Federated Time Series Generation on Feature and Temporally Misaligned Data

Conference Paper (2026)
Author(s)

Zhi Wen Soi (University of Bern)

Chenrui Fan (University of Bern)

A. Shankar (TU Delft - Data-Intensive Systems)

Abel Malan (University of Neuchâtel)

Lydia Y. Chen (TU Delft - Data-Intensive Systems, University of Neuchâtel)

Research Group
Data-Intensive Systems
DOI related publication
https://doi.org/10.1007/978-3-032-05981-9_23
More Info
expand_more
Publication Year
2026
Language
English
Research Group
Data-Intensive Systems
Bibliographical Note
Green Open Access added to TU Delft Institutional Repository as part of the Taverne amendment. More information about this copyright law amendment can be found at https://www.openaccess.nl. Otherwise as indicated in the copyright section: the publisher is the copyright holder of this work and the author uses the Dutch legislation to make this work public.@en
Pages (from-to)
384-399
ISBN (print)
9783032059802
Reuse Rights

Other than for strictly personal use, it is not permitted to download, forward or distribute the text or part of it, without the consent of the author(s) and/or copyright holder(s), unless the work is under an open content license such as Creative Commons.

Abstract

Distributed time series data presents a challenge for federated learning, as clients often possess different feature sets and have misaligned time steps. Existing federated time series models are limited by the assumption of perfect temporal or feature alignment across clients. In this paper, we propose FedTDD, a novel federated time series diffusion model that jointly learns a synthesizer across clients. At the core of FedTDD is a novel data distillation and aggregation framework that reconciles the differences between clients by imputing the misaligned timesteps and features. In contrast to traditional federated learning, FedTDD learns the correlation across clients’ time series through the exchange of local synthetic outputs instead of model parameters. A coordinator iteratively improves a global distiller network by leveraging shared knowledge from clients through the exchange of synthetic data. As the distiller becomes more refined over time, it subsequently enhances the quality of the clients’ local feature estimates, allowing each client to then improve its local imputations for missing data using the latest, more accurate distiller. Experimental results on five datasets demonstrate FedTDD ’s effectiveness compared to centralized training, and the effectiveness of sharing synthetic outputs to transfer knowledge of local time series. Notably, FedTDD achieves 79.4% and 62.8% improvement over local training in Context-FID and Correlational scores. Our code is available at: https://github.com/soizhiwen/FedTDD.

Files

978-3-032-05981-9_23.pdf
(pdf | 2.27 Mb)
License info not available
warning

File under embargo until 23-03-2026