资源论文`1-regression with Heavy-tailed Distributions

`1-regression with Heavy-tailed Distributions

2020-02-13 | |  62 |   42 |   0

Abstract

 In this paper, we consider the problem of linear regression with heavy-tailed distributions. Different from previous studies that use the squared loss to measure the performance, we choose the absolute loss, which is capable of estimating the conditional median. To address the challenge that both the input and output could be heavy-tailed, wep propose a truncated minimization problem, and demonstrate that it enjoys an image.png excess risk, where d is the dimensionality and n is the number of samples. Compared with traditional work on image.png -regression, the main advantage of our result is that we achieve a high-probability risk bound without exponential moment conditions on the input and output. Furthermore, if the input is bounded, we show that the classical empirical risk minimization is competent for image.png -regression even when the output is heavy-tailed.

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