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An Optimal Semiparametric Method for Two-group Classification

机译:两组分类的最佳半参数方法

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In the classical discriminant analysis, when two multivariate normal distributions with equal variance-covariance matrices are assumed for two groups, the classical linear discriminant function is optimal with respect to maximizing the standardized difference between the means of two groups. However, for a typical case-control study, the distributional assumption for the case group often needs to be relaxed in practice. Komori et al. (Generalized t-statistic for two-group classification. Biometrics 2015, 71: 404-416) proposed the generalized t-statistic to obtain a linear discriminant function, which allows for heterogeneity of case group. Their procedure has an optimality property in the class of consideration. We perform a further study of the problem and show that additional improvement is achievable. The approach we propose does not require a parametric distributional assumption on the case group. We further show that the new estimator is efficient, in that no further improvement is possible to construct the linear discriminant function more efficiently. We conduct simulation studies and real data examples to illustrate the finite sample performance and the gain that it produces in comparison with existing methods.
机译:在经典判别分析中,当假设两组具有相等方差-协方差矩阵的两个多元正态分布时,相对于最大化两组均值之间的标准差,经典线性判别函数是最佳的。但是,对于典型的病例对照研究,在实践中通常需要放宽对病例组的分布假设。小森等。 (用于两类分类的广义t统计量。Biometrics2015,71:404-416)提出了广义t统计量以获得线性判别函数,从而允许病例组具有异质性。他们的程序在考虑类中具有最优性。我们对该问题进行了进一步的研究,并表明可以实现进一步的改进。我们提出的方法不需要对案例组进行参数分布假设。我们进一步表明,新的估计器是有效的,因为不可能进一步改进以更有效地构造线性判别函数。我们进行仿真研究和实际数据示例,以说明有限的样本性能及其与现有方法相比所产生的增益。

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