MF-GARF:用于微阵列癌症数据集特征选择的杂交多滤波器和遗传包装

Pakizah Saqib, Usman Qamar, Reda Ayesha Khan, Andleeb Aslam
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引用次数: 5

摘要

DNA微阵列技术是医学领域的一项有价值的进步,但它也带来了许多挑战,如维度诅咒、存储和计算要求。在本文中,我们提出了一种基于多滤波器和GA包装器的混合方法(MF-GARF),该方法将随机森林作为特征的适应度评估器。提出的混合方法MF-GARF由三个阶段的关联块组成;包含基于信息论的滤波器信息增益,增益比和基尼指数,负责确保相关性和去除不相关和有噪声的特征。第二阶段为冗余块;结合Pearson相关统计去除特征之间的冗余,最后进行优化块;包含以随机森林作为适应度评估器的遗传算法包装器,负责生成具有高预测能力的最优特征子集。使用10倍交叉验证的随机森林计算所选特征子集的分类精度。在7个公开的微阵列癌症基准数据集上进行了实验,结果表明,该算法在所有数据集上都以最小的选择特征达到了较好的准确率。与其他最先进的混合技术的比较验证了我们提出的方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MF-GARF: Hybridizing Multiple Filters and GA Wrapper for Feature Selection of Microarray Cancer Datasets
DNA Microarray technology is a valuable advancement in medical field but it gives birth to many challenges like curse of dimensionality, storage and computational requirements. In this paper we have proposed, a multiple filters and GA wrapper based hybrid approach (MF-GARF) that incorporates Random forest as fitness evaluator of features. The proposed hybrid approach MF-GARF is comprised of three phases relevancy block; containing information theory based filters Information Gain, Gain Ratio and Gini Index, responsible for ensuring relevancy and removal of irrelevant and noisy features. Second phase is Redundancy block; incorporating Pearson Correlation statistics to remove redundancy among features, and then final phase Optimization Block; containing Genetic Algorithm wrapper with Random Forest as fitness evaluator, responsible for generating an optimal feature subset with high predictive power. Random Forest with 10-fold cross validation is used to calculate the classification accuracy of selected feature subset. Experiments are carried out on 7 publically available benchmark Microarray cancer datasets and the proposed algorithm has achieved good accuracy with minimal selected features for all datasets. The comparison with other state of the art hybrid techniques validates the effectiveness of our proposed approach.
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