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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >On the sampling distribution of resubstitution and leave-one-out error estimators for linear classifiers
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On the sampling distribution of resubstitution and leave-one-out error estimators for linear classifiers

机译:线性分类器的替换和留一法误差估计量的抽样分布

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摘要

Error estimation is a problem of high current interest in many areas of application. This paper concerns the classical problem of determining the performance of error estimators in small-sample settings under a Gaussianity Parametric assumption. We provide here for the first time the exact sampling distribution of the resubstitution and leave-one-out error estimators for linear discriminant analysis (LDA) in the univariate case, which is valid for any sample size and combination of parameters (including unequal variances and sample sizes for each class). In the multivariate case, we provide a quasi-binomial approximation to the distribution of both the resubstitution and leave-one-out error estimators for LDA, under a common but otherwise arbitrary class covariance matrix, which is assumed to be known in the design of the LDA discriminant. We provide numerical examples, using both synthetic and real data, that indicate that these approximations are accurate. provided that LDA classification error is not too large.
机译:误差估计是当前在许多应用领域中引起高度关注的问题。本文涉及确定高斯参数假设下小样本环境中误差估计器性能的经典问题。我们首次在此提供单变量情况下线性判别分析(LDA)的重新替代和遗漏误差估计量的准确采样分布,该分布对于任何样本量和参数组合(包括不等方差和每个类别的样本量)。在多变量情况下,我们在一个通用的,否则为任意的类协方差矩阵下为LDA的重新替代和遗忘一错误估计量的分布提供了一个近似二项式近似,假定在设计中已知LDA判别。我们提供了使用合成数据和实际数据的数值示例,它们表明这些近似值是准确的。前提是LDA分类错误不会太大。

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