Robust time series generation via Schrödinger Bridge: a comprehensive evaluation
By: Alexandre Alouadi , Baptiste Barreau , Laurent Carlier and more
Potential Business Impact:
Creates realistic future data from past patterns.
We investigate the generative capabilities of the Schr\"odinger Bridge (SB) approach for time series. The SB framework formulates time series synthesis as an entropic optimal interpolation transport problem between a reference probability measure on path space and a target joint distribution. This results in a stochastic differential equation over a finite horizon that accurately captures the temporal dynamics of the target time series. While the SB approach has been largely explored in fields like image generation, there is a scarcity of studies for its application to time series. In this work, we bridge this gap by conducting a comprehensive evaluation of the SB method's robustness and generative performance. We benchmark it against state-of-the-art (SOTA) time series generation methods across diverse datasets, assessing its strengths, limitations, and capacity to model complex temporal dependencies. Our results offer valuable insights into the SB framework's potential as a versatile and robust tool for time series generation.
Similar Papers
A Closed-Form Framework for Schrödinger Bridges Between Arbitrary Densities
Computation
Makes computers create realistic images from noise.
Few-step Adversarial Schrödinger Bridge for Generative Speech Enhancement
Sound
Cleans up noisy sounds with fewer steps.
Branched Schrödinger Bridge Matching
Machine Learning (CS)
Helps AI learn many different paths from one start.