B. Taskar, P. Abbeel, M. Wong, and D. Koller, Relational markov networks, Introduction to Statistical Relational Learning, 2007.

J. Neville and D. Jensen, Relational dependency networks, Introduction to Statistical Relational Learning, 2005.

D. Heckerman and M. Meek, Probabilistic entity-relationship models, PRMs, and plate models, pp.55-60, 2004.

D. Koller and A. Pfeffer, Probabilistic frame-based systems, pp.580-587, 1998.

L. Getoor, Learning statistical models from relational data, 2001.

M. Richardson and P. Domingos, Markov Logic Networks, Machine Learning, vol.62, pp.107-136, 2006.

L. Raedt, A. Kimmig, and H. Toivonen, Problog: A probabilistic prolog and its application in link discovery, IJCAI, M. M. Veloso, pp.2462-2467, 2007.

K. Kersting and L. Raedt, Bayesian Logic Programming: Theory and Tool, 2007.

N. Friedman, L. Getoor, D. Koller, and A. Pfeffer, Learning probabilistic relational models, IJCAI, pp.1300-1309, 1999.

N. Ettouzi, P. Leray, and M. Ben-messaoud, An exact approach to learning probabilistic relational model, PGM, pp.171-182, 2016.
URL : https://hal.archives-ouvertes.fr/hal-01347804

M. Maier, K. Marazopoulou, and D. Jensen, Reasoning about independence in probabilistic models of relational data, CoRR, 2013.

S. Lee and V. Honavar, On learning causal models from relational data, AAAI, pp.3263-3270, 2016.

L. Xiao-lin and H. Xiang-dong, A hybrid particle swarm optimization method for structure learning of probabilistic relational models, new Trend of Computational Intelligence in Human-Robot Interaction, vol.283, pp.258-266, 2014.

M. and B. Ishak, Probabilistic relational models: learning and evaluation, 2015.
URL : https://hal.archives-ouvertes.fr/tel-01179501

M. E. Abri, P. Leray, and N. Essoussi, Daper learning from (partially structured) graph database, IEEE AICCSA, 2017.

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

P. Chen, The entity-relationship model: Toward a unified view of data, ACM Trans. Database Syst, vol.1, issue.1, pp.9-36, 1976.

F. Kaelin and D. Precup, A study of approximate inference in probabilistic relational models, JMLR.org, vol.13, pp.315-330, 2010.

S. Kok and P. Domingos, Learning structure of Markov Logic Networks, ICML, pp.441-448, 2005.

P. Domingos and S. Kok, Learning Markov Logic Networks structure via hypergraph lifting, ICML, pp.505-512, 2009.

S. Kok and P. Domingos, Learning Markov Logic Networks using structural motifs, ICML, pp.551-558, 2010.

P. Domingos and M. Richardson, Markov logic: A unifying framework for statistical relational learning, Proceeding of the ICML-2004 workshop on statistical relational learning and its connections to other fields, pp.49-54, 2004.

M. Maier, K. Marazopoulou, D. Arbour, and D. Jensen, A sound and complete algorithm for learning causal models from relational data, CoRR, 2013.

M. B. Ishak, P. Leray, and N. Ben-amor, Probabilistic relational model benchmark generation, Intell. Data Anal, pp.615-635, 2016.
URL : https://hal.archives-ouvertes.fr/hal-01273307