An Efficient Cost-Sensitive Feature Selection Using Chaos Genetic Algorithm for Class Imbalance Problem

Author:

Bian Jing12,Peng Xin-guang1,Wang Ying1,Zhang Hai3

Affiliation:

1. College of Computer Science and Technology, Taiyuan University of Technology, Yingze Street 79, Taiyuan 030024, China

2. The Center of Information and Network, Shanxi Medical College of Continuing Education, Shuangtasi Street 22, Taiyuan 030012, China

3. The Technology and Product Management, Shanxi Branch of Agricultural Bank of China, Nanneihuan Street 33, Taiyuan 030024, China

Abstract

In the era of big data, feature selection is an essential process in machine learning. Although the class imbalance problem has recently attracted a great deal of attention, little effort has been undertaken to develop feature selection techniques. In addition, most applications involving feature selection focus on classification accuracy but not cost, although costs are important. To cope with imbalance problems, we developed a cost-sensitive feature selection algorithm that adds the cost-based evaluation function of a filter feature selection using a chaos genetic algorithm, referred to as CSFSG. The evaluation function considers both feature-acquiring costs (test costs) and misclassification costs in the field of network security, thereby weakening the influence of many instances from the majority of classes in large-scale datasets. The CSFSG algorithm reduces the total cost of feature selection and trades off both factors. The behavior of the CSFSG algorithm is tested on a large-scale dataset of network security, using two kinds of classifiers: C4.5 andk-nearest neighbor (KNN). The results of the experimental research show that the approach is efficient and able to effectively improve classification accuracy and to decrease classification time. In addition, the results of our method are more promising than the results of other cost-sensitive feature selection algorithms.

Funder

National Science Foundation for Young Scientists of China

Publisher

Hindawi Limited

Subject

General Engineering,General Mathematics

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