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Main Authors: Gao, Xuefeng, Zha, Jiale, Zhou, Xun Yu
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2509.08731
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author Gao, Xuefeng
Zha, Jiale
Zhou, Xun Yu
author_facet Gao, Xuefeng
Zha, Jiale
Zhou, Xun Yu
contents This paper introduces a new approach to generating sample paths of unknown Markovian stochastic differential equations (SDEs) using diffusion models, a class of generative AI methods commonly employed in image and video applications. Unlike the traditional Monte Carlo methods for simulating SDEs, which require explicit specifications of the drift and diffusion coefficients, ours takes a model-free, data-driven approach. Given a finite set of sample paths from an SDE, we utilize conditional diffusion models to generate new, synthetic paths of the same SDE. Numerical experiments show that our method consistently outperforms two alternative methods in terms of the Kullback--Leibler (KL) divergence between the distributions of the target SDE paths and the generated ones. Moreover, we present a theoretical error analysis deriving an explicit bound on the said KL divergence. Finally, in simulation and empirical studies, we leverage these synthetically generated sample paths to boost the performance of reinforcement learning algorithms for continuous-time mean--variance portfolio selection, hinting promising applications of our study in financial analysis and decision-making.
format Preprint
id arxiv_https___arxiv_org_abs_2509_08731
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Generating solution paths of Markovian stochastic differential equations using diffusion models
Gao, Xuefeng
Zha, Jiale
Zhou, Xun Yu
Machine Learning
This paper introduces a new approach to generating sample paths of unknown Markovian stochastic differential equations (SDEs) using diffusion models, a class of generative AI methods commonly employed in image and video applications. Unlike the traditional Monte Carlo methods for simulating SDEs, which require explicit specifications of the drift and diffusion coefficients, ours takes a model-free, data-driven approach. Given a finite set of sample paths from an SDE, we utilize conditional diffusion models to generate new, synthetic paths of the same SDE. Numerical experiments show that our method consistently outperforms two alternative methods in terms of the Kullback--Leibler (KL) divergence between the distributions of the target SDE paths and the generated ones. Moreover, we present a theoretical error analysis deriving an explicit bound on the said KL divergence. Finally, in simulation and empirical studies, we leverage these synthetically generated sample paths to boost the performance of reinforcement learning algorithms for continuous-time mean--variance portfolio selection, hinting promising applications of our study in financial analysis and decision-making.
title Generating solution paths of Markovian stochastic differential equations using diffusion models
topic Machine Learning
url https://arxiv.org/abs/2509.08731