Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

FeDaL: Federated Dataset Learning for General Time Series Foundation Models

About

Dataset-level heterogeneity introduces significant domain biases that fundamentally degrade generalization on general Time Series Foundation Models (TSFMs), yet this challenge remains underexplored. This paper rethinks the from-scratch training of TSFMs using the paradigm of federated learning. We propose a novel Federated Dataset Learning (FeDaL) approach to tackle heterogeneous time series by learning dataset-agnostic temporal representations. Specifically, the distributed architecture of federated learning is a nature solution to decompose heterogeneous TS datasets into shared generalized knowledge and preserved personalized knowledge. Moreover, based on the TSFM architecture, FeDaL explicitly mitigates both local and global biases by adding two complementary mechanisms: Domain Bias Elimination (DBE) and Global Bias Elimination (GBE). FeDaL`s cross-dataset generalization has been extensively evaluated in real-world datasets spanning eight tasks (including various regression and classification), against 54 baselines. We further analyze federated scaling behavior, showing how data volume, client count, and join rate affect model performance under decentralization. Our code is publicly available at https://github.com/shengchaochen82/FeDaL

Shengchao Chen, Guodong Long, Michael Blumenstein, Jing Jiang• 2025

Related benchmarks

TaskDatasetResultRank
Long-term forecastingETTm1
MSE0.319
375
Long-term forecastingETTh1
MSE0.347
365
Anomaly DetectionSMD
F1 Score88.46
359
Long-term forecastingETTm2
MSE0.261
310
Anomaly DetectionSWaT
F1 Score95.4
276
Long-term forecastingETTh2
MSE0.307
266
Long-term time-series forecastingILI
MSE1.355
102
Long-term forecastingWeather
MSE0.255
88
Short-term forecastingM4
SMAPE11.412
74
Anomaly DetectionSMAP
F1 Score71.7
69
Showing 10 of 22 rows

Other info

Follow for update