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Depth-weighted robust multivariate regression with application to sparse data

机译:应用于稀疏数据的深度加权鲁棒多元回归

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摘要

A robust method for multivariate regression is developed based on robust estimators of the joint location and scatter matrix of the explanatory and response variables using the notion of data depth. The multivariate regression estimator possesses desirable affine equivariance properties, achieves the best breakdown point of any affine equivariant estimator, and has an influence function which is bounded in both the response as well as the predictor variable. To increase the efficiency of this estimator, a re-weighted estimator based on robust Mahalanobis distances of the residual vectors is proposed. In practice, the method is more stable than existing methods that are constructed using subsamples of the data. The resulting multivariate regression technique is computationally feasible, and turns out to perform better than several popular robust multivariate regression methods when applied to various simulated data as well as a real benchmark data set. When the data dimension is quite high compared to the sample size it is still possible to use meaningful notions of data depth along with the corresponding depth values to construct a robust estimator in a sparse setting.
机译:对于多变量回归的鲁棒方法是基于使用数据深度的概念的说明性的,并响应变量的联合位置和散射矩阵的稳健估计开发的。多变量回归估计具有所需仿射同变性性质,以达到任何仿射同变估计的最佳击穿点,并具有在两者的响应以及预测变量界定的影响函数。为了增加此估计器的效率,基于所述残差向量的鲁棒马氏距离重新加权估算器被提出。在实践中,该方法比所使用的数据的子样本构建现有方法更稳定。将得到的多变量回归技术在计算上是可行的,并且原来在应用于各种模拟数据以及作为一个真正的基准数据设定为比一些流行的稳健多变量回归方法更好执行。当数据尺寸是相当高的比样本大小仍然可以使用与相应的深度值的数据沿深度的有意义的概念来构建一个健壮估计在稀疏设置。

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