Hidden semi markov models for multiple observation sequences: The mhsmm package for R

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Abstract

This paper describes the R package mhsmm which implements estimation and prediction methods for hidden Markov and semi-Markov models for multiple observation sequences. Such techniques are of interest when observed data is thought to be dependent on some unobserved (or hidden) state. Hidden Markov models only allow a geometrically distributed sojourn time in a given state, while hidden semi-Markov models extend this by allowing an arbitrary sojourn distribution. We demonstrate the software with simulation examples and an application involving the modelling of the ovarian cycle of dairy cows.

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O’Connell, J., & Hojsgaard, S. (2011). Hidden semi markov models for multiple observation sequences: The mhsmm package for R. Journal of Statistical Software, 39(4), 1–22. https://doi.org/10.18637/jss.v039.i04

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