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A partially collapsed Gibbs sampler with accelerated convergence for EEG source localization

机译:部分折叠的Gibbs采样器具有加速的脑电信号源定位收敛性

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This paper addresses the problem of designing efficient sampling moves in order to accelerate the convergence of MCMC methods. The Partially collapsed Gibbs sampler (PCGS) takes advantage of variable reordering, marginalization and trimming to accelerate the convergence of the traditional Gibbs sampler. This work studies two specific moves which allow the convergence of the PCGS to be further improved. It considers a Bayesian model where structured sparsity is enforced using a multivariate Bernoulli Laplacian prior. The posterior distribution associated with this model depends on mixed discrete and continuous random vectors. Due to the discrete part of the posterior, the conventional PCGS gets easily stuck around local maxima. Two Metropolis-Hastings moves based on multiple dipole random shifts and inter-chain proposals are proposed to overcome this problem. The resulting PCGS is applied to EEG source localization. Experiments conducted with synthetic data illustrate the effectiveness of this PCGS with accelerated convergence.
机译:本文解决了设计有效采样移动以加速MCMC方法收敛的问题。部分折叠的Gibbs采样器(PCGS)利用变量重排序,边缘化和修整功能来加快传统Gibbs采样器的收敛速度。这项工作研究了两个特定的步骤,这些步骤可以进一步改善PCGS的收敛性。它考虑了贝叶斯模型,其中使用多元伯努利拉普拉斯先验来实施结构化稀疏性。与该模型关联的后验分布取决于混合的离散和连续随机向量。由于后部的离散部分,常规PCGS容易卡在局部最大值周围。为了克服这个问题,提出了两个基于多个偶极子随机移位的Metropolis-Hastings移动和链间建议。所得的PCGS将应用于脑电图源定位。用合成数据进行的实验说明了该PCGS加速收敛的有效性。

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