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Hybrid linear classifier for jointly normal data: theory

机译:联合线性分类器的混合线性分类器:理论

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摘要

Classifier design for a given classification task needs to take into consideration both the complexity of the classifier and the size of the data set that is available for training the classifier. With limited training data, as often is the situation in computer-aided diagnosis of medical images, a classifier with simple structure (e.g., a linear classifier) is more robust and therefore preferred. We consider the two-class classification problem in which the feature data arise from two multivariate normal distributions. A linear function is used to combine the multidimensional feature vector onto a scalar variable. This scalar variable, however, is generally not an ideal decision variable unless the covariance matrices of the two classes are equal. We propose using the likelihood ratio of this scalar variable as a decision variable and, thus, generalizing the traditional classification paradigm to a hybrid two-stage procedure: a linear combination of the feature vector elements to form a scalar variable followed by a nonlinear, nonmonotic transformation that maps the scalar variable onto its likelihood ratio (i.e., the ideal decision variable, given the scalar variable). We show that the traditional Fisher's linear discriminant function is generally not the optimal linear function for the first stage in this two-stage paradigm. We further show that the optimal linear function can be obtained with a numerical optimization procedure using the area under the "proper" ROC curve as the objective function.
机译:给定分类任务的分类器设计需要同时考虑分类器的复杂性和可用于训练分类器的数据集的大小。在训练数据有限的情况下(如医学图像的计算机辅助诊断中的情况经常如此),具有简单结构的分类器(例如,线性分类器)更加稳健,因此是首选。我们考虑两类分类问题,其中特征数据来自两个多元正态分布。线性函数用于将多维特征向量组合到标量变量上。但是,除非两个类别的协方差矩阵相等,否则此标量变量通常不是理想的决策变量。我们建议使用此标量变量的似然比作为决策变量,从而将传统的分类范式推广到混合两阶段过程:特征向量元素的线性组合以形成标量变量,然后是非线性非单调变量将标量变量映射到其似然比(即,给定标量变量的理想决策变量)的转换。我们表明,传统的Fisher线性判别函数通常不是该两阶段范式中第一阶段的最佳线性函数。我们进一步表明,可以通过使用“适当” ROC曲线下的面积作为目标函数的数值优化程序来获得最佳线性函数。

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