial Intelligence, vol.28, pp.47-106, 2000.

B. Chiu, E. Keogh, and S. Lonardi, Probabilistic discovery of time series motifs, Proceedings of the 9th International Conference on Knowledge Discovery and Data Mining, pp.493-498, 2003.

E. M. Clarke, O. Grumberg, D. Kroening, D. Peled, and H. Veith, Model checking, 2018.

W. W. Cohen, Fast effective rule induction, Proceedings of the International Conference on Machine Learning, pp.115-123, 1995.

S. Cohen-boulakia, K. Belhajjame, O. Collin, J. Chopard, C. Froidevaux et al., Scientific workflows for computational reproducibility in the life sciences: Status, challenges and opportunities, Future Generation Computer Systems, vol.75, pp.284-298, 2017.
URL : https://hal.archives-ouvertes.fr/hal-01516082

S. Colas, C. Collin, P. Piriou, and M. Zureik, Association between total hip replacement characteristics and 3-year prosthetic survivorship: A population-based study, JAMA Surgery, vol.150, issue.10, pp.979-988, 2015.

C. Combi and L. Chittaro, Abstraction on clinical data sequences: an object-oriented data model and a query language based on the event calculus, Artificial Intelligence in Medicine, vol.17, issue.3, pp.271-301, 1999.

C. Combi, M. Franceschet, and A. Peron, Representing and reasoning about temporal granularities, Journal of Logic and Computation, vol.14, issue.1, pp.51-77, 2004.

C. Combi, E. Keravnou-papailiou, and Y. Shahar, Temporal information systems in medicine, 2010.

E. Coquery, S. Jabbour, L. Saïs, and Y. Salhi, A SAT-Based approach for discovering frequent, closed and maximal patterns in a sequence, Proceedings of European Conference on Artificial Intelligence (ECAI), pp.258-263, 2012.
URL : https://hal.archives-ouvertes.fr/hal-00865559

D. Cram, B. Mathern, and A. Mille, A complete chronicle discovery approach: application to activity analysis, Expert Systems, vol.29, issue.4, pp.321-346, 2012.
URL : https://hal.archives-ouvertes.fr/hal-01354577

T. Dao, C. Kuo, S. S. Ravi, C. Vrain, D. et al., Descriptive clustering: ILP and CP formulations with applications, Proceedings of the Twenty-Seventh International Joint Conference on Artificial Intelligence (IJCAI), pp.1263-1269, 2018.
URL : https://hal.archives-ouvertes.fr/hal-01784499

Y. Dauxais, Discriminant chronicle mining, 2018.
URL : https://hal.archives-ouvertes.fr/hal-01940146

Y. Dauxais, D. Gross-amblard, T. Guyet, and A. Happe, Discriminant chronicle mining, Advances in Knowledge Discovery and Management, vol.8, pp.89-118, 2019.
URL : https://hal.archives-ouvertes.fr/hal-01940146

T. De-bie, Subjective interestingness in exploratory data mining, Advances in Intelligent Data Analysis XII, pp.19-31, 2013.

T. De-bie and E. Spyropoulou, A theoretical framework for exploratory data mining: recent insights and challenges ahead, Machine Learning and Knowledge Discovery in Databases, pp.612-616, 2013.

L. De-raedt, Declarative modeling for machine learning and data mining, International Conference on Formal Concept Analysis, pp.2-2, 2012.

L. De-raedt, H. Blockeel, S. Kolb, S. Teso, and G. Verbruggen, Elements of an automatic data scientist, International Symposium on Intelligent Data Analysis, pp.3-14, 2018.

R. Dechter, I. Meiri, and J. Pearl, Temporal constraint networks, Artificial intelligence, vol.49, pp.61-95, 1991.

S. Dermouche and C. Pelachaud, Sequence-based multimodal behavior modeling for social agents, Proceedings of the 18th ACM International Conference on Multimodal Interaction, ICMI 2016, pp.29-36, 2016.

