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动态特征选择算法对恶意行为检测的优化研究
引用本文:刘云,肖添,王梓宇.动态特征选择算法对恶意行为检测的优化研究[J].计算机工程与科学,2022,44(4):665-673.
作者姓名:刘云  肖添  王梓宇
作者单位:(昆明理工大学信息工程与自动化学院,云南 昆明 650500)
基金项目:国家自然科学基金;云南省重大科技专项计划
摘    要:针对互联网中存在的恶意行为,特别是社交网络应用中的在线恶意行为,通常使用基于用户多维特征的聚类分析算法进行检测.提出一种动态特征选择算法(DFSA),使用具有特征加权熵的模糊C均值目标函数,首先为参数构建一个学习模式,自动计算每个特征权重,并剔除权重小于阈值的特征,动态选择重要的特征,迭代地更新隶属函数、簇中心和特征权...

关 键 词:特征选择  恶意用户行为  在线社交网络  模糊聚类
收稿时间:2020-08-16
修稿时间:2020-12-17

Optimization of dynamic feature selection algorithm for malicious behavior detection
LIU Yun,XIAO Tian,WANG Zi-yu.Optimization of dynamic feature selection algorithm for malicious behavior detection[J].Computer Engineering & Science,2022,44(4):665-673.
Authors:LIU Yun  XIAO Tian  WANG Zi-yu
Affiliation:(Faculty of Information Engineering and Automation,Kunming University of Science and Technology,Kunming 650500,China)
Abstract:For malicious behaviors existing in the Internet, especially online malicