A diffusion-based generative model for financial time series via geometric Brownian motion
By: Gihun Kim, Sun-Yong Choi, Yeoneung Kim
Potential Business Impact:
Makes stock market predictions more realistic.
We propose a novel diffusion-based generative framework for financial time series that incorporates geometric Brownian motion (GBM), the foundation of the Black--Scholes theory, into the forward noising process. Unlike standard score-based models that treat price trajectories as generic numerical sequences, our method injects noise proportionally to asset prices at each time step, reflecting the heteroskedasticity observed in financial time series. By accurately balancing the drift and diffusion terms, we show that the resulting log-price process reduces to a variance-exploding stochastic differential equation, aligning with the formulation in score-based generative models. The reverse-time generative process is trained via denoising score matching using a Transformer-based architecture adapted from the Conditional Score-based Diffusion Imputation (CSDI) framework. Empirical evaluations on historical stock data demonstrate that our model reproduces key stylized facts heavy-tailed return distributions, volatility clustering, and the leverage effect more realistically than conventional diffusion models.
Similar Papers
Bayesian Inference of Geometric Brownian Motion: An Extension with Jumps
Applications
Predicts stock prices better, even with sudden changes.
Forecasting implied volatility surface with generative diffusion models
Computational Finance
Creates perfect, safe stock price predictions.
Data-driven generative simulation of SDEs using diffusion models
Machine Learning (CS)
Creates realistic data for smarter money decisions.