JMLR

Nonparametric generative modeling for time series via Schrödinger bridge

Authors
Mohamed Hamdouche Pierre Henry-Labordère Huyên Pham
Research Topics
Nonparametric Statistics High-Dimensional Statistics Time Series
Paper Information
  • Journal:
    Journal of Machine Learning Research
  • Added to Tracker:
    Jul 07, 2026
Abstract

We propose a novel generative model for time series based on Schrödinger bridge (SB) approach. This consists in the entropic interpolation via optimal transport between a reference probability measure on path space and a target measure consistent with the joint data distribution of the time series. The solution is characterized by a stochastic differential equation on finite horizon with a path-dependent drift function, hence respec\-ting the temporal dynamics of the time series distribution. We estimate the drift function from data samples by nonparametric, e.g. kernel regression methods, and the simulation of the SB diffusion yields new synthetic data samples of the time series. The performance of our generative model is evaluated through a series of numerical experiments. First, we test with autoregressive models, a GARCH Model, and the example of fractional Brownian motion, and measure the accuracy of our algorithm with marginal, temporal dependencies metrics, and predictive scores. Next, we use our SB generated synthetic samples for the application to deep hedging on real-data sets.

Author Details
Mohamed Hamdouche
Author
Pierre Henry-Labordère
Author
Huyên Pham
Author
Research Topics & Keywords
Nonparametric Statistics
Research Area
High-Dimensional Statistics
Research Area
Time Series
Research Area
Citation Information
APA Format
Mohamed Hamdouche , Pierre Henry-Labordère & Huyên Pham . Nonparametric generative modeling for time series via Schrödinger bridge. Journal of Machine Learning Research .
BibTeX Format
@article{paper1453,
  title = { Nonparametric generative modeling for time series via Schrödinger bridge },
  author = { Mohamed Hamdouche and Pierre Henry-Labordère and Huyên Pham },
  journal = { Journal of Machine Learning Research },
  url = { https://www.jmlr.org/papers/v27/23-1162.html }
}