Robust linear regression for high‐dimensional data: An overview

IF 4.4 2区 数学 Q1 STATISTICS & PROBABILITY Wiley Interdisciplinary Reviews-Computational Statistics Pub Date : 2020-07-08 DOI:10.1002/wics.1524
P. Filzmoser, K. Nordhausen
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引用次数: 24

Abstract

Digitization as the process of converting information into numbers leads to bigger and more complex data sets, bigger also with respect to the number of measured variables. This makes it harder or impossible for the practitioner to identify outliers or observations that are inconsistent with an underlying model. Classical least‐squares based procedures can be affected by those outliers. In the regression context, this means that the parameter estimates are biased, with consequences on the validity of the statistical inference, on regression diagnostics, and on the prediction accuracy. Robust regression methods aim at assigning appropriate weights to observations that deviate from the model. While robust regression techniques are widely known in the low‐dimensional case, researchers and practitioners might still not be very familiar with developments in this direction for high‐dimensional data. Recently, different strategies have been proposed for robust regression in the high‐dimensional case, typically based on dimension reduction, on shrinkage, including sparsity, and on combinations of such techniques. A very recent concept is downweighting single cells of the data matrix rather than complete observations, with the goal to make better use of the model‐consistent information, and thus to achieve higher efficiency of the parameter estimates.
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高维数据的稳健线性回归:综述
数字化是将信息转换为数字的过程,它会产生更大、更复杂的数据集,测量变量的数量也会更大。这使得从业者更难或不可能识别出与基础模型不一致的异常值或观察结果。基于经典最小二乘法的程序可能会受到这些异常值的影响。在回归背景下,这意味着参数估计有偏差,对统计推断的有效性、回归诊断和预测准确性产生影响。稳健回归方法旨在为偏离模型的观测值分配适当的权重。尽管稳健回归技术在低维数据中广为人知,但研究人员和从业者可能仍然不太熟悉高维数据在这一方向上的发展。最近,在高维情况下,针对稳健回归提出了不同的策略,通常基于降维、收缩(包括稀疏性)以及这些技术的组合。最近的一个概念是降低数据矩阵的单个单元格的权重,而不是完整的观测值,目的是更好地利用模型一致性信息,从而实现更高的参数估计效率。
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来源期刊
CiteScore
6.20
自引率
0.00%
发文量
31
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