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Moments and Root-Mean-Square Error of the Bayesian MMSE Estimator of Classification Error in the Gaussian Model

机译:高斯模型中分类误差的贝叶斯MMSE估计的矩和均方根误差

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摘要

The most important aspect of any classifier is its error rate, because this quantifies its predictive capacity. Thus, the accuracy of error estimation is critical. Error estimation is problematic in small-sample classifier design because the error must be estimated using the same data from which the classifier has been designed. Use of prior knowledge, in the form of a prior distribution on an uncertainty class of feature-label distributions to which the true, but unknown, feature-distribution belongs, can facilitate accurate error estimation (in the mean-square sense) in circumstances where accurate completely model-free error estimation is impossible. This paper provides analytic asymptotically exact finite-sample approximations for various performance metrics of the resulting Bayesian Minimum Mean-Square-Error (MMSE) error estimator in the case of linear discriminant analysis (LDA) in the multivariate Gaussian model. These performance metrics include the first, second, and cross moments of the Bayesian MMSE error estimator with the true error of LDA, and therefore, the Root-Mean-Square (RMS) error of the estimator. We lay down the theoretical groundwork for Kolmogorov double-asymptotics in a Bayesian setting, which enables us to derive asymptotic expressions of the desired performance metrics. From these we produce analytic finite-sample approximations and demonstrate their accuracy via numerical examples. Various examples illustrate the behavior of these approximations and their use in determining the necessary sample size to achieve a desired RMS. The contains derivations for some equations and added figures.
机译:任何分类器最重要的方面是其错误率,因为这量化了其预测能力。因此,误差估计的准确性至关重要。在小样本分类器设计中,误差估计是有问题的,因为必须使用与设计分类器相同的数据来估计误差。在以下情况下,使用先验知识,即对真实但未知的特征分布所属的不确定性类别的特征标签分布进行先验分布,可以促进准确的误差估计(均方)准确,完全无模型的误差估计是不可能的。本文针对多元高斯模型中线性判别分析(LDA)情况下所得贝叶斯最小均方误差(MMSE)误差估计器的各种性能指标,提供了渐近精确的有限样本逼近近似分析。这些性能指标包括具有真实LDA误差的贝叶斯MMSE误差估计器的第一,第二和交叉矩,因此包括估计器的均方根(RMS)误差。我们为贝叶斯环境中的Kolmogorov双渐近理论奠定了理论基础,这使我们能够导出所需性能指标的渐近表达式。从中我们得出解析的有限样本近似值,并通过数值示例证明其准确性。各种示例说明了这些近似的行为以及它们在确定实现所需RMS所需的样本大小中的使用。包含对某些方程式和附加图的推导。

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