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Relabeling and Summarizing Posterior Distributions in Signal Decomposition Problems When the Number of Components is Unknown

机译:当分量数未知时,重新标记和总结信号分解问题中的后验分布

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This paper addresses the problems of relabeling and summarizing posterior distributions that typically arise, in a Bayesian framework, when dealing with signal decomposition problems with an unknown number of components. Such posterior distributions are defined over union of subspaces of differing dimensionality and can be sampled from using modern Monte Carlo techniques, for instance, the increasingly popular RJ-MCMC method. No generic approach is available, however, to summarize the resulting variable-dimensional samples and extract from them component-specific parameters. We propose a novel approach, named Variable-dimensional Approximate Posterior for Relabeling and Summarizing (VAPoRS), to this problem, which consists of approximating the posterior distribution of interest by a “simple”—but still variable-dimensional—parametric distribution. The distance between the two distributions is measured using the Kullback–Leibler divergence, and a Stochastic EM-type algorithm, driven by the RJ-MCMC sampler, is proposed to estimate the parameters. Two signal decomposition problems are considered to show the capability of VAPoRS both for relabeling and for summarizing variable dimensional posterior distributions: the classical problem of detecting and estimating sinusoids in white Gaussian noise on the one hand, and a particle counting problem motivated by the Pierre Auger project in astrophysics on the other hand.
机译:本文讨论了在处理具有未知数量的分量的信号分解问题时,通常会在贝叶斯框架中重新标记和总结后验分布的问题。这种后验分布是在不同维数子空间的并集上定义的,可以使用现代蒙特卡洛技术(例如,越来越流行的RJ-MCMC方法)进行采样。但是,没有通用的方法可以汇总所得的可变维样本并从中提取特定于组件的参数。我们针对此问题提出了一种新颖的方法,称为“可变维近似后验标记和摘要”(VAPoRS),该方法包括通过“简单”但仍为可变维的参数分布来近似所关注的后验分布。使用Kullback-Leibler散度测量两个分布之间的距离,并提出了由RJ-MCMC采样器驱动的随机EM型算法来估计参数。我们考虑了两个信号分解问题,以显示VAPoRS的能力:重新标记和概括可变维后验分布:一方面是检测和估计高斯白噪声中正弦曲线的经典问题,另一方面是由Pierre Auger激发的粒子计数问题另一方面是天体物理学项目。

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