Title :
A Posterior-Based Method for Markov Logic Networks Parameters Learning
Author :
Sun, Shuyang ; Chen, Jianzhong ; Liu, Dayou ; Sun, Chengmin
Author_Institution :
Coll. of Comput. Sci. & Technol., Jilin Univ., Changchun
Abstract :
The past few years have witnessed a significant development in statistical relational learning (SRL). Markov logic network (MLN), one of SRL methods, is a first-order knowledge base with a weight attached to each formula, and could be viewed as a template for ground Markov logic networks. In this paper, a posterior-based parameters learning approach for Markov logic networks, maximum pseudo-posterior estimation is proposed. Mean Gaussian distribution is used as prior of each weight, likelihood is replaced by pseudo-likelihood, and the pseudo-posterior distribution is maximized to learn the weights. Experiments show maximum pseudo-posterior estimation could learn MLNs model effectively, which performs inference better compared to maximum pseudo-likelihood estimation
Keywords :
Gaussian distribution; Markov processes; formal logic; learning (artificial intelligence); maximum likelihood estimation; Markov logic networks; a posterior-based method; first-order knowledge base; maximum pseudo-posterior estimation; mean Gaussian distribution; parameters learning; statistical relational learning; Data mining; Educational institutions; Gaussian distribution; Laboratories; Learning systems; Machine learning; Markov random fields; Predictive models; Probabilistic logic; Stochastic processes; First-Order Logic; Machine Learning; Markov Logic Networks; Markov Networks; Statistical Relational Learning;
Conference_Titel :
Cognitive Informatics, 2006. ICCI 2006. 5th IEEE International Conference on
Conference_Location :
Beijing
Print_ISBN :
1-4244-0475-4
DOI :
10.1109/COGINF.2006.365541