SpaMHMM: Sparse Mixture of Hidden Markov Models for Graph Connected Entities

03/31/2019
by   Diogo Pernes, et al.
0

We propose a framework to model the distribution of sequential data coming from a set of entities connected in a graph with a known topology. The method is based on a mixture of shared hidden Markov models (HMMs), which are jointly trained in order to exploit the knowledge of the graph structure and in such a way that the obtained mixtures tend to be sparse. Experiments in different application domains demonstrate the effectiveness and versatility of the method.

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