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Robust Regression Using Biased Objectives

机译:使用偏差物镜的稳健回归

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摘要

For the regression task in a non-parametric setting, designing the objective function to be minimized by the learner is a critical task. In this paper we propose a principled method for constructing and minimizing robust losses, which are resilient to errant observations even under small samples. Existing proposals typically utilize very strong estimates of the true risk, but in doing so require a priori information that is not available in practice. As we abandon direct approximation of the risk, this lets us enjoy substantial gains in stability at a tolerable price in terms of bias, all while circumventing the computational issues of existing procedures. We analyze existence and convergence conditions, provide practical computational routines, and also show empirically that the proposed method realizes superior robustness over wide data classes with no prior knowledge assumptions.
机译:对于非参数设置中的回归任务,设计要由学习者最小化的目标函数是一项关键任务。在本文中,我们提出了一种构造和最小化鲁棒损失的有原则的方法,即使在小样本情况下,这些鲁棒损失也可以抵抗错误的观测结果。现有建议通常会使用非常强大的真实风险估算,但是这样做需要在实践中无法获得的先验信息。当我们放弃对风险的直接逼近时,这使我们可以在偏差可承受的范围内以可承受的价格享受稳定的实质性收益,同时避免了现有程序的计算问题。我们分析了存在和收敛条件,提供了实用的计算例程,并通过经验证明了该方法在没有先验知识假设的情况下,可以在较宽的数据类别上实现出色的鲁棒性。

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