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arxiv: 1301.7406 · v1 · pith:4SQ27DXInew · submitted 2013-01-30 · 💻 cs.AI

Logarithmic Time Parallel Bayesian Inference

classification 💻 cs.AI
keywords networksparallelprocessorstimebayesiancomplexityinferencemaximum
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I present a parallel algorithm for exact probabilistic inference in Bayesian networks. For polytree networks with n variables, the worst-case time complexity is O(log n) on a CREW PRAM (concurrent-read, exclusive-write parallel random-access machine) with n processors, for any constant number of evidence variables. For arbitrary networks, the time complexity is O(r^{3w}*log n) for n processors, or O(w*log n) for r^{3w}*n processors, where r is the maximum range of any variable, and w is the induced width (the maximum clique size), after moralizing and triangulating the network.

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