Feature clustering based support vector machine recursive feature elimination for gene selection

被引:0
作者
Xiaojuan Huang
Li Zhang
Bangjun Wang
Fanzhang Li
Zhao Zhang
机构
[1] Soochow University Suzhou,School of Computer Science and Technology & Joint International Research Laboratory of Machine Learning and Neuromorphic Computing
来源
Applied Intelligence | 2018年 / 48卷
关键词
Support vector machine; Feature selection; Gene clustering; Recursive feature elimination; Gene relevancy; Gene redundancy;
D O I
暂无
中图分类号
学科分类号
摘要
In a DNA microarray dataset, gene expression data often has a huge number of features(which are referred to as genes) versus a small size of samples. With the development of DNA microarray technology, the number of dimensions increases even faster than before, which could lead to the problem of the curse of dimensionality. To get good classification performance, it is necessary to preprocess the gene expression data. Support vector machine recursive feature elimination (SVM-RFE) is a classical method for gene selection. However, SVM-RFE suffers from high computational complexity. To remedy it, this paper enhances SVM-RFE for gene selection by incorporating feature clustering, called feature clustering SVM-RFE (FCSVM-RFE). The proposed method first performs gene selection roughly and then ranks the selected genes. First, a clustering algorithm is used to cluster genes into gene groups, in each which genes have similar expression profile. Then, a representative gene is found to represent a gene group. By doing so, we can obtain a representative gene set. Then, SVM-RFE is applied to rank these representative genes. FCSVM-RFE can reduce the computational complexity and the redundancy among genes. Experiments on seven public gene expression datasets show that FCSVM-RFE can achieve a better classification performance and lower computational complexity when compared with the state-the-art-of methods, such as SVM-RFE.
引用
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页码:594 / 607
页数:13
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