基于期望最大化的稀疏马蹄估计

Shu Yu Tew, D. Schmidt, E. Makalic
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引用次数: 1

摘要

已知马蹄形先验具有稀疏参数向量贝叶斯估计所需的许多性质,但其密度函数缺乏解析形式。因此,对于后验模式,找到一个封闭的解是具有挑战性的。传统的马蹄估计使用后验均值来估计参数,但这些估计不是稀疏的。我们提出了一种新的期望最大化(EM)程序,用于计算标准线性模型中参数的MAP估计。我们的方法的一个特别的优点是m步只依赖于先验的形式,它独立于可能性的形式。我们介绍了这个EM过程的几个简单修改,允许直接扩展到广义线性模型。在模拟和真实数据上进行的实验中,我们的方法在统计性能和计算成本方面与最先进的稀疏估计方法相当或优于最先进的稀疏估计方法。
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Sparse Horseshoe Estimation via Expectation-Maximisation
The horseshoe prior is known to possess many desirable properties for Bayesian estimation of sparse parameter vectors, yet its density function lacks an analytic form. As such, it is challenging to find a closed-form solution for the posterior mode. Conventional horseshoe estimators use the posterior mean to estimate the parameters, but these estimates are not sparse. We propose a novel expectation-maximisation (EM) procedure for computing the MAP estimates of the parameters in the case of the standard linear model. A particular strength of our approach is that the M-step depends only on the form of the prior and it is independent of the form of the likelihood. We introduce several simple modifications of this EM procedure that allow for straightforward extension to generalised linear models. In experiments performed on simulated and real data, our approach performs comparable, or superior to, state-of-the-art sparse estimation methods in terms of statistical performance and computational cost.
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