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Model selection: Two fundamental measures of coherence and their algorithmic significance

机译:模型选择:一致性的两个基本度量及其算法意义

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The problem of model selection arises in a number of contexts, such as compressed sensing, subset selection in linear regression, estimation of structures in graphical models, and signal denoising. This paper generalizes the notion of incoherence in the existing literature on model selection and introduces two fundamental measures of coherence—termed as the worst-case coherence and the average coherence—among the columns of a design matrix. In particular, it utilizes these two measures of coherence to provide an in-depth analysis of a simple one-step thresholding (OST) algorithm for model selection. One of the key insights offered by the ensuing analysis is that OST is feasible for model selection as long as the design matrix obeys an easily verifiable property. In addition, the paper also characterizes the model-selection performance of OST in terms of the worstcase coherence, μ, and establishes that OST performs nearoptimally in the low signal-to-noise ratio regime for N × C design matrices with μ ≈ O(N−1/2). Finally, in contrast to some of the existing literature on model selection, the analysis in the paper is nonasymptotic in nature, it does not require knowledge of the true model order, it is applicable to generic (random or deterministic) design matrices, and it neither requires submatrices of the design matrix to have full rank, nor does it assume a statistical prior on the values of the nonzero entries of the data vector.
机译:在许多情况下都会出现模型选择的问题,例如压缩感测,线性回归中的子集选择,图形模型中的结构估计以及信号降噪。本文在模型选择的现有文献中概括了不相干的概念,并在设计矩阵的各列中介绍了两个基本的相干性度量方法,称为最坏情况相干性和平均相干性。特别是,它利用这两种一致性测量方法来提供对用于模型选择的简单单步阈值化(OST)算法的深入分析。随后的分析提供的主要见解之一是,只要设计矩阵遵循易于验证的属性,OST对于模型选择是可行的。此外,本文还根据最坏情况的相干性μ表征了OST的模型选择性能,并建立了OST在低信噪比条件下对于μ≈O( N −1/2 )。最后,与现有的一些关于模型选择的文献相比,本文的分析本质上是非渐近的,它不需要了解真正的模型顺序,它适用于通用(随机或确定性)设计矩阵,并且既不要求设计矩阵的子矩阵具有最高等级,也不要求对数据矢量的非零条目的值进行统计先验。

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