DocumentCode :
3122972
Title :
Learning Parameters for Relational Probabilistic Models with Noisy-Or Combining Rule
Author :
Natarajan, Sriraam ; Tadepalli, Prasad ; Kunapuli, Gautam ; Shavlik, Jude
Author_Institution :
Univ. of Wisconsin, Madison, NY, USA
fYear :
2009
fDate :
13-15 Dec. 2009
Firstpage :
141
Lastpage :
146
Abstract :
Languages that combine predicate logic with probabilities are needed to succinctly represent knowledge in many real-world domains. We consider a formalism based on universally quantified conditional influence statements that capture local interactions between object attributes. The effects of different conditional influence statements can be combined using rules such as Noisy-OR. To combine multiple instantiations of the same rule we need other combining rules at a lower level. In this paper we derive and implement algorithms based on gradient-descent and EM for learning the parameters of these multi-level combining rules. We compare our approaches to learning in Markov Logic Networks and show superior performance in multiple domains.
Keywords :
formal logic; gradient methods; knowledge representation; learning (artificial intelligence); probability; Markov logic networks; Noisy-OR combining rule; expectation-maximization learning; gradient descent algorithm; knowledge representation; predicate logic; relational probabilistic models; Citation analysis; Graphical models; Machine learning; Noise level; Predictive models; Probabilistic logic; Social network services; Stochastic processes; Graphical Models; Statistical Relational Learning;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Machine Learning and Applications, 2009. ICMLA '09. International Conference on
Conference_Location :
Miami Beach, FL
Print_ISBN :
978-0-7695-3926-3
Type :
conf
DOI :
10.1109/ICMLA.2009.134
Filename :
5381816
Link To Document :
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