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Inference Algorithms for Similarity Networks
Published 6 Mar 2013 in cs.AI | (1303.1493v2)
Abstract: We examine two types of similarity networks each based on a distinct notion of relevance. For both types of similarity networks we present an efficient inference algorithm that works under the assumption that every event has a nonzero probability of occurrence. Another inference algorithm is developed for type 1 similarity networks that works under no restriction, albeit less efficiently.
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