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On the Least Trimmed Squares Estimator

机译:最小二乘方估计

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The linear least trimmed squares (LTS) estimator is a statistical technique for fitting a linear model to a set of points. Given a set of n points in M~d and given an integer trimming parameter h ≤n, LTS involves computing the (d - l)-dimensional hyperplane that minimizes the sum of the smallest h squared residuals. LTS is a robust estimator with a 50 %-breakdown point, which means that the estimator is insensitive to corruption due to outliers, provided that the outliers constitute less than 50 % of the set. LTS is closely related to the well known LMS estimator, in which the objective is to minimize the median squared residual, and LTA, in which the objective is to minimize the sum of the smallest 50 % absolute residuals. LTS has the advantage of being statistically more efficient than LMS. Unfortunately, the computational complexity of LTS is less understood than LMS. In this paper we present new algorithms, both exact and approximate, for computing the LTS estimator. We also present hardness results for exact and approximate LTS. A number of our results apply to the LTA estimator as well.
机译:线性最小修剪平方(LTS)估计器是一种用于将线性模型拟合到一组点的统计技术。给定M_d中的一组n个点并给定整数修整参数h≤n,LTS涉及计算使最小的h平方残差之和最小的(d-1)维超平面。 LTS是具有50%击穿点的鲁棒估计器,这意味着只要异常值占集合的50%以下,该估计器对由于异常值引起的损坏不敏感。 LTS与众所周知的LMS估计器和LTA密切相关,在LMS估计器中,目标是最小化中值平方残差;在LTA中,目标是最小化最小的50%绝对残差之和。 LTS的优势是统计上比LMS更有效。不幸的是,与LMS相比,人们对LTS的计算复杂性了解较少。在本文中,我们提出了用于计算LTS估计量的新算法,包括精确算法和近似算法。我们还提供了精确和近似LTS的硬度结果。我们的许多结果也适用于LTA估算器。

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