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The Risk of James-Stein and Lasso Shrinkage

机译:James-Stein和Lasso收缩的风险

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This article compares the mean-squared error (or (2) risk) of ordinary least squares (OLS), James-Stein, and least absolute shrinkage and selection operator (Lasso) shrinkage estimators in simple linear regression where the number of regressors is smaller than the sample size. We compare and contrast the known risk bounds for these estimators, which shows that neither James-Stein nor Lasso uniformly dominates the other. We investigate the finite sample risk using a simple simulation experiment. We find that the risk of Lasso estimation is particularly sensitive to coefficient parameterization, and for a significant portion of the parameter space Lasso has higher mean-squared error than OLS. This investigation suggests that there are potential pitfalls arising with Lasso estimation, and simulation studies need to be more attentive to careful exploration of the parameter space.
机译:本文在简单线性回归中比较了最小二乘方(OLS),James-Stein和最小绝对收缩和选择算子(Lasso)收缩估计量的均方误差(或(2)风险)比样本量大。我们比较并对比了这些估计量的已知风险范围,这表明James-Stein和Lasso都无法统一地主导另一个。我们使用简单的模拟实验来研究有限样本风险。我们发现,套索估计的风险对系数参数化特别敏感,并且对于大部分参数空间,套索具有比OLS高的均方误差。这项研究表明,套索估计会带来潜在的陷阱,模拟研究需要更加注意仔细探索参数空间。

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