Robust Classification of High-Dimensional Data using Data-Adaptive Energy Distance

Jyotishka Ray Choudhury, Aytijhya Saha, Sarbojit Roy, S. Dutta
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Abstract

Classification of high-dimensional low sample size (HDLSS) data poses a challenge in a variety of real-world situations, such as gene expression studies, cancer research, and medical imaging. This article presents the development and analysis of some classifiers that are specifically designed for HDLSS data. These classifiers are free of tuning parameters and are robust, in the sense that they are devoid of any moment conditions of the underlying data distributions. It is shown that they yield perfect classification in the HDLSS asymptotic regime, under some fairly general conditions. The comparative performance of the proposed classifiers is also investigated. Our theoretical results are supported by extensive simulation studies and real data analysis, which demonstrate promising advantages of the proposed classification techniques over several widely recognized methods.
基于数据自适应能量距离的高维数据鲁棒分类
高维低样本量(HDLSS)数据的分类在各种现实世界的情况下提出了挑战,例如基因表达研究、癌症研究和医学成像。本文介绍了一些专门为HDLSS数据设计的分类器的开发和分析。这些分类器不需要调优参数,并且具有鲁棒性,因为它们没有底层数据分布的任何时刻条件。结果表明,在一些相当一般的条件下,它们在HDLSS渐近状态下产生完美的分类。对所提出的分类器的性能进行了比较研究。我们的理论结果得到了广泛的模拟研究和实际数据分析的支持,这些研究表明,与几种广泛认可的方法相比,所提出的分类技术具有很好的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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