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arxiv: 1301.2256 · v1 · pith:MVLV7TGYnew · submitted 2013-01-10 · 💻 cs.AI · cs.DS

Pre-processing for Triangulation of Probabilistic Networks

classification 💻 cs.AI cs.DS
keywords graphtriangulationnetworksprobabilisticnetworkobtainedpre-processingreduction
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The currently most efficient algorithm for inference with a probabilistic network builds upon a triangulation of a network's graph. In this paper, we show that pre-processing can help in finding good triangulations forprobabilistic networks, that is, triangulations with a minimal maximum clique size. We provide a set of rules for stepwise reducing a graph, without losing optimality. This reduction allows us to solve the triangulation problem on a smaller graph. From the smaller graph's triangulation, a triangulation of the original graph is obtained by reversing the reduction steps. Our experimental results show that the graphs of some well-known real-life probabilistic networks can be triangulated optimally just by preprocessing; for other networks, huge reductions in their graph's size are obtained.

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