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首页> 外文期刊>Hiroshima mathematical journal >Estimation of misclassification probability for a distance-based classifier in high-dimensional data
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Estimation of misclassification probability for a distance-based classifier in high-dimensional data

机译:高维数据中基于距离的分类器的误分类概率估计

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摘要

We estimate the misclassification probability of a Euclidean distance-based classifier in high-dimensional data. We discuss two types of estimator: a plug-in type estimator based on the normal approximation of misclassification probability (newly proposed), and an estimator based on the well-known leave-one-out cross-validation method. Both estimators perform consistently when the dimension exceeds the total sample size, and the underlying distribution need not be multivariate normality. We also numerically determine the mean squared errors (MSEs) of these estimators in finite sample applications of high-dimensional scenarios. The newly proposed plug-in type estimator gives smaller MSEs than the estimator based on leave-one-out cross-validation in simulation.
机译:我们估计高维数据中基于欧氏距离的分类器的误分类概率。我们讨论两种类型的估计器:一种基于误分类概率的正态近似(新近提出)的插件类型的估计器,以及一种基于众所周知的留一法交叉验证方法的估计器。当维度超过样本总数时,两个估计量的执行效果都一致,并且基本分布不必是多元正态性。我们还通过数值确定在高维场景的有限样本应用中这些估计量的均方误差(MSE)。新提出的插件类型估计器在仿真中比基于留一法式交叉验证的估计器具有更小的MSE。

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