Analysis of Drifting Dynamics with Neural Network Hidden Markov Models
Abstract
We present a method for the analysis of nonstationary time se(cid:173) ries with multiple operating modes. In particular, it is possible to detect and to model both a switching of the dynamics and a less abrupt, time consuming drift from one mode to another. This is achieved in two steps. First, an unsupervised training method pro(cid:173) vides prediction experts for the inherent dynamical modes. Then, the trained experts are used in a hidden Markov model that allows to model drifts. An application to physiological wake/sleep data demonstrates that analysis and modeling of real-world time series can be improved when the drift paradigm is taken into account.
Cite
Text
Kohlmorgen et al. "Analysis of Drifting Dynamics with Neural Network Hidden Markov Models." Neural Information Processing Systems, 1997.Markdown
[Kohlmorgen et al. "Analysis of Drifting Dynamics with Neural Network Hidden Markov Models." Neural Information Processing Systems, 1997.](https://mlanthology.org/neurips/1997/kohlmorgen1997neurips-analysis/)BibTeX
@inproceedings{kohlmorgen1997neurips-analysis,
title = {{Analysis of Drifting Dynamics with Neural Network Hidden Markov Models}},
author = {Kohlmorgen, Jens and Müller, Klaus-Robert and Pawelzik, Klaus},
booktitle = {Neural Information Processing Systems},
year = {1997},
pages = {735-741},
url = {https://mlanthology.org/neurips/1997/kohlmorgen1997neurips-analysis/}
}