Efficient and Robust Median-of-Means Algorithms for Location and Regression

Alexander Kogler, Patrick Traxler
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引用次数: 7

Abstract

We consider the computational problem to learn models from data that are possibly contaminated with outliers. We design and analyze algorithms for robust location and robust linear regression. Such algorithms are essential for solving central problems of robust statistics and outlier detection. We show that our algorithms, which are based on a novel extension of the Median-of-Means method by employing the discrete geometric median, are accurate, efficient and robust against many outliers in the data. The discrete geometric median has many desirable characteristics such as it works for general metric spaces and preserves combinatorial and statistical properties. Furthermore, there is an exact and efficient algorithm to compute it, and an even faster approximation algorithm. We present theoretical and experimental results. In particular, we emphasize the generality of Median-of-Means and its ability to speedup and parallelize algorithms which additionally are accurate and robust against many outliers in the data.
定位与回归的高效鲁棒中值算法
我们考虑从可能被异常值污染的数据中学习模型的计算问题。我们设计并分析了鲁棒定位和鲁棒线性回归的算法。这些算法对于解决鲁棒统计和离群值检测的核心问题至关重要。我们的算法基于采用离散几何中位数的中位数方法的新扩展,对数据中的许多异常值具有准确,高效和鲁棒性。离散几何中位数具有许多理想的特性,例如它适用于一般度量空间,并保留了组合和统计性质。此外,有一个精确而有效的算法来计算它,甚至更快的近似算法。我们提出了理论和实验结果。特别地,我们强调了中位数的通用性及其加速和并行化算法的能力,这些算法对数据中的许多异常值具有准确和鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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