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Robust Regression Using Data Partitioning and M-Estimation

机译:使用数据分区和M估计进行稳健回归

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摘要

We propose a new robust regression estimator using data partition technique and M estimation (DPM). The data partition technique is designed to define a small fixed number of subsets of the partitioned data set and to produce corresponding ordinary least square (OLS) fits in each subset, contrary to the resampling technique of existing robust estimators such as the least trimmed squares estimator. The proposed estimator shares a common strategy with the median ball algorithm estimator that is obtained from the OLS trial fits only on a fixed number of subsets of the data. We examine performance of the DPM estimator in the eleven challenging data sets and simulation studies. We also compare the DPM with the five commonly used robust estimators using empirical convergence rates relative to the OLS for clean data, robustness through mean squared error and bias, masking and swamping probabilities, the ability of detecting the known outliers, and the regression and affine equivariances.
机译:我们提出了一种使用数据分区技术和M估计(DPM)的新的鲁棒回归估计器。数据分区技术旨在定义少量固定数量的分区数据集子集,并在每个子集中生成相应的普通最小二乘(OLS)拟合,这与现有的鲁棒估计器(如最小修剪平方估计器)的重采样技术相反。拟议的估算器与从OLS试用获得的中值球算法估算器共享一个通用策略,该估算器仅适用于固定数量的数据子集。我们在11个具有挑战性的数据集和模拟研究中检查了DPM估计器的性能。我们还将DPM与五个常用的鲁棒估计量(使用相对于OLS的经验收敛率的原始数据),通过均方误差和偏差的鲁棒性,掩盖和淹没概率,检测已知异常值的能力以及回归和仿射的比较来比较等方差。

著录项

  • 来源
    《Communications in Statistics》 |2012年第10期|p.1282-1300|共19页
  • 作者单位

    Department of Statistics, Korea University, Seoul, Republic of Korea;

    Department of Mathematics and Statistics, University of Massachusetts,Amherst, Massachusetts, USA;

    Economics and Statistics Institute, Korea University Sejong Campus,Chungnam, Republic of Korea;

  • 收录信息 美国《科学引文索引》(SCI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    breakdown point; data partition; leverage points; outlier.;

    机译:击穿点数据分区;杠杆点;离群值。;

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