In the pivotal variable selection problem, we derive the exact non-asymptotic minimax selector over the class of all $s$-sparse vectors, which is also the Bayes selector with respect to the uniform prior. While this optimal selector is, in general, not realizable in polynomial time, we show that its tractable counterpart (the scan selector) attains the minimax expected Hamming risk to within factor 2, and is also exact minimax with respect to the probability of wrong recovery. As a consequence, we establish explicit lower bounds under the monotone likelihood ratio property and we obtain a tight characterization of the minimax risk in terms of the best separable selector risk. We apply these general results to derive necessary and sufficient conditions of exact and almost full recovery in the location model with light tail distributions and in the problem of group variable selection under Gaussian noise.
翻译:在关键的变量选择问题中,我们从所有以美元计价的矢量的类别上得出准确的非不失色小型选择器,也就是Bayes选择器,与先前的制服相对,这也是Bayes选择器。虽然这一最佳选择器一般在多元制时间无法实现,但我们显示,其可移植的对应器(扫描选择器)在系数2范围内达到了预期的最小仓储风险,在回收错误的可能性方面也是精确的最小选择器。因此,我们在单一方位概率比属性下确立了明确的较低界限,并获得了最精确的可分离选选量风险的严格定性。我们运用这些一般性结果,以光尾分布和高斯噪音下组变量选择问题的方式,在位置模型中得出必要和足够的准确和几乎完全恢复条件。