鲁棒多元线性后向消除回归

Md Siddiqur Rahman, Sabina Sharmin
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引用次数: 0

摘要

为了建立线性预测模型,本研究引入了鲁棒后向消除(RBE)算法,该算法在计算上有用且可扩展到高维大数据集。反向消除(BE)可以用样本相关性来表示,简单的反向消除可以通过将这些相关性与相应的鲁棒对应物交换来获得。在校正后的winsorization相关作为稳健性双变量相关的基础上,采用了winsorization数据的稳健相关。在另一项研究中,Spearman秩相关被用作稳健性双变量相关。然而,RBE在存在多变量异常值时存在一些缺点。在本文中,提出了基于FastMCD(快速最小协方差决定)的相关性在BE中使用,以减少离群数据点的影响。我们称这种方法为BEmcd。基于winsorized correlation和Spearman rank correlation,对BEmcd和RBE的性能进行了综合仿真研究。仿真和实际数据的应用证明了BEmcd的优异性能。 达卡大学学报(自然科学版),71(2):134- 141,2023 (7)
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robust Multiple Linear Backward EliminationRegression
For building a linear prediction model, robust Backward Elimination (RBE) algorithm, which is computationally useful and scalable to high-dimensional large datasets, is introduced in this investigation. Backward Elimination (BE) can be stated in terms of sample correlations and simple RBE can be obtained by swapping out these correlations with their corresponding robust counterparts. The robust correlation for winsorized data was employed based on the adjusted winsorized correlation as a robust bivariate correlation. In another study, the Spearman rank correlation was employed as a robust bivariate correlation. However, the RBE has some drawbacks in the presence of multivariate outliers. In this article, the usage of FastMCD (Fast minimum covariance determinant)-based correlation is proposed in BE to reduce the influence of outlying data points. We call this proposed method BEmcd. A comprehensive simulation study was conducted to evaluate the performance of BEmcd with that of RBE based on winsorized correlation and Spearman rank correlation. Simulations and an application of actual data demonstrate the outstanding performance of BEmcd. Dhaka Univ. J. Sci. 71(2): 134-141, 2023 (July)
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