L. Diop, C. T. Diop, A. Giacometti, D. Li, and A. Soulet, Sequential pattern sampling with norm constraints, 2018 IEEE International Conference on Data Mining (ICDM), pp.89-98, 2018.
URL : https://hal.archives-ouvertes.fr/hal-01889230

G. Dong and J. Li, Efficient mining of emerging patterns: Discovering trends and differences, Proceedings of ACM SIGKDD, pp.43-52, 1999.

D. Dou, H. Wang, and H. Liu, Semantic data mining: A survey of ontology-based approaches, Proceedings of the 9th international conference on semantic computing, pp.244-251, 2015.

C. Dousson and T. Duong, Discovering chronicles with numerical time constraints from alarm logs for monitoring dynamic systems, Proceedings of the 16th International Joint Conference on Artificial Intelligence, pp.620-626, 1999.

C. Dousson and P. L. Maigat, Chronicle recognition improvement using temporal focusing and hierarchization, Proceedings of the 20th International Joint Conference on Artificial Intelligence (IJCAI), pp.324-329, 2007.

E. Egho, D. Gay, M. Boull, N. Voisine, and F. Clrot, A parameter-free approach for mining robust sequential classification rules, 2015 IEEE International Conference on Data Mining, pp.745-750, 2015.
URL : https://hal.archives-ouvertes.fr/hal-01395002

J. Euzenat and A. Montanari, Chapter 3 -time granularity, Foundations of Artificial Intelligence, vol.1, pp.59-118, 2005.

C. Ezeife and M. Monwar, A PLWAP-based algorithm for mining frequent sequential stream patterns, International Journal of Information Technology and Intelligent Computing, vol.2, issue.1, pp.89-116, 2007.

U. Fayyad, G. Piatetsky-shapiro, and P. Smyth, From data mining to knowledge discovery in databases, AI magazine, vol.17, issue.3, p.37, 1996.

M. Feurer and F. Hutter, Hyperparameter optimization, pp.3-33, 2019.

M. Feurer, A. Klein, K. Eggensperger, J. T. Springenberg, M. Blum et al., Auto-sklearn: Efficient and robust automated machine learning, pp.113-134, 2019.

P. Fournier-viger, J. Lin, A. Gomariz, T. Gueniche, A. Soltani et al., The spmf open-source data mining library version 2, Joint European conference on machine learning and knowledge discovery in databases, pp.36-40, 2016.

P. Fournier-viger, J. Lin, R. U. Kiran, Y. S. Koh, T. et al., A survey of sequential pattern mining, Data Science and Pattern Recognition, vol.1, issue.1, pp.54-77, 2017.

D. Fradkin and F. Mörchen, Mining sequential patterns for classification, Knowledge and Information Systems, vol.45, issue.3, pp.731-749, 2015.

B. J. Frey and D. Dueck, Clustering by passing messages between data points, Science, vol.315, issue.5814, pp.972-976, 2007.

T. Froese and T. Ziemke, Enactive artificial intelligence: Investigating the systemic organization of life and mind, Artificial Intelligence, vol.173, issue.3, pp.466-500, 2009.

T. Furche, G. Gottlob, L. Libkin, G. Orsi, P. et al., Data wrangling for big data: Challenges and opportunities, EDBT, pp.473-478, 2016.

M. Garofalakis, R. Rastogi, and K. Shim, SPIRIT: Sequential pattern mining with regular expression constraints, Proceedings of the International Conference on Very Large Data Bases, pp.223-234, 1999.

M. Gebser, R. Kaminski, B. Kaufmann, M. Ostrowski, T. Schaub et al., Potassco: The Potsdam answer set solving collection, AI Communications, vol.24, issue.2, pp.107-124, 2011.

M. Gelfond and V. Lifschitz, Classical negation in logic programs and disjunctive databases, New Generation Computing, vol.9, pp.365-385, 1991.

M. Gerbser, T. Guyet, R. Quiniou, J. Romero, and T. Schaub, Knowledge-based sequence mining with ASP, Proceedings of Internation Join Conference on Artificial Intelligence (IJCAI), pp.1497-1504, 2016.

F. Giannotti, M. Nanni, D. Pedreschi, and F. Pinelli, Mining sequences with temporal annotations, Proceedings of the Symposium on Applied Computing, pp.593-597, 2006.

