We describe an extension of the hidden Markov model in which the manifest process conditionally follows a partition model. The assumption of local independence for the manifest random variable is thus relaxed to arbitrary dependence. The proposed class generalizes different existing models for discrete and continuous time series, and allows for the finest trading off between bias and variance. The models are fit through an EM algorithm, with the usual recursions for hidden Markov models extended at no additional computational cost. (C) 2011 Elsevier B.V. All rights reserved
We note similarities of the state space reconstruction ("Embedology") practiced in numeric...
International audienceExact inference for hidden Markov models requires the evaluation of all distri...
Summary We present a Bayesian forecasting methodology of discrete-time finite state-space hidden Mar...
We discuss an interpretation of the Mixture Transition Distribution (MTD) for discrete-valued time s...
We discuss an interpretation of the mixture transition distribution (MTD) for discrete-valued time s...
Introduction A hidden Markov model arises in the following manor. A hidden or unobservable sequence...
Hidden Markov models are widely used to model the probabilistic structures with latent variables. Th...
This chapter introduces hidden Markov models to study and characterize (indi-vidual) time series suc...
The Partition Markov Model characterizes the process by a partition L of the state space, wher...
A hidden Markov model (HMM) with a special structure that captures the 'semi'-property of hidden sem...
This thesis considers two broad topics in the theory and application of hidden Markov models (HMMs):...
This paper considers the identifiability of a class of hidden Markov models where both the observed ...
Hidden semi-Markov models (HSMMs) are a powerful class of statistical model that have been applied t...
A hidden Markov model (HMM) is a temporal probabilistic model in which the state of the process is d...
The method introduced by Leroux [Maximum likelihood estimation for hidden Markov models, Stochastic ...
We note similarities of the state space reconstruction ("Embedology") practiced in numeric...
International audienceExact inference for hidden Markov models requires the evaluation of all distri...
Summary We present a Bayesian forecasting methodology of discrete-time finite state-space hidden Mar...
We discuss an interpretation of the Mixture Transition Distribution (MTD) for discrete-valued time s...
We discuss an interpretation of the mixture transition distribution (MTD) for discrete-valued time s...
Introduction A hidden Markov model arises in the following manor. A hidden or unobservable sequence...
Hidden Markov models are widely used to model the probabilistic structures with latent variables. Th...
This chapter introduces hidden Markov models to study and characterize (indi-vidual) time series suc...
The Partition Markov Model characterizes the process by a partition L of the state space, wher...
A hidden Markov model (HMM) with a special structure that captures the 'semi'-property of hidden sem...
This thesis considers two broad topics in the theory and application of hidden Markov models (HMMs):...
This paper considers the identifiability of a class of hidden Markov models where both the observed ...
Hidden semi-Markov models (HSMMs) are a powerful class of statistical model that have been applied t...
A hidden Markov model (HMM) is a temporal probabilistic model in which the state of the process is d...
The method introduced by Leroux [Maximum likelihood estimation for hidden Markov models, Stochastic ...
We note similarities of the state space reconstruction ("Embedology") practiced in numeric...
International audienceExact inference for hidden Markov models requires the evaluation of all distri...
Summary We present a Bayesian forecasting methodology of discrete-time finite state-space hidden Mar...