A reservoir-driven non-stationary hidden Markov model

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摘要

In this work, we propose a novel approach towards sequential data modeling that leverages the strengths of hidden Markov models and echo-state networks (ESNs) in the context of non-parametric Bayesian inference approaches. We introduce a non-stationary hidden Markov model, the time-dependent state transition probabilities of which are driven by a high-dimensional signal that encodes the whole history of the modeled observations, namely the state vector of a postulated observations-driven ESN reservoir. We derive an efficient inference algorithm for our model under the variational Bayesian paradigm, and we examine the efficacy of our approach considering a number of sequential data modeling applications.

论文关键词:Hidden Markov model,Dirichlet process,Reservoir

论文评审过程:Received 30 December 2011, Revised 14 April 2012, Accepted 18 April 2012, Available online 3 May 2012.

论文官网地址:https://doi.org/10.1016/j.patcog.2012.04.018