Learning to Approximate Particle Smoothing Trajectories via Diffusion Generative Models

Ella Tamir*, Arno Solin

*Corresponding author for this work

Research output: Chapter in Book/Report/Conference proceedingConference article in proceedingsScientificpeer-review

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Abstract

Learning dynamical systems from sparse observations is critical in numerous fields, including biology, finance, and physics. Even if tackling such problems is standard in general information fusion, it remains challenging for contemporary machine learning models, such as diffusion models. We introduce a method that integrates conditional particle filtering with ancestral sampling and diffusion models, enabling the generation of realistic trajectories that align with observed data. Our approach uses a smoother based on iterating a conditional particle filter with ancestral sampling to first generate plausible trajectories matching observed marginals, and learns the corresponding diffusion model. This approach provides both a generative method for high-quality, smoothed trajectories under complex constraints, and an efficient approximation of the particle smoothing distribution for classical tracking problems. We demonstrate the approach in time-series generation and interpolation tasks, including vehicle tracking and single-cell RNA sequencing data.

Original languageEnglish
Title of host publicationFUSION 2024 - 27th International Conference on Information Fusion
PublisherInternational Society of Information Fusion
Number of pages8
ISBN (Electronic)978-1-7377497-6-9
ISBN (Print)979-8-3503-7142-0
DOIs
Publication statusPublished - 11 Oct 2024
MoE publication typeA4 Conference publication
EventInternational Conference on Information Fusion - Venice, Italy
Duration: 7 Jul 202411 Jul 2024

Conference

ConferenceInternational Conference on Information Fusion
Abbreviated titleFUSION
Country/TerritoryItaly
CityVenice
Period07/07/202411/07/2024

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