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Non-parametric Residual Variance Estimation in Supervised Learning

机译:监督学习中的非参数残差方差估计

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摘要

The residual variance estimation problem is well-known in statistics and machine learning with many applications for example in the field of nonlinear modelling. In this paper, we show that the problem can be formulated in a general supervised learning context. Emphasis is on two widely used non-parametric techniques known as the Delta test and the Gamma test. Under some regularity assumptions, a novel proof of convergence of the two estimators is formulated and subsequently verified and compared on two meaningful study cases.
机译:残余方差估计问题在统计和机器学习中是众所周知的,例如在非线性建模领域中有许多应用。在本文中,我们表明可以在一般的有监督学习环境中提出问题。重点介绍了两种广泛使用的非参数技术,即Delta测试和Gamma测试。在某些规律性假设下,制定了两个估计量收敛的新证明,随后在两个有意义的研究案例上进行了比较。

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