2023
DOI: 10.48550/arxiv.2301.09870
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Context-specific kernel-based hidden Markov model for time series analysis

Abstract: Traditional hidden Markov models have been a useful tool to understand and model stochastic dynamic linear data; in the case of non-Gaussian data or not linear in mean data, models such as mixture of Gaussian hidden Markov models suffer from the computation of precision matrices and have a lot of unnecessary parameters. As a consequence, such models often perform better when it is assumed that all variables are independent, a hypothesis that may be unrealistic. Hidden Markov models based on kernel density esti… Show more

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