Effect of Recursive Cluster Elimination with Different Clustering Algorithms Applied to Gene Expression Data

Cihan Kuzudisli,Burcu Bakir-Gungor, Bahjat F. Qaqish,Malik. Yousef

2023 Innovations in Intelligent Systems and Applications Conference (ASYU)(2023)

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摘要
Feature selection (FS) is an effective tool in dealing with high dimensionality and reducing computational cost. Support Vector Machines-Recursive Cluster Elimination (SVM-RCE) is one of several algorithms that have been developed for FS in high dimensional data. SVM-RCE involves a clustering step which originally is k-means. Using various performance metrics, three alternative algorithms are evaluated in this context; k-medoids, Hierarchical Clustering (HC), and Gaussian Mixture Model (GMM). Comparisons will be carried out on five publicly available gene expression datasets. The results show that k-means in SVM-RCE obtains higher performance than other tested algorithms in terms of classification performance. Additionally, HC shows a similar performance to k-means. Our findings show superiority of using k-means. This study can contribute to the development of SVM-RCE with different variations, leading to decrease in the number of selected genes, and an increase in prediction performance.
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关键词
Recursive Cluster Elimination,Feature Selection,Clustering,Gene Expression Data Analysis
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