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Asymptotic comparison of semi-supervised and supervised linear discriminant functions for heteroscedastic normal populations

机译:异相体普通群体半监督线性判别函数的渐近比较

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摘要

It has been reported that using unlabeled data together with labeled data to construct a discriminant function works successfully in practice. However, theoretical studies have implied that unlabeled data can sometimes adversely affect the performance of discriminant functions. Therefore, it is important to know what situations call for the use of unlabeled data. In this paper, asymptotic relative efficiency is presented as the measure for comparing analyses with and without unlabeled data under the heteroscedastic normality assumption. The linear discriminant function maximizing the area under the receiver operating characteristic curve is considered. Asymptotic relative efficiency is evaluated to investigate when and how unlabeled data contribute to improving discriminant performance under several conditions. The results show that asymptotic relative efficiency depends mainly on the heteroscedasticity of the covariance matrices and the stochastic structure of observing the labels of the cases.
机译:据报道,使用未标记的数据与标记数据一起构建判别函数成功地工作。然而,理论上暗示解开的数据有时会对判别功能的性能产生不利影响。因此,了解使用未标记数据的情况非常重要。在本文中,呈现渐近相对效率作为在异源型正常假设下与未标记数据进行比较的措施。考虑了线性判别函数最大化接收器操作特性曲线下的区域。评估渐近相对效率以调查何时以及如何在几种条件下提高判别性能。结果表明,渐近相对效率主要取决于协方差矩阵的异源性和观察病例标记的随机结构。

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