Nonlinear Filtering of Diffusion Processes in Correlated Noise: Analysis by Separation of Variables |
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Authors: | Sergey V. Lototsky |
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Affiliation: | (1) Department of Mathematics, University of Southern California, 1042 Downey Way, Los Angeles, CA 90089-1113, USA lototsky@math.usc.edu, US |
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Abstract: | ![]() Abstract. An approximation to the solution of a stochastic parabolic equation is constructed using the Galerkin approximation followed by the Wiener chaos decomposition. The result is applied to the nonlinear filtering problem for the time-homogeneous diffusion model with correlated noise. An algorithm is proposed for computing recursive approximations of the unnormalized filtering density and filter, and the errors of the approximations are estimated. Unlike most existing algorithms for nonlinear filtering, the real-time part of the algorithm does not require solving partial differential equations or evaluating integrals. The algorithm can be used for both continuous and discrete time observations. par |
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Keywords: | . Galerkin approximation Wiener chaos Zakai equation. AMS Classification. Primary 60H15 Secondary 60G35 62M20 93E11. |
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