N. Giatrakos, A. Artikis, A. Deligiannakis, and M. Garofalakis, Complex event recognition in the big data era, Proc. VLDB Endow, vol.10, issue.12, pp.1996-1999, 2017.

A. Gomariz, Techniques for the Discovery of Temporal Patterns, 2014.

T. Guns, A. Dries, S. Nijssen, G. Tack, D. Raedt et al., MiningZinc: A declarative framework for constraint-based mining, Artificial Intelligence, 2015.

T. Guyet, Interprétation collaborative de séries temporelles, 2007.

T. Guyet, Semantic(s) of negative sequential patterns, Actes des Journées d'Intelligence Artificielle Fondamentale (IAF), 2019.
URL : https://hal.archives-ouvertes.fr/hal-02188501

T. Guyet, P. Besnard, A. Samet, N. Ben-salha, and N. Lachiche, Énumération des occurrences d'une chronique, Actes de la conférence Extraction et Gestion des Connaissances (EGC), pp.253-260, 2020.

T. Guyet, Y. Dauxais, and A. Happe, Declarative sequential pattern mining of care pathways, Proceedings of Conference on Artificial Intelligence in Medicine (AIME), pp.261-266, 2017.
URL : https://hal.archives-ouvertes.fr/hal-01569023

T. Guyet and R. Quiniou, Mining temporal patterns with quantitative intervals, Proceedings of the 4th International Workshop on Mining Complex Data, p.10, 2008.
URL : https://hal.archives-ouvertes.fr/hal-00431445

T. Guyet and R. Quiniou, Extracting temporal patterns from interval-based sequences, Proceedings of International Join Conference on Artificial Intelligence (IJCAI), pp.1306-1311, 2011.
URL : https://hal.archives-ouvertes.fr/inria-00618444

T. Guyet and R. Quiniou, Incremental mining of frequent sequences from a window sliding over a stream of itemsets, Actes des Journée Intelligence Artificielle Fondamentale (IAF), p.9, 2012.
URL : https://hal.archives-ouvertes.fr/hal-00757120

T. Guyet and R. Quiniou, NegPSpan: efficient extraction of negative sequential patterns with embedding constraints, Data Mining and Knowledge Discovery, vol.34, issue.2, pp.563-609, 2020.
URL : https://hal.archives-ouvertes.fr/hal-01743975

T. Guyet, R. Quiniou, and V. Masson, Mining relevant interval rules, International Conference on Formal Concept Analysis, Supplementary proceedings of International Conference on Formal Concept Analysis (ICFCA), 2017.
URL : https://hal.archives-ouvertes.fr/hal-01584981

T. Guyet, R. Quiniou, Y. Moinard, and T. Schaub, Efficiency analysis of ASP encodings for sequential pattern mining tasks, Advances in Knowledge Discovery and Management, vol.7, pp.41-81, 2017.
URL : https://hal.archives-ouvertes.fr/hal-01631879

J. Han, J. Pei, B. Mortazavi-asl, Q. Chen, U. Dayal et al., FreeSpan: frequent pattern-projected sequential pattern mining, Proceedings of the sixth ACM SIGKDD international conference on Knowledge discovery and data mining, pp.355-359, 2000.

A. Happe and E. Drezen, A visual approach of care pathways from the French nationwide SNDS database -from population to individual records: the ePEPS toolbox, Fundamental and Clinical Pharmacology, vol.32, issue.1, pp.81-84, 2018.
URL : https://hal.archives-ouvertes.fr/hal-01697626

M. Hassani, Y. Lu, J. Wischnewsky, and T. Seidl, A geometric approach for mining sequential patterns in interval-based data streams, 2016 IEEE International Conference on, pp.2128-2135, 2016.

S. Hercberg, K. Castetbon, S. Czernichow, A. Malon, C. Mejean et al., The nutrinet-santé study: a web-based prospective study on the relationship between nutrition and health and determinants of dietary patterns and nutritional status, BMC public health, vol.10, issue.1, p.242, 2010.

Y. Hirate and H. Yamana, Generalized sequential pattern mining with item intervals, Journal of computers, vol.1, issue.3, pp.51-60, 2006.

