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通过二进制整数规划进行微阵列数据中的多任务特征选择

Multi-task feature selection in microarray data by binary integer programming.

作者信息

Lan Liang, Vucetic Slobodan

出版信息

BMC Proc. 2013 Dec 20;7(Suppl 7):S5. doi: 10.1186/1753-6561-7-S7-S5.

Abstract

A major challenge in microarray classification is that the number of features is typically orders of magnitude larger than the number of examples. In this paper, we propose a novel feature filter algorithm to select the feature subset with maximal discriminative power and minimal redundancy by solving a quadratic objective function with binary integer constraints. To improve the computational efficiency, the binary integer constraints are relaxed and a low-rank approximation to the quadratic term is applied. The proposed feature selection algorithm was extended to solve multi-task microarray classification problems. We compared the single-task version of the proposed feature selection algorithm with 9 existing feature selection methods on 4 benchmark microarray data sets. The empirical results show that the proposed method achieved the most accurate predictions overall. We also evaluated the multi-task version of the proposed algorithm on 8 multi-task microarray datasets. The multi-task feature selection algorithm resulted in significantly higher accuracy than when using the single-task feature selection methods.

摘要

微阵列分类中的一个主要挑战是,特征数量通常比样本数量大几个数量级。在本文中,我们提出了一种新颖的特征过滤算法,通过求解具有二进制整数约束的二次目标函数,来选择具有最大判别力和最小冗余度的特征子集。为了提高计算效率,放宽了二进制整数约束,并对二次项应用了低秩近似。所提出的特征选择算法被扩展用于解决多任务微阵列分类问题。我们将所提出的特征选择算法的单任务版本与9种现有的特征选择方法在4个基准微阵列数据集上进行了比较。实证结果表明,所提出的方法总体上实现了最准确的预测。我们还在8个多任务微阵列数据集上评估了所提出算法的多任务版本。多任务特征选择算法比使用单任务特征选择方法时的准确率显著更高。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2c49/4043987/31f9ab9f69b5/1753-6561-7-S7-S5-1.jpg

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