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Testing Adaptive Local Hyperplane for multi-class classification by double cross-validation

机译:通过双重交叉验证测试自适应局部超平面的多类分类

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Adaptive Local Hyperplane (ALH) is a recently proposed classifier for the multi-class classification problems and it has shown encouraging performance in many pattern recognition problems. However, ALH's performance over many general classification datasets has only been tested by using a single loop of cross-validation procedure, where the whole datasets are used for both hyper-parameter determination and accuracy estimation. This procedure is appropriate for classifier performance comparison, but the produced results are likely to be optimistic for classifier accuracy estimation on new datasets. In this paper, we test the performance of ALH as well as several other benchmark classifiers by using two loops of cross-validation (a.k.a. double resampling) procedure, where the inner loop is used for hyper-parameter determination and the outer loop is used for accuracy estimation. With such a testing scheme, the classification accuracy of a tested classifier can be evaluated in a more strict way. The experimental results indicate the superior performance of the ALH classifier with respect to the traditional classifiers including Support Vector Machine (SVM), K-Nearest Neighbor (KNN), Linear Discriminant Analysis (LDA), Classification Tree (Tree) and K-local Hyperplane distance Nearest Neighbor (HKNN). These results imply that the ALH classifier might become a useful tool for the pattern recognition tasks.
机译:自适应本地超平面(ALH)是最近提出的多级分类问题的分类器,并且在许多模式识别问题中表现出令人鼓舞的表现。然而,ALH对许多通用分类数据集的性能仅通过使用单个交叉验证过程来测试,其中整个数据集用于超参数确定和精度估计。此过程适用于分类器性能比较,但是产生的结果可能对新数据集上的分类器精度估计很乐观。在本文中,我们通过使用两个交叉验证(AKA双重重采样)过程的循环测试ALH以及其他几个基准分类器的性能,其中内循环用于超参数确定,外循环用于准确性估计。利用这种测试方案,可以以更严格的方式评估测试分类器的分类精度。实验结果表明ALH分类器相对于传统分类器的优异性能,包括支持向量机(SVM),K最近邻(KNN),线性判别分析(LDA),分类树(树)和K-Local Villannane距离最近邻(HKNN)。这些结果意味着ALH分类器可能成为模式识别任务的有用工具。

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