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Markov Chain Monte Carlo for Continuous-Time Switching Dynamical Systems

Köhs, Lukas ; Alt, Bastian ; Koeppl, Heinz (2025)
Markov Chain Monte Carlo for Continuous-Time Switching Dynamical Systems.
The 39th International Conference on Machine Learning. Baltimore, MD (17.07.2022 - 23.07.2022)
doi: 10.26083/tuprints-00028935
Conference or Workshop Item, Secondary publication, Publisher's Version

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Item Type: Conference or Workshop Item
Type of entry: Secondary publication
Title: Markov Chain Monte Carlo for Continuous-Time Switching Dynamical Systems
Language: English
Date: 15 January 2025
Place of Publication: Darmstadt
Year of primary publication: 2022
Publisher: PMLR
Book Title: Proceedings of the 39th International Conference on Machine Learning
Series: Proceedings of Machine Learning Research
Series Volume: 162
Event Title: The 39th International Conference on Machine Learning
Event Location: Baltimore, MD
Event Dates: 17.07.2022 - 23.07.2022
DOI: 10.26083/tuprints-00028935
Corresponding Links:
Origin: Secondary publication service
Abstract:

Switching dynamical systems are an expressive model class for the analysis of time-series data. As in many fields within the natural and engineering sciences, the systems under study typically evolve continuously in time, it is natural to consider continuous-time model formulations consisting of switching stochastic differential equations governed by an underlying Markov jump process. Inference in these types of models is however notoriously difficult, and tractable computational schemes are rare. In this work, we propose a novel inference algorithm utilizing a Markov Chain Monte Carlo approach. The presented Gibbs sampler allows to efficiently obtain samples from the exact continuous-time posterior processes. Our framework naturally enables Bayesian parameter estimation, and we also include an estimate for the diffusion covariance, which is oftentimes assumed fixed in stochastic differential equations models. We evaluate our framework under the modeling assumption and compare it against an existing variational inference approach.

Status: Publisher's Version
URN: urn:nbn:de:tuda-tuprints-289352
Classification DDC: 500 Science and mathematics > 570 Life sciences, biology
600 Technology, medicine, applied sciences > 621.3 Electrical engineering, electronics
Divisions: 18 Department of Electrical Engineering and Information Technology > Institute for Telecommunications > Bioinspired Communication Systems
18 Department of Electrical Engineering and Information Technology > Self-Organizing Systems Lab
Date Deposited: 15 Jan 2025 09:19
Last Modified: 15 Jan 2025 09:19
URI: https://tuprints.ulb.tu-darmstadt.de/id/eprint/28935
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