C. Ho, H. Li, F. Kuo, and S. Lee, Incremental mining of sequential patterns over a stream sliding window, IWMESD Workshop at ICDM, pp.677-681, 2006.

F. Höppner, Learning dependencies in multivariate time series, Proceedings of the Workshop on Knowledge Discovery in (Spatio-)Temporal Data, pp.25-31, 2002.

S. Hsueh, M. Lin, C. , and C. , Mining negative sequential patterns for ecommerce recommendations, Proceedings of Asia-Pacific Services Computing Conference, pp.1213-1218, 2008.

J. Huang, C. Tseng, J. Ou, and M. Chen, On progressive sequential pattern mining, Proceedings of the 15th ACM international conference on Information and knowledge management, CIKM '06, pp.850-851, 2006.

Z. Huang, X. Lu, and H. Duan, On mining clinical pathway patterns from medical behaviors, Artificial Intelligence in Medicine, vol.56, issue.1, pp.35-50, 2012.

F. Hutter, L. Kotthoff, and J. Vanschoren, Automated Machine Learning -Methods, Systems, Challenges. The Springer Series on Challenges in Machine Learning, 2019.

S. Hwang, C. Wei, Y. , and W. , Discovery of temporal patterns from process instances, Computers in Industry, vol.53, issue.3, pp.345-364, 2004.

A. Irpino and R. Verde, Dynamic clustering of interval data using a wasserstein-based distance, Pattern Recogn. Lett, vol.29, issue.11, pp.1648-1658, 2008.

S. Jabbour, F. E. Mana, I. O. Dlala, B. Raddaoui, and L. Sais, On maximal frequent itemsets mining with constraints, International Conference on Principles and Practice of Constraint Programming, pp.554-569, 2018.
URL : https://hal.archives-ouvertes.fr/hal-01870256

S. Jabbour, L. Sais, and Y. Salhi, Boolean satisfiability for sequence mining, Proceedings of the 22nd ACM international conference on Information & Knowledge Management, pp.649-658, 2013.

T. Janhunen and I. Niemelä, The answer set programming paradigm, vol.37, pp.13-24, 2016.

M. Järvisalo, Itemset mining as a challenge application for answer set enumeration, Proceedings of the conference on Logic Programming and Nonmonotonic Reasoning, pp.304-310, 2011.

P. Kam, A. W. Fu, and .. , Discovering temporal patterns for interval-based events, Data Warehousing and Knowledge Discovery (DaWaK), pp.317-326, 2000.

S. Kamepalli, R. Sekhara, and R. Kurra, Frequent Negative Sequential Patterns -a Survey, International Journal of Computer Engineering and Technology, vol.5, pp.115-121, 2014.

M. Kaytoue, S. O. Kuznetsov, and A. Napoli, Revisiting numerical pattern mining with formal concept analysis, Twenty-Second International Joint Conference on Artificial Intelligence, 2011.
URL : https://hal.archives-ouvertes.fr/inria-00600222

A. Kemmar, S. Loudni, Y. Lebbah, P. Boizumault, and T. Charnois, Prefix-projection global constraint for sequential pattern mining, International Conference on Principles and Practice of Constraint Programming, pp.226-243, 2015.
URL : https://hal.archives-ouvertes.fr/hal-01628152

T. Kim, J. Lee, and R. Palla, Circumscriptive event calculus as answer set programming, Proceedings of the Twenty-First International Joint Conference on Artificial Intelligence, 2009.

Y. S. Koh and S. D. Ravana, Unsupervised rare pattern mining: A survey, Transactions on Knowledge Discovery from Data, vol.10, issue.4, pp.1-29, 2016.

K. Kontonasios, E. Spyropoulou, and T. D. Bie, Knowledge discovery interestingness measures based on unexpectedness, Wiley Interdisciplinary Reviews: Data Mining and Knowledge Discovery, vol.2, issue.5, pp.386-399, 2012.

L. Kotthoff, C. Thornton, H. H. Hoos, F. Hutter, and K. Leyton-brown, Auto-weka: Automatic model selection and hyperparameter optimization in WEKA, pp.81-95, 2019.

