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A type of biased estimators for linear models with uniformly biased data

机译:具有均匀偏差数据的线性模型的一种偏差估计量

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摘要

The objective of this paper is the comparison of various types of estimators that can be used in linear models with uniformly biased data. This particular case refers to adjustment problems where the available measurements are affected by a common, unknown and uniform offset. The classic least-squares (LS) unbiased estimators for this type of models are reviewed in detail, and some additional remarks on their properties and performance are given. Furthermore, a family of biased estimators for linear models with uniformly biased data is introduced, which has the potential to provide better performance (in terms of mean squared estimation error) than the ordinary LS unbiased solutions. A number of different regularization viewpoints that can be equivalently associated with these biased estimators are presented, along with a discussion on various selection strategies that can be employed for the choice of the regularization parameter that enters into the biased estimation algorithm.
机译:本文的目的是比较可用于具有均匀偏差数据的线性模型中的各种类型的估计量。这种特殊情况指的是调整问题,其中可用的测量值受到公共,未知和均匀偏移的影响。对该模型的经典最小二乘(LS)无偏估计量进行了详细回顾,并给出了有关其性质和性能的其他说明。此外,引入了带有均匀偏差数据的线性模型的偏差估计器系列,与普通的LS无偏差解相比,它有可能提供更好的性能(就均方根估计误差而言)。提出了可以与这些有偏估计量等价地关联的许多不同的正则化观点,并讨论了可用于选择进入有偏估计算法的正则化参数的各种选择策略。

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