2021
DOI: 10.48550/arxiv.2109.03992
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Stationary Density Estimation of Itô Diffusions Using Deep Learning

Abstract: In this paper, we consider the density estimation problem associated with the stationary measure of ergodic Itô diffusions from a discrete-time series that approximate the solutions of the stochastic differential equations. To take an advantage of the characterization of density function through the stationary solution of a parabolic-type Fokker-Planck PDE, we proceed as follows. First, we employ deep neural networks to approximate the drift and diffusion terms of the SDE by solving appropriate supervised lear… Show more

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