2020
DOI: 10.48550/arxiv.2009.14250
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A Framework of Learning Through Empirical Gain Maximization

Abstract: We develop in this paper a framework of empirical gain maximization (EGM) to address the robust regression problem where heavy-tailed noise or outliers may present in the response variable. The idea of EGM is to approximate the density function of the noise distribution instead of approximating the truth function directly as usual. Unlike the classical maximum likelihood estimation that encourages equal importance of all observations and could be problematic in the presence of abnormal observations, EGM scheme… Show more

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