J. H. Bolt, Bayesian networks: the parental synergy, Proceedings of the Fourth European Workshop on Probabilistic Graphical Models. Hirtshals, pp.33-40, 2008.

R. Daly, Q. Shen, and S. Aitken, Learning Bayesian networks: approaches and issues, The Knowledge Engineering Review, vol.26, pp.99-157, 2011.

M. J. Druzdel, L. C. Van-der-gaag, M. Henrion, and F. V. Jensen, Building probabilistic networks: Where do the numbers come from? Guest editors' introduction, IEEE Transactions on Knowledge and Data Engineering, vol.12, pp.481-486, 2000.

M. J. Druzdzel and M. Henrion, Efficient reasoning in qualitative probabilistic networks, Proceedings of the 11th National Conference on Artificial Intelligence, pp.548-553, 1993.

N. Ettouzi, . Ph, M. B. Leray, and . Messaoud, An exact approach to learning probabilistic relational model, Proceedings of the 8th Conference on Probabilistic Graphical Models. PMLR, vol.52, pp.171-182, 2016.
URL : https://hal.archives-ouvertes.fr/hal-01347804

N. Friedman, L. Getoor, D. Koller, and A. Pfeffer, Learning probabilistic relational models, Proceedings of the 16th International Joint Conference on Artificial Intelligence, pp.1300-1307, 1999.

N. Friedman, I. Nachman, and D. Peér, Learning Bayesian network structure from massive datasets: The sparse candidate algorithm, Proceedings of the 15th Conference on Uncertainty in Artificial Intelligence, pp.206-215, 1999.

L. C. Van-der-gaag, S. Renooij, H. J. Schijf, A. R. Elbers, and W. L. Loeffen, Experiences with eliciting probabilities from multiple experts, Communications in Computer and Information Science, vol.299, pp.151-160, 2012.

L. Getoor, Learning Statistical Models from Relational Data, 2001.

F. V. Jensen and T. D. Nielsen, Bayesian Networks and Decision Graphs, 2007.

M. I. Jordan, Learning in Graphical Models, 1999.

F. Kaelin and D. Precup, An approach to inference in probabilistic relational models using block sampling, Journal of Machine Learning Research, vol.13, pp.315-330, 2010.

U. B. Kjaerulff and A. L. Madsen, Bayesian Networks and Influence Diagrams: A Guide to Construction and Analysis, 2010.

D. Koller and A. Pfeffer, Probabilistic frame-based systems, Proceedings of the 15th National Conference on Artificial Intelligence, pp.580-587, 1998.

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

R. E. Neapolitan, Learning Bayesian Networks, 2004.

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

A. J. Pfeffer, Probabilistic Reasoning for Complex Systems, 2000.

S. Renooij and L. C. Van-der-gaag, From qualitative to quantitative probabilistic networks, Proceedings of the 18th Conference on Uncertainty in Artificial Intelligence, pp.422-429, 2002.

S. Renooij and L. C. Van-der-gaag, Enhanced qualitative probabilistic networks for resolving trade-offs, Artificial Intelligence, vol.172, pp.1470-1494, 2008.

S. Renooij, L. C. Van-der-gaag, and S. Parsons, Propagation of multiple observations in QPNs revisited, Proceedings of the 15th European Conference on Artificial Intelligence, pp.665-669, 2002.

M. P. Wellman, Fundamental concepts of qualitative probabilistic networks, Artificial Intelligence, vol.44, pp.257-303, 1990.

M. P. Wellman and M. Henrion, Qualitative intercausal relations, or explaining explaining away, pp.535-546, 1991.

P. Wuillemin and L. Torti, Structured probabilistic inference, International Journal of Approximate Reasoning, vol.53, pp.946-968, 2012.
URL : https://hal.archives-ouvertes.fr/hal-01170485

L. Xiao-lin and H. Xiang-dong, A hybrid particle swarm optimization method for structure learning of probabilistic relational models, Information Sciences, vol.283, pp.258-266, 2014.