达到信息理论极限的鲁棒多项式回归

D. Kane, Sushrut Karmalkar, Eric Price
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引用次数: 15

摘要

我们考虑鲁棒多项式回归问题,其中接收的样本通常在目标多项式的小加性误差范围内,但有可能是任意对抗性异常值。在此之前,只有当离群概率在目标多项式的阶次中为次常数时,才知道如何有效地估计目标多项式。我们给出了一种适用于整个离群概率可行范围的算法,同时改进了问题的其他参数。我们补充了我们的算法,它给出了一个因子2近似值,不可能结果表明,例如,即使有无限多的样本,1.09近似值也是不可能的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robust Polynomial Regression up to the Information Theoretic Limit
We consider the problem of robust polynomial regression, where one receives samples that are usually within a small additive error of a target polynomial, but have a chance of being arbitrary adversarial outliers. Previously, it was known how to efficiently estimate the target polynomial only when the outlier probability was subconstant in the degree of the target polynomial. We give an algorithm that works for the entire feasible range of outlier probabilities, while simultaneously improving other parameters of the problem. We complement our algorithm, which gives a factor 2 approximation, with impossibility results that show, for example, that a 1.09 approximation is impossible even with infinitely many samples.
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