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arxiv: 1112.2986 · v2 · pith:DVHDUDOQnew · submitted 2011-12-13 · 🧮 math.PR · stat.CO

Dimensional reduction in nonlinear filtering: A homogenization approach

classification 🧮 math.PR stat.CO
keywords filterhomogenizednonlinearachievedallowsapproachasymptoticbdsdes
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We propose a homogenized filter for multiscale signals, which allows us to reduce the dimension of the system. We prove that the nonlinear filter converges to our homogenized filter with rate $\sqrt{\varepsilon}$. This is achieved by a suitable asymptotic expansion of the dual of the Zakai equation, and by probabilistically representing the correction terms with the help of BDSDEs.

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