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Some recent advances in measurement error models and methods

机译:测量误差模型和方法的一些最新进展

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摘要

A measurement error model is a regression model with (substantial) measurement errors in the variables. Disregarding these measurement errors in estimating the regression parameters results in asymptotically biased estimators. Several methods have been proposed to eliminate, or at least to reduce, this bias, and the relative efficiency and robustness of these methods have been compared. The paper gives an account of these endeavors. In another context, when data are of a categorical nature, classification errors play a similar role as measurement errors in continuous data. The paper also reviews some recent advances in this field.
机译:测量误差模型是在变量中具有(大量)测量误差的回归模型。在估算回归参数时忽略这些测量误差会导致渐近偏差估算器。已经提出了几种消除或至少减小这种偏差的方法,并且已经比较了这些方法的相对效率和鲁棒性。本文介绍了这些努力。在另一种情况下,当数据具有分类性质时,分类误差起着与连续数据中的测量误差相似的作用。本文还回顾了该领域的一些最新进展。

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