基于f -测度优化的高维不平衡类数据特征选择

Chunkai Zhang, Guoquan Wang, Ying Zhou, Lin Yao, Z. L. Jiang, Qing Liao, Xuan Wang
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引用次数: 14

摘要

特征选择旨在消除冗余属性,提高分类精度。这是一个具有挑战性的问题,特别是在数据不平衡的情况下。传统的特征选择方法忽略了类不平衡的问题,使得所选择的特征偏向多数类,而忽略了对少数类有重要意义的特征。由于f测度在不平衡数据分类中的优势,我们提出在特征选择算法中使用f测度而不是精度作为优化目标。提出了一种基于最优f测度结构支持向量机分类器的特征选择方法SSVM-FS。根据考虑类不平衡问题的SSVM权重向量选择特征。在此基础上,我们提出了一种将SSVM权重向量与对称不确定性相结合的综合特征排序方法。我们使用综合分数将特征减少到合适的大小,然后使用和谐搜索找到最优的特征组合来预测目标类标签。该方法选择的特征子集既可以代表多数类,也可以代表少数类,而且冗余度小。在六个高维类不平衡微阵列数据集上的实验结果表明,该方法是一种较好的解决不平衡分类问题的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Feature selection for high dimensional imbalanced class data based on F-measure optimization
Feature selection is designed to eliminate redundant attributes and improve classification accuracy. This is a challenging problem, especially in the case of imbalanced data. The traditional feature selection methods ignores the problem of class imbalance, making the selected features biased towards the majority class and neglecting the significant features for the minority class. Due to the advantage of F-measure in imbalanced data classification, we propose to use F-measure rather than accuracy as the optimization target in feature selection algorithm. This paper introduces a novel feature selection method SSVM-FS which is based on an optimal F-measure structural support vector machine classifier. Features will be selected according to the weight vector of SSVM which takes class imbalance problem into account. Based on this, we developed a comprehensive feature ranking method which integrate weight vector of SSVM and symmetric uncertainty. We use the comprehensive score to reduce the features to a suitable size and then use a harmony search to find the optimal combination of features to predict the target class label. The feature subset selected by the proposed method can represent both majority and minority class, in addition, it is less redundant. The experimental results on six high dimensional class imbalanced microarray data sets show that this method is a better method to solve the unbalanced classification.
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