Improved error bounds for quantization based numerical schemes for BSDE and nonlinear filtering

Abstract

We take advantage of recent and new results on optimal quantization theory to improve the quadratic optimal quantization error bounds for backward stochastic differential equations (BSDE) and nonlinear filtering problems. For both problems, a first improvement relies on a Pythagoras like Theorem for quantized conditional expectation. While allowing for some locally Lipschitz functions conditional densities in nonlinear filtering, the analysis of the error brings into playing a new robustness result about optimal quantizers, the so-called distortion mismatch property: Lr-quadratic optimal quantizers of size N behave in Ls in term of mean error at the same rate N- 1d, 0<s< r+d.

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