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Vicinal Support Vector Classifier: A Novel Approach for Robust Classification Based on SKDA1

机译:vicinal支持向量分类器:基于SKDA1的强大分类的新方法

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In this paper, we present a detailed study and comparison of different classification algorithms. Our main purpose is the study of the Vicinal Support Vector Classifier (VSVC) and its relations to the other state-of-the-art classifiers. To this end, we start by the historical development of each classifier, derivation of the mathematics behind it and describing the relations that exist between some of them, in particular the relation between the VSVC and the other classifiers. Thereafter, we apply them to two famous learning datasets very used by the research community, namely the MIT-CBCL face and the Wisconsin Diagnostic Breast Cancer (WDBC) datasets. We show that despite its simplicity compared to the other state-of-the-art classifiers, the VSVC leads to very robust classification results and provide some practical advantages compared to the other classifiers.
机译:在本文中,我们介绍了不同分类算法的详细研究和比较。 我们的主要目的是研究vicinal支持向量分类器(VSVC)及其与其他最先进的分类器的关系。 为此,我们从每个分类器的历史开发开始,在其背后推导数学,并描述其中一些之间存在的关系,特别是VSVC与其他分类器之间的关系。 此后,我们将它们应用于研究界非常使用的两个着名学习数据集,即麻省理工学院CBCL面部和威斯康星蛋白诊断乳腺癌(WDBC)数据集。 我们表明,与其他最先进的分类器相比,尽管其相比,VSVC与其他分类器相比,VSVC会导致非常稳健的分类结果并提供一些实际优势。

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