Microarray data classification using Fuzzy K-Nearest Neighbor

Mukesh Kumar, S. Rath
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引用次数: 11

Abstract

Microarray dataset may contain a huge number of insignificant and irrelevant features that might lead to loss of useful information. The classes with both high relevance and having high significance feature sets are generally preferred for selecting the features, which determines the sample classification into their respective classes. This property has gained a lot of significance among the researchers and practitioners in DNA microarray classification. In this paper, K-Nearest Neighbor (K-NN) and Fuzzy K-Nearest Neighbor (Fuzzy K-NN) algorithms are used to classify microarray data sets using t-test as a feature selection method. Further, this paper presents a comparative analysis on the obtained classification accuracy by coupling Fuzzy K-NN along with K-NN and other existing models available in the literature. Performance parameters available in literature such as: precision, recall, specificity, F-Measure, ROC curve and accuracy are used in this comparative analysis to analyze the behavior of the classifiers. From the proposed approach, it is apparent that Fuzzy K-NN model is the most suitable classification model among K-NN and other classifiers.
基于模糊k近邻的微阵列数据分类
微阵列数据集可能包含大量不重要和不相关的特征,这可能导致有用信息的丢失。特征选择通常倾向于具有高相关性和高显著性特征集的类,这决定了样本分类到各自的类中。这一特性在DNA微阵列分类的研究者和实践者中具有重要意义。本文采用k -近邻(K-NN)和模糊k -近邻(Fuzzy K-NN)算法,以t检验作为特征选择方法对微阵列数据集进行分类。进一步,本文对模糊K-NN与K-NN及其他文献中已有的模型耦合得到的分类精度进行了对比分析。本对比分析采用文献中可获得的性能参数:precision、recall、specificity、F-Measure、ROC曲线和accuracy来分析分类器的行为。从所提出的方法可以看出,模糊K-NN模型是K-NN和其他分类器中最合适的分类模型。
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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