Generative Diffusion Model for Risk-Neutral Derivative Pricing
Nilay Tiwari

TL;DR
This paper introduces a diffusion model-based framework for risk-neutral derivative pricing that accurately reproduces terminal distributions and prices complex derivatives under a risk-neutral measure.
Contribution
It develops a novel method connecting diffusion models with classical risk-neutral SDEs, enabling arbitrage-free derivative pricing through generative modeling.
Findings
Reproduces risk-neutral terminal distributions accurately
Prices European and path-dependent derivatives effectively
Ensures martingale condition in generated price paths
Abstract
Denoising diffusion probabilistic models (DDPMs) have emerged as powerful generative models for complex distributions, yet their use in arbitrage-free derivative pricing remains largely unexplored. Financial asset prices are naturally modeled by stochastic differential equations (SDEs), whose forward and reverse density evolution closely parallels the forward noising and reverse denoising structure of diffusion models. In this paper, we develop a framework for using DDPMs to generate risk-neutral asset price dynamics for derivative valuation. Starting from log-return dynamics under the physical measure, we analyze the associated forward diffusion and derive the reverse-time SDE. We show that the change of measure from the physical to the risk-neutral measure induces an additive shift in the score function, which translates into a closed-form risk-neutral epsilon shift in the DDPM…
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Taxonomy
TopicsStochastic processes and financial applications · Complex Systems and Time Series Analysis · Functional Brain Connectivity Studies
