多项式概率
特征选择
先验概率
贝叶斯概率
多项式分布
多项式logistic回归
Probit模型
回归分析
统计
普罗比特
回归
计算机科学
数学
人工智能
作者
Aijun Yang,Xuejun Jiang,Liming Xiang,Jin-Guan Lin
标识
DOI:10.1080/03610926.2015.1122056
摘要
Here we consider a multinomial probit regression model where the number of variables substantially exceeds the sample size and only a subset of the available variables is associated with the response. Thus selecting a small number of relevant variables for classification has received a great deal of attention. Generally when the number of variables is substantial, sparsity-enforcing priors for the regression coefficients are called for on grounds of predictive generalization and computational ease. In this paper, we propose a sparse Bayesian variable selection method in multinomial probit regression model for multi-class classification. The performance of our proposed method is demonstrated with one simulated data and three well-known gene expression profiling data: breast cancer data, leukemia data, and small round blue-cell tumors. The results show that compared with other methods, our method is able to select the relevant variables and can obtain competitive classification accuracy with a small subset of relevant genes.
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