Consistent Estimation of the Filtering and Marginal Smoothing Distributions in Nonparametric Hidden Markov Models

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Abstract

In this paper, we consider the filtering and smoothing recursions in nonparametric finite state space hidden Markov models (HMMs) when the parameters of the model are unknown and replaced by estimators. We provide an explicit and time uniform control of the filtering and smoothing errors in total variation norm as a function of the parameter estimation errors. We prove that the risk for the filtering and smoothing errors may be uniformly upper bounded by the $\mathrm {L}^{1}$ -risk of the estimators. It has been proved very recently that statistical inference for finite state space nonparametric HMMs is possible. We study how the recent spectral methods developed in the parametric setting may be extended to the nonparametric framework and we give explicit upper bounds for the $\mathrm {L}^{2}$ -risk of the nonparametric spectral estimators. In the case where the observation space is compact, this provides explicit rates for the filtering and smoothing errors in total variation norm. The performance of the spectral method is assessed with simulated data for both the estimation of the (nonparametric) conditional distribution of the observations and the estimation of the marginal smoothing distributions.

Original languageEnglish
Article number7907196
Pages (from-to)4758-4777
Number of pages20
JournalIEEE Transactions on Information Theory
Volume63
Issue number8
DOIs
Publication statusPublished - 1 Aug 2017
Externally publishedYes

Keywords

  • filtering
  • Hidden Markov models
  • nonparametric estimation
  • smoothing
  • spectral methods

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