Efficient probabilistic inference for dynamic relational models (bibtex)
by Jonas Vlasselaer, Wannes Meert, Guy Van den Broeck and Luc De Raedt
Abstract:
© Copyright 2014 Association for the Advancement of Artificial Intelligence. All rights reserved. Over the last couple of years, the interest in combining probability and logic has grown strongly. This led to the development of different software packages like PRISM, ProbLog and Alchemy, which offer a variety of exact and approximate algorithms to perform inference and learning. What is lacking, however, are algorithms to perform efficient inference in relational temporal models by systematically exploiting temporal and local structure. Since many real-world problems require temporal models, we argue that more research is necessary to use this structure to obtain more efficient inference and learning. While existing relational representations of dynamic domains focus rather on approximate inference techniques we propose an exact algorithm.
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Reference:
Jonas Vlasselaer, Wannes Meert, Guy Van den Broeck and Luc De Raedt. Efficient probabilistic inference for dynamic relational models, 2014. International Workshop on Statistical Relational AI
Bibtex Entry:
@unpublished{VlasselaerStarAI14,
author = "Vlasselaer, Jonas and Meert, Wannes and Van den Broeck, Guy and De Raedt, Luc",
title = "Efficient probabilistic inference for dynamic relational models",
note = "International Workshop on Statistical Relational AI",
month = Jul,
year = "2014",
url = "http://starai.cs.ucla.edu/papers/VlasselaerStarAI14.pdf",
keywords = {abstract}
}PDF Preview:
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