多类微阵列数据的1范数正则化基因选择

Xiaofei Nan, Nan Wang, P. Gong, Chaoyang Zhang, Yixin Chen, D. Wilkins
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引用次数: 3

摘要

爆炸性化合物如TNT和RDX对自然环境有各种毒理学影响。蚯蚓微阵列实验的目的是发掘用于毒性评价的生物标志物。提出了一种新的递归基因选择方法,可以有效地处理多类设置。选择是迭代地执行的。在每次迭代中,使用1范数正则化训练线性多类分类器,这导致权重向量稀疏,即许多特征权重正好为零。这些零权重特性将在下一次迭代中消除。实证结果表明,被选择的特征(基因)具有很强的竞争辨别能力。此外,选择过程具有较快的收敛速度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Gene selection using 1-norm regularization for multi-class microarray data
Explosive compounds such as TNT and RDX have various toxicological effects on the natural environment. The goal of the earthworm microarray experiment is to unearth the biomarker for toxicity evaluation. We propose a novel recursive gene selection method which can handle the multi-class setting effectively and efficiently. The selection is performed iteratively. In each iteration, a linear multi-class classifier is trained using 1-norm regularization, which leads to sparse weight vectors, i.e., many feature weights are exactly zero. Those zero-weight features are eliminated in the next iteration. The empirical results demonstrate that the selected features (genes) have very competitive discriminative power. In addition, the selection process has fast rate of convergence.
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