Redirecting to original paper in 30 seconds...
Click below to go immediately or wait for automatic redirect
📄 Abstract
Abstract: This paper develops a rigorous probabilistic framework that extends denoising
diffusion models to the setting of noncommutative random variables. Building on
Voiculescu's theory of free entropy and free Fisher information, we formulate
diffusion and reverse processes governed by operator-valued stochastic dynamics
whose spectral measures evolve by additive convolution. Using tools from free
stochastic analysis -- including a Malliavin calculus and a Clark--Ocone
representation -- we derive the reverse-time stochastic differential equation
driven by the conjugate variable, the analogue of the classical score function.
The resulting dynamics admit a gradient-flow structure in the noncommutative
Wasserstein space, establishing an information-geometric link between entropy
production, transport, and deconvolution. We further construct a variational
scheme analogous to the Jordan--Kinderlehrer--Otto (JKO) formulation and prove
convergence toward the semicircular equilibrium. The framework provides
functional inequalities (free logarithmic Sobolev, Talagrand, and HWI) that
quantify entropy dissipation and Wasserstein contraction. These results unify
diffusion-based generative modeling with the geometry of operator-valued
information, offering a mathematical foundation for generative learning on
structured and high-dimensional data.
Submitted
October 26, 2025
Key Contributions
Develops a rigorous probabilistic framework extending denoising diffusion models to noncommutative random variables using free entropy and free Fisher information. It formulates dynamics, derives reverse SDEs via Malliavin calculus, and establishes a gradient-flow structure in noncommutative Wasserstein space.
Business Value
Primarily theoretical, advancing the mathematical understanding of generative models. Potential long-term impact on areas like quantum machine learning or advanced signal processing.