Lifted Inference Seen from the Other Side : The Tractable Features

Part of Advances in Neural Information Processing Systems 23 (NIPS 2010)

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Authors

Abhay Jha, Vibhav Gogate, Alexandra Meliou, Dan Suciu

Abstract

Lifted inference algorithms for representations that combine first-order logic and probabilistic graphical models have been the focus of much recent research. All lifted algorithms developed to date are based on the same underlying idea: take a standard probabilistic inference algorithm (e.g., variable elimination, belief propagation etc.) and improve its efficiency by exploiting repeated structure in the first-order model. In this paper, we propose an approach from the other side in that we use techniques from logic for probabilistic inference. In particular, we define a set of rules that look only at the logical representation to identify models for which exact efficient inference is possible. We show that our rules yield several new tractable classes that cannot be solved efficiently by any of the existing techniques.