Flow Matching with Gaussian Process Priors for Probabilistic Time Series Forecasting

20
citations
#872
in ICLR 2025
of 3827 papers
5
Top Authors
8
Data Points

Abstract

Recent advancements in generative modeling, particularly diffusion models, have opened new directions for time series modeling, achieving state-of-the-art performance in forecasting and synthesis. However, the reliance of diffusion-based models on a simple, fixed prior complicates the generative process since the data and prior distributions differ significantly. We introduce TSFlow, a conditional flow matching (CFM) model for time series combining Gaussian processes, optimal transport paths, and data-dependent prior distributions. By incorporating (conditional) Gaussian processes, TSFlow aligns the prior distribution more closely with the temporal structure of the data, enhancing both unconditional and conditional generation. Furthermore, we propose conditional prior sampling to enable probabilistic forecasting with an unconditionally trained model. In our experimental evaluation on eight real-world datasets, we demonstrate the generative capabilities of TSFlow, producing high-quality unconditional samples. Finally, we show that both conditionally and unconditionally trained models achieve competitive results across multiple forecasting benchmarks.

Citation History

Jan 26, 2026
0
Jan 27, 2026
0
Jan 27, 2026
0
Feb 1, 2026
18+18
Feb 6, 2026
20+2
Feb 13, 2026
20
Feb 13, 2026
20
Feb 13, 2026
20