A. Lallouet, Y. Moinard, P. Nicolas, I. ;. Stéphan, O. Papini et al., Programmation logique, Panorama de l'intelligence artificielle : ses bases méthodologiques, ses développements, vol.2, 2013.
URL : https://hal.archives-ouvertes.fr/hal-00758896

H. T. Lam, F. Mrchen, D. Fradkin, and T. Calders, Mining compressing sequential patterns. Statistical Analysis and Data Mining, The ASA Data Science Journal, vol.7, issue.1, pp.34-52, 2014.

S. Laxman and P. S. Sastry, A survey of temporal data mining, Sadhana, vol.31, issue.2, pp.173-198, 2006.

S. Laxman, P. S. Sastry, and K. P. Unnikrishnan, A fast algorithm for finding frequent episodes in event streams, Proceedings of the 13th ACM SIGKDD international conference on Knowledge discovery and data mining, pp.410-419, 2007.

S. D. Lee and L. De-raedt, Database support for data mining applications: discovering knowledge with inductive queries, chapter Constraint based mining of first order sequences in SeqLog, pp.154-173, 2004.

C. Lefèvre and P. Nicolas, The first version of a new ASP solver: ASPeRiX, Proceedings of the conference on Logic Programming and Nonmonotonic Reasoning, pp.522-527, 2009.

N. Leone, G. Pfeifer, W. Faber, T. Eiter, G. Gottlob et al., The DLV system for knowledge representation and reasoning, ACM Trans. Comput. Logic, vol.7, issue.3, pp.499-562, 2006.

H. J. Levesque, Knowledge representation and reasoning, Annual review of computer science, vol.1, issue.1, pp.255-287, 1986.

L. Lhote, Number of frequent patterns in random databases, Advances in Data Analysis, pp.33-45, 2010.
URL : https://hal.archives-ouvertes.fr/hal-01082026

V. Lifschitz, What is answer set programming?, Proceedings of the Conference on Artificial Intelligence (AAAI), pp.1594-1597, 2008.

J. Liu, E. Pacitti, P. Valduriez, and M. Mattoso, A survey of data-intensive scientific workflow management, Journal of Grid Computing, vol.13, issue.4, pp.457-493, 2015.
URL : https://hal.archives-ouvertes.fr/lirmm-01144760

J. Liu, E. Pacitti, P. Valduriez, and M. Mattoso, A survey of data-intensive scientific workflow management, Journal of Grid Computing, vol.13, issue.4, pp.457-493, 2015.
URL : https://hal.archives-ouvertes.fr/lirmm-01144760

D. Long, A review of temporal logics, The Knowledge Engineering Review, vol.4, issue.2, pp.141-162, 1989.

C. Low-kam, C. Raïssi, M. Kaytoue, P. , and J. , Mining statistically significant sequential patterns, Proceedings of the IEEE International Conference on Data Mining, pp.488-497, 2013.
URL : https://hal.archives-ouvertes.fr/hal-00922255

H. Mannila, H. Toivonen, and A. I. Verkamo, Discovering frequent episodes in event sequences, Journal of Data Mining and Knowledge Discovery, vol.1, issue.3, pp.210-215, 1997.

K. Martin-latry and B. Bégaud, Pharmacoepidemiological research using french reimbursement databases: yes we can! Pharmacoepidemiology and drug safety, vol.19, pp.256-265, 2010.

F. Masseglia, P. Poncelet, and M. Teisseire, Efficient mining of sequential patterns with time constraints: Reducing the combinations, Expert Systems With Applications, vol.40, issue.3, 2008.
URL : https://hal.archives-ouvertes.fr/lirmm-00272632

R. Mathonat, D. Nurbakova, J. Boulicaut, and M. Kaytoue, SeqScout: Using a Bandit Model to Discover Interesting Subgroups in Labeled Sequences, IEEE International Conference on Data Science and Advanced Analytics (DSAA), 2019.
URL : https://hal.archives-ouvertes.fr/hal-02282082

D. Mcdermott, A temporal logic for reasoning about processes and plans, Cognitive Science, vol.6, pp.101-155, 1982.

J. Métivier, S. Loudni, and T. Charnois, A constraint programming approach for mining sequential patterns in a sequence database, Proceedings of the Workshops of the European Conference on Machine Learning and Principles and Practice of Knowledge Discovery in Databases (ECML/PKDD), 2013.

T. Mitsa, Temporal data mining, 2010.

C. H. Mooney and J. F. Roddick, Sequential pattern mining -approaches and algorithms, ACM Journal of Computing Survey, vol.45, issue.2, pp.1-39, 2013.

R. Moskovitch and Y. Shahar, Fast time intervals mining using the transitivity of temporal relations, Knowledge and Information Systems, vol.42, issue.1, pp.21-48, 2015.

S. Muggleton and L. De-raedt, Inductive logic programming: Theory and methods, The Journal of Logic Programming, vol.19, pp.629-679, 1994.

M. Mugnier, Reasoning on data: the ontology-mediated query answering problem, Handbook of the 6th World Congress and School on Universal Logic, p.76, 2018.

H. Nagesh, S. Goil, and A. Choudhary, Parallel algorithms for clustering high-dimensional large-scale datasets, Data mining for scientific and engineering applications, pp.335-356, 2001.

R. L. Grossman, C. Kamath, P. Kegelmeyer, . Kumar, . Vipin et al.,

B. Negrevergne, A. Dries, T. Guns, and S. Nijssen, Dominance programming for itemset mining, Proceedings of the International Conference on Data Mining, pp.557-566, 2013.

B. Negrevergne and T. Guns, Constraint-based sequence mining using constraint programming, Proceedings of International Conference on Integration of AI and OR Techniques in Constraint Programming, pp.288-305, 2015.

P. K. Novak, N. Lavra?, and G. I. Webb, Supervised descriptive rule discovery: A unifying survey of contrast set, emerging pattern and subgroup mining, Journal of Machine Learning Research, vol.10, pp.377-403, 2009.

E. Nowak, A. Happe, J. Bouget, F. Paillard, C. Vigneau et al., Safety of fixed dose of antihypertensive drug combinations compared to (single pill) free-combinations: A nested matched case-control analysis, Medicine, vol.94, issue.49, p.2229, 2015.
URL : https://hal.archives-ouvertes.fr/hal-01255858

J. Ouaknine and J. Worrell, Some recent results in metric temporal logic, International Conference on Formal Modeling and Analysis of Timed Systems, pp.1-13, 2008.

M. J. Oconnor, R. D. Shankar, D. B. Parrish, and A. K. Das, Knowledge-data integration for temporal reasoning in a clinical trial system, International journal of medical informatics, vol.78, pp.77-85, 2009.

P. Papapetrou, G. Kollios, S. Sclaroff, G. , and D. , Mining frequent arrangements of temporal intervals, Knowledge and Information Systems, vol.21, issue.2, p.133, 2009.

D. Patel, W. Hsu, and M. L. Lee, Mining relationships among interval-based events for classification, Proceedings of the 2008 ACM SIGMOD international conference on Management of data, pp.393-404, 2008.

J. Pei, J. Han, B. Mortazavi-asl, H. Pinto, Q. Chen et al., PrefixSpan: Mining sequential patterns efficiently by prefix-projected pattern growth, p.215, 2001.

J. Pei, J. Han, B. Mortazavi-asl, J. Wang, H. Pinto et al., Mining Sequential Patterns by Pattern-Growth: The PrefixSpan Approach, IEEE Transactions on knowledge and data engineering, vol.16, issue.11, pp.1424-1440, 2004.

J. Pei, J. Han, W. , and W. , Constraint-based sequential pattern mining: The patterngrowth methods, Journal of Intelligent Information Systems, vol.28, issue.2, pp.133-160, 2007.

A. Perer and F. Wang, Frequence: interactive mining and visualization of temporal frequent event sequences, Proceedings of the international conference on Intelligent User Interfaces, pp.153-162, 2014.

E. Polard, E. Nowak, A. Happe, A. Biraben, and E. Oger, Brand name to generic substitution of antiepileptic drugs does not lead to seizure-related hospitalization: a populationbased case-crossover study, Pharmacoepidemiology and drug safety, vol.24, issue.11, pp.1161-1169, 2015.
URL : https://hal.archives-ouvertes.fr/hal-01198646

. Public-policy-committee, Guidelines for good pharmacoepidemiology practice (GPP), Pharmacoepidemiology and drug safety, vol.25, issue.1, p.2, 2016.

R. Quiniou, G. Carrault, M. Cordier, W. , and F. , Temporal abstraction and inductive logic programming for arrythmia recognition from electrocardiograms, Artificial Intelligence in Medicine, vol.28, pp.231-263, 2003.

Y. Rivault, Care trajectory analysis using medico-administrative data : contribution of a knowledge-based enrichment from the Linked Data, Theses, Université Rennes, vol.1, 2019.
URL : https://hal.archives-ouvertes.fr/tel-02137442

Y. Rivault, O. Dameron, L. Meur, and N. , queryMed: Semantic Web functions for linking pharmacological and medical knowledge to data, Bioinformatics, 2019.
URL : https://hal.archives-ouvertes.fr/hal-01988699

F. Rossi, P. Van-beek, W. , and T. , Handbook of constraint programming, 2006.

G. Ruan, H. Zhang, and B. Plale, Parallel and quantitative sequential pattern mining for large-scale interval-based temporal data, IEEE International Conference on, pp.32-39, 2014.

L. Sacchi, D. Capozzi, R. Bellazzi, and C. Larizza, JTSA: an open source framework for time series abstractions, Computer Methods and Programs in Biomedicine, vol.121, issue.3, pp.175-188, 2015.

L. Sacchi, C. Larizza, C. Combi, and R. Bellazzi, Data mining with temporal abstractions: learning rules from time series, Data Mining and Knowledge Discovery, vol.15, issue.2, pp.217-247, 2007.

A. Sahuguède, E. Le-corronc, L. Lann, and M. , An ordered chronicle discovery algorithm, 3nd ECML/PKDD Workshop on Advanced Analytics and Learning on Temporal Data, AALTD'18, 2018.

C. Sellami, A. Samet, and M. A. Tobji, Frequent chronicle mining: Application on predictive maintenance, 17th IEEE International Conference on Machine Learning and Applications (ICMLA), pp.1388-1393, 2018.

A. Silberschatz and A. Tuzhilin, On subjective measures of interestingness in knowledge discovery, KDD, vol.95, pp.275-281, 1995.

P. Simons, I. Niemel, and T. Soininen, Extending and implementing the stable model semantics, Artificial Intelligence, vol.138, issue.1-2, pp.181-234, 2002.

R. T. Snodgrass, Temporal databases, Proc. IEEE computer, 1986.

R. Srikant and R. Agrawal, Mining sequential patterns: Generalizations and performance improvements, Proceedings of the 5th International Conference on Extending Database Technology, pp.3-17, 1996.

R. Srikant and R. Agrawal, Mining sequential patterns: Generalizations and performance improvements, Advances in Database TechnologyEDBT'96, pp.1-17, 1996.

T. Syrjänen and I. Niemelä, The smodels system, Proceedings of the conference on Logic Programming and Nonmotonic Reasoning, pp.434-438, 2001.

L. Szathmary, P. Valtchev, and A. Napoli, Generating rare association rules using the minimal rare itemsets family, International Journal on Software and Informatics, vol.4, issue.3, pp.219-238, 2010.
URL : https://hal.archives-ouvertes.fr/inria-00551503

N. Tatti and J. Vreeken, The long and the short of it: Summarising event sequences with serial episodes, Proceedings of the 18th ACM SIGKDD International Conference on Knowledge Discovery and Data Mining, KDD '12, pp.462-470, 2012.

R. Taupe, Speeding up lazy-grounding answer set solving, Technical Communications of the 34th International Conference on Logic Programming (ICLP), vol.20, p.9, 2018.

A. Termier, Pattern mining rock: more, faster, better, 2013.
URL : https://hal.archives-ouvertes.fr/tel-01006195

K. Tsesmeli, M. Boumghar, T. Guyet, R. Quiniou, P. et al., Fouille de motifs temporels négatifs, Actes de la Conférence Internationale sur l'Extraction et la Gestion des Connaissances (EGC), pp.263-268, 2018.

W. Ugarte, P. Boizumault, B. Crémilleux, A. Lepailleur, S. Loudni et al., Skypattern mining: From pattern condensed representations to dynamic constraint satisfaction problems, Artificial Intelligence, 2015.
URL : https://hal.archives-ouvertes.fr/hal-02048224

T. Uno, , 2004.

T. Uno, M. Kiyomi, A. , and H. , LCM ver. 2: Efficient mining algorithms for frequent/closed/maximal itemsets, FIMI, vol.126, 2004.

T. Uno, M. Kiyomi, A. , and H. , Lcm ver.3: Collaboration of array, bitmap and prefix tree for frequent itemset mining, Proceedings of the 1st International Workshop on Open Source Data Mining: Frequent Pattern Mining Implementations, OSDM '05, pp.77-86, 2005.

G. Verbruggen and L. De-raedt, Towards automated relational data wrangling, Proceedings of AutoML 2017@ ECML-PKDD: Automatic selection, configuration and composition of machine learning algorithms, pp.18-26, 2017.

J. Wang and J. Han, BIDE: Efficient mining of frequent closed sequences, Proceedings of the International Conference on Data Engineering, pp.79-90, 2004.

W. Wang and L. Cao, Negative sequences analysis: A review, ACM Computing Survey, p.52, 2019.

A. Weill, M. Païta, P. Tuppin, J. Fagot, A. Neumann et al., Benfluorex and valvular heart disease: a cohort study of a million people with diabetes mellitus, Pharmacoepidemiology and drug safety, vol.19, issue.12, pp.1256-1262, 2010.

. Who, The ICD-10 classification of mental and behavioural disorders: diagnostic criteria for research, World Health Organization, vol.2, 1993.

E. Winarko and J. F. Roddick, ARMADA -an algorithm for discovering richer relative temporal association rules from interval-based data, Data & Knowledge Engineering, vol.63, issue.1, pp.76-90, 2006.

S. Wu and Y. Chen, Mining nonambiguous temporal patterns for interval-based events, IEEE transactions on knowledge and data engineering, vol.19, issue.6, pp.742-758, 2007.

X. Yan, J. Han, A. , and R. , CloSpan: Mining closed sequential patterns in large datasets, Proceedings of the SIAM Conference on Data Mining, pp.166-177, 2003.

S. Yen and Y. Lee, Mining non-redundant time-gap sequential patterns, Applied intelligence, vol.39, issue.4, pp.727-738, 2013.

M. Yoshida, T. Iizuka, H. Shiohara, and M. Ishiguro, Mining sequential patterns including time intervals, Proceedings of the conference on Data Mining and Knowledge Discovery: Theory, Tools and Technology II, pp.213-220, 2000.

D. Yuan, K. Lee, H. Cheng, G. Krishna, Z. Li et al., Cispan: Comprehensive incremental mining algorithms of closed sequential patterns for multi-versional software mining, Proceedings of SIAM, pp.84-95, 2008.

M. J. Zaki, Sequence mining in categorical domains: Incorporating constraints, Proceedings of the Ninth International Conference on Information and Knowledge Management, CIKM '00, pp.422-429, 2000.

M. J. Zaki, SPADE: An efficient algorithm for mining frequent sequences, Journal of Machine Learning, vol.42, issue.1/2, pp.31-60, 2001.

J. Zhao, A. Henriksson, and H. Bostrom, Cascading adverse drug event detection in electronic health records, International Conference on Data Science and Advanced Analytics (DSAA), pp.1-8, 2015.

Z. Zheng, Y. Zhao, Z. Zuo, and L. Cao, Negative-GSP: An efficient method for mining negative sequential patterns, Proceedings of the Australasian Data Mining Conference, pp.63-67, 2009.

M. Zins and M. Goldberg, The french constances population-based cohort: design, inclusion and follow-up, European journal of epidemiology, vol.30, issue.12, pp.1317-1328, 2015.