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arxiv: 1302.4974 · v1 · pith:GFPUTXPQnew · submitted 2013-02-20 · 💻 cs.AI

A Theoretical Framework for Context-Sensitive Temporal Probability Model Construction with Application to Plan Projection

classification 💻 cs.AI
keywords bayesianconstructiontemporalalgorithmapplicationcontext-sensitivelogicnetwork
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We define a context-sensitive temporal probability logic for representing classes of discrete-time temporal Bayesian networks. Context constraints allow inference to be focused on only the relevant portions of the probabilistic knowledge. We provide a declarative semantics for our language. We present a Bayesian network construction algorithm whose generated networks give sound and complete answers to queries. We use related concepts in logic programming to justify our approach. We have implemented a Bayesian network construction algorithm for a subset of the theory and demonstrate it's application to the problem of evaluating the effectiveness of treatments for acute cardiac conditions.

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