University of Hamburg, Von-Melle-Park 5, 20146, Hamburg, Germany.
Psychometrika. 2023 Mar;88(1):274-301. doi: 10.1007/s11336-022-09872-8. Epub 2022 Jun 5.
Given a squared Euclidean norm penalty, we examine some less well-known properties of shrinkage estimates. In particular, we highlight that it is possible for some components of the shrinkage estimator to be placed further away from the prior mean than the original estimate. An analysis of this effect is provided within three different modeling settings-encompassing linear, logistic, and ordinal regression models. Additional simulations show that the outlined effect is not a mathematical artefact, but likely to occur in practice. As a byproduct, they also highlight the possibilities of sign reversals ("overshoots") for shrinkage estimates. We point out practical consequences and challenges, which might arise from the observed effects with special emphasis on psychometrics.
在给定平方欧几里得范数惩罚的情况下,我们研究了收缩估计的一些不太为人知的性质。特别是,我们强调收缩估计器的某些分量有可能比原始估计值更远离先验均值。在三种不同的建模环境(包括线性、逻辑和有序回归模型)中,对这种效应进行了分析。额外的模拟表明,所描述的效应不是数学假象,而是很可能在实际中发生。作为副产品,它们还突出了收缩估计值出现符号反转(“过度调整”)的可能性。我们指出了可能出现的实际后果和挑战,特别是在心理计量学方面。