论文标题
自动相关性确定的稀疏方法
Sparse Methods for Automatic Relevance Determination
论文作者
论文摘要
这项工作考虑了在非线性系统识别中应用贝叶斯回归中稀疏性的方法。我们首先审查自动相关性确定(ARD),并在分析上证明需要进行其他正则化或阈值以实现稀疏模型。然后,我们讨论两类基于正则化和基于阈值的方法,它们基于ARD以学习线性问题的简约解决方案。在正交协变量的情况下,我们通过分析表明,在用稀疏解决方案的线性系统中学习一系列的活动术语方面表现出了良好的表现。提出了几个示例问题,以比较提出的方法的集合,以数百个要素的基础的优势和局限性。本文的目的是分析和理解导致多种算法的假设并提供理论和经验结果,以便读者可以获得洞察力并就稀疏的贝叶斯回归做出更明智的选择。
This work considers methods for imposing sparsity in Bayesian regression with applications in nonlinear system identification. We first review automatic relevance determination (ARD) and analytically demonstrate the need to additional regularization or thresholding to achieve sparse models. We then discuss two classes of methods, regularization based and thresholding based, which build on ARD to learn parsimonious solutions to linear problems. In the case of orthogonal covariates, we analytically demonstrate favorable performance with regards to learning a small set of active terms in a linear system with a sparse solution. Several example problems are presented to compare the set of proposed methods in terms of advantages and limitations to ARD in bases with hundreds of elements. The aim of this paper is to analyze and understand the assumptions that lead to several algorithms and to provide theoretical and empirical results so that the reader may gain insight and make more informed choices regarding sparse Bayesian regression.