Approximate expressions for the variances of non-randomized error estimators and CoD estimators for the discrete histogram rule

Ting-Ju Chen, U. Braga-Neto
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引用次数: 0

Abstract

Estimation of the classification error and of the coefficient of determination (CoD) is a fundamental issue in discrete prediction problems. Analytical expressions for exact performance metrics of non-randomized error estimators and CoD estimators have been derived in previous publications by the authors. However, computation of these expressions becomes problematic as the sample size or predictor complexity increases, particularly in the case of second moments. Thus, fast and accurate approximations are desirable. In this paper, we make approximations to the variances of resubstitution and leave-one-out error estimators and CoD estimators. Our results show that these approximations not only are quite accurate but also reduce computation time tremendously.
离散直方图规则的非随机误差估计量和CoD估计量方差的近似表达式
分类误差和决定系数(CoD)的估计是离散预测问题中的一个基本问题。非随机误差估计器和CoD估计器的精确性能指标的解析表达式已经在作者以前的出版物中得到。然而,随着样本量或预测器复杂性的增加,这些表达式的计算变得有问题,特别是在秒矩的情况下。因此,需要快速和准确的近似值。在本文中,我们对重替换和遗漏误差估计量和CoD估计量的方差作了近似。我们的结果表明,这些近似不仅相当准确,而且大大减少了计算时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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