TU Darmstadt / ULB / TUprints

Variational Inference for Continuous-Time Switching Dynamical Systems

Köhs, Lukas ; Alt, Bastian ; Koeppl, Heinz
eds.: Ranzato, M. ; Beygelzimer, A. ; Dauphin, Y. ; Liang, P. S. ; Wortman Vaughan, J. (2025)
Variational Inference for Continuous-Time Switching Dynamical Systems.
Thirty-Fifth Annual Conference on Neural Information Processing Systems. Virtual Conference (06.12.2021 - 14.12.2021)
doi: 10.26083/tuprints-00028936
Conference or Workshop Item, Secondary publication, Publisher's Version

[img] Text
NeurIPS-2021-variational-inference-for-continuous-time-switching-dynamical-systems-Paper.pdf
Copyright Information: CC BY 4.0 International - Creative Commons, Attribution.

Download (1MB)
[img] Text (Supplement)
NeurIPS-2021-variational-inference-for-continuous-time-switching-dynamical-systems-Supplemental.pdf
Copyright Information: CC BY 4.0 International - Creative Commons, Attribution.

Download (2MB)
Item Type: Conference or Workshop Item
Type of entry: Secondary publication
Title: Variational Inference for Continuous-Time Switching Dynamical Systems
Language: English
Date: 15 January 2025
Place of Publication: Darmstadt
Year of primary publication: 2021
Place of primary publication: San Diego, CA
Publisher: NeurIPS
Book Title: Advances in Neural Information Processing Systems 34 (NeurIPS 2021)
Collation: 25 Seiten
Event Title: Thirty-Fifth Annual Conference on Neural Information Processing Systems
Event Location: Virtual Conference
Event Dates: 06.12.2021 - 14.12.2021
DOI: 10.26083/tuprints-00028936
Corresponding Links:
Origin: Secondary publication service
Abstract:

Switching dynamical systems provide a powerful, interpretable modeling framework for inference in time-series data in, e.g., the natural sciences or engineering applications. Since many areas, such as biology or discrete-event systems, are naturally described in continuous time, we present a model based on a Markov jump process modulating a subordinated diffusion process. We provide the exact evolution equations for the prior and posterior marginal densities, the direct solutions of which are however computationally intractable. Therefore, we develop a new continuous-time variational inference algorithm, combining a Gaussian process approximation on the diffusion level with posterior inference for Markov jump processes. By minimizing the path-wise Kullback-Leibler divergence we obtain (i) Bayesian latent state estimates for arbitrary points on the real axis and (ii) point estimates of unknown system parameters, utilizing variational expectation maximization. We extensively evaluate our algorithm under the model assumption and for real-world examples.

Status: Publisher's Version
URN: urn:nbn:de:tuda-tuprints-289366
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 09:23
Last Modified: 15 Jan 2025 09:23
URI: https://tuprints.ulb.tu-darmstadt.de/id/eprint/28936
PPN:
Export:
Actions (login required)
View Item View Item