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Estimating the error variance in a high-dimensional linear model

机译:估计高维线性模型中的误差方差

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The lasso has been studied extensively as a tool for estimating the coefficient vector in the high-dimensional linear model; however, considerably less is known about estimating the error variance in this context. In this paper, we propose the natural lasso estimator for the error variance, which maximizes a penalized likelihood objective. A key aspect of the natural lasso is that the likelihood is expressed in terms of the natural parameterization of the multi-parameter exponential family of a Gaussian with unknown mean and variance. The result is a remarkably simple estimator of the error variance with provably good performance in terms of mean squared error. These theoretical results do not require placing any assumptions on the design matrix or the true regression coefficients. We also propose a companion estimator, called the organic lasso, which theoretically does not require tuning of the regularization parameter. Both estimators do well empirically compared to pre-existing methods, especially in settings where successful recovery of the true support of the coefficient vector is hard. Finally, we show that existing methods can do well under fewer assumptions than previously known, thus providing a fuller story about the problem of estimating the error variance in high-dimensional linear models.
机译:已经广泛地研究了套索作为估计高维线性模型中系数矢量的工具;然而,关于估计此上下文中的误差方差,已知的很多较少。在本文中,我们提出了自然套索估计的误差方差,最大化了惩罚的可能性目标。自然套索的一个关键方面是,在高斯的多参数指数家庭的天然参数方面表达了具有未知均值和方差的可能性。结果是在均方误差误差方面具有显着简单的误差方差。这些理论结果不需要在设计矩阵或真正的回归系数上放置任何假设。我们还提出了一个称为有机套索的伴侣估算器,理论上不需要调整正则化参数。与预先存在的方法相比,这两个估计人员都在经验上做得好,特别是在成功恢复系数载体的真正支持的设置中。最后,我们表明现有方法可以在比以前已知的假设较少的假设下做得好,从而为估计高维线性模型中的误差方差的问题提供更富有的故事。

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