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Supervised Classification for a Family of Gaussian Functional Models

机译:高斯功能模型族的监督分类

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In the framework of supervised classification (discrimination) for functional data, it is shown that the optimal classification rule can be explicitly obtained for a class of Gaussian processes with 'triangular' covariance functions. This explicit knowledge has two practical consequences. First, the consistency of the well-known nearest neighbours classifier (which is not guaranteed in the problems with functional data) is established for the indicated class of processes. Second, and more important, parametric and non-parametric plug-in classifiers can be obtained by estimating the unknown elements in the optimal rule. The performance of these new plug-in classifiers is checked, with positive results, through a simulation study and a real data example.
机译:在功能数据的监督分类(区分)框架中,研究表明,对于具有“三角”协方差函数的一类高斯过程,可以明确获得最佳分类规则。这种明确的知识有两个实际的后果。首先,针对所指示的过程类别,建立了众所周知的最近邻居分类器的一致性(在功能数据问题中无法保证)。其次,更重要的是,可以通过估计最佳规则中的未知元素来获得参数和非参数插件分类器。通过模拟研究和真实数据示例,对这些新插件分类器的性能进行了检查,并获得了肯定的结果。

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