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Two hybrid wrapper-filter feature selection algorithms applied to high-dimensional microarray experiments

机译:两种混合包装滤波器特征选择算法应用于高维微阵列实验

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Microarray experiments generally deal with complex and high-dimensional samples, and in addition, the number of samples is much smaller than their dimensions. Both issues can be alleviated by using a feature selection (FS) method. In this paper two new, simple, and efficient hybrid FS algorithms, called respectively BDE-X-Rank and BDE-X-Rankf, are presented. Both algorithms combine a wrapper FS method based on a Binary Differential Evolution (BDE) algorithm with a rank-based filter FS method. Besides, they generate the initial population with solutions involving only a small number of features. Some initial solutions are built considering only the most relevant features regarding the filter method, and the remaining ones include only random features (to promote diversity). In the BDE-X-Rankf, a new fitness function, in which the score value of a solution is influenced by the frequency of the features in the current population, is incorporated in the algorithm. The robustness of BDE-X-Rank and BDE-X-Rankf is shown by using four Machine Learning (ML) algorithms (NB, SVM, C4.5, and kNN). Six high-dimensional well-known data sets of microarray experiments are used to carry out an extensive experimental study based on statistical tests. This experimental analysis shows the robustness as well as the ability of both proposals to obtain highly accurate solutions at the earlier stages of BDE evolutionary process. Finally, BDE-X-Rank and BDE-X-Rankf are also compared against the results of nine state-of-the-art algorithms to highlight its competitiveness and the ability to successfully reduce the original feature set size by more than 99%. (C) 2015 Elsevier B.V. All rights reserved.
机译:微阵列实验通常处理复杂的高维样本,此外,样本数量远小于其维数。可以通过使用功能选择(FS)方法来缓解这两个问题。本文提出了两种新的,简单而有效的混合FS算法,分别称为BDE-X-Rank和BDE-X-Rankf。两种算法都将基于二进制差分进化(BDE)算法的包装器FS方法与基于秩的滤波器FS方法结合在一起。此外,他们使用仅涉及少量特征的解决方案来生成初始种群。构建某些初始解决方案时仅考虑与过滤方法有关的最相关功能,而其余解决方案仅包含随机功能(以促进多样性)。在BDE-X-Rankf中,新的适应度函数已合并到该算法中,在该函数中,解决方案的得分值受当前总体中特征频率的影响。通过使用四种机器学习(ML)算法(NB,SVM,C4.5和kNN)显示了BDE-X-Rank和BDE-X-Rankf的鲁棒性。微阵列实验的六个高维度众所周知的数据集用于基于统计测试进行广泛的实验研究。该实验分析表明,在BDE进化过程的早期阶段,这两种建议的鲁棒性以及获得高精度解决方案的能力。最后,还将BDE-X-Rank和BDE-X-Rankf与九种最新算法的结果进行比较,以突出其竞争力以及成功将原始要素集大小减少99%以上的能力。 (C)2015 Elsevier B.V.保留所有权利。

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