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

机译:基于量化的BSDE和非线性滤波的数值方案的改进误差界限

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We take advantage of recent (see Graf et al., 2008; Pages and Wilbertz, 2012) 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 continuous conditional densities in nonlinear filtering, the analysis of the error brings into play a new robustness result about optimal quantizers, the so-called distortion mismatch property: the L-s-mean quantization error induced by L-r-optimal quantizers of size N converges at the same rate N-1/d for every s epsilon (0, r + d). (C) 2017 Elsevier B.V. All rights reserved.
机译:我们利用近期(见Graf等,2008;页面和Wilbertz,2012)和新结果在最佳量化理论上提高了向后随机微分方程(BSDE)和非线性滤波问题的二次最优量化误差界限。 对于这两个问题,第一个改进依赖于定理的毕达哥拉斯,以便量化条件期望。 虽然在非线性滤波中允许某些本地Lipschitz连续条件密度,但误差的分析带来了新的稳健性导致最佳的量化器,所谓的失真错配特性:LS-均值由LR最佳量化器引起的量化误差 尺寸N以相同的速率N-1 / D收敛(0,R + D)。 (c)2017 Elsevier B.v.保留所有权利。

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