Sampling, feasibility, and priors in Bayesian estimation

A. Chorin, F. Lu, Robert N. Miller, M. Morzfeld, Xuemin Tu
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引用次数: 5

Abstract

Importance sampling algorithms are discussed in detail, with an emphasis on implicit sampling, and applied to data assimilation via particle filters. Implicit sampling makes it possible to use the data to find high-probability samples at relatively low cost, making the assimilation more efficient. A new analysis of the feasibility of data assimilation is presented, showing in detail why feasibility depends on the Frobenius norm of the covariance matrix of the noise and not on the number of variables. A discussion of the convergence of particular particle filters follows. A major open problem in numerical data assimilation is the determination of appropriate priors, a progress report on recent work on this problem is given. The analysis highlights the need for a careful attention both to the data and to the physics in data assimilation problems.
抽样,可行性和先验贝叶斯估计
详细讨论了重要采样算法,重点讨论了隐式采样算法,并将其应用于粒子滤波器的数据同化。隐式抽样使得利用数据以相对较低的成本找到高概率样本成为可能,使同化更有效。对数据同化的可行性进行了新的分析,详细说明了为什么可行性取决于噪声协方差矩阵的Frobenius范数而不是变量的数量。下面讨论了特定粒子滤波器的收敛性。数值资料同化的一个主要问题是确定合适的先验,本文给出了关于这一问题的最新研究进展报告。分析强调,在数据同化问题中,需要对数据和物理都进行仔细的注意。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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