Deep Learning for the Benes Filter
Alexander Lobbe

TL;DR
This paper introduces a neural network-based numerical method for solving the Benes filter, a solvable stochastic filtering model, using deep learning to approximate the solution density with adaptive domain techniques.
Contribution
It presents a novel mesh-free neural network approach with adaptive domain handling for the Benes filter, enhancing numerical approximation of filtering SPDEs.
Findings
Neural network method effectively approximates the Benes filter density.
Adaptive domain improves the accuracy of the neural network approximation.
The method offers a promising approach for high-dimensional filtering problems.
Abstract
The Benes filter is a well-known continuous-time stochastic filtering model in one dimension that has the advantage of being explicitly solvable. From an evolution equation point of view, the Benes filter is also the solution of the filtering equations given a particular set of coefficient functions. In general, the filtering stochastic partial differential equations (SPDE) arise as the evolution equations for the conditional distribution of an underlying signal given partial, and possibly noisy, observations. Their numerical approximation presents a central issue for theoreticians and practitioners alike, who are actively seeking accurate and fast methods, especially for such high-dimensional settings as numerical weather prediction, for example. In this paper we present a brief study of a new numerical method based on the mesh-free neural network representation of the density of the…
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Taxonomy
TopicsHydrology and Drought Analysis · Meteorological Phenomena and Simulations · Energy Load and Power Forecasting
