20
2

Statistical Spatially Inhomogeneous Diffusion Inference

Abstract

Inferring a diffusion equation from discretely-observed measurements is a statistical challenge of significant importance in a variety of fields, from single-molecule tracking in biophysical systems to modeling financial instruments. Assuming that the underlying dynamical process obeys a dd-dimensional stochastic differential equation of the form \mathrm{d}\boldsymbol{x}_t=\boldsymbol{b}(\boldsymbol{x}_t)\mathrm{d} t+\Sigma(\boldsymbol{x}_t)\mathrm{d}\boldsymbol{w}_t, we propose neural network-based estimators of both the drift b\boldsymbol{b} and the spatially-inhomogeneous diffusion tensor D=ΣΣTD = \Sigma\Sigma^{T} and provide statistical convergence guarantees when b\boldsymbol{b} and DD are ss-H\"older continuous. Notably, our bound aligns with the minimax optimal rate N2s2s+dN^{-\frac{2s}{2s+d}} for nonparametric function estimation even in the presence of correlation within observational data, which necessitates careful handling when establishing fast-rate generalization bounds. Our theoretical results are bolstered by numerical experiments demonstrating accurate inference of spatially-inhomogeneous diffusion tensors.

View on arXiv
Comments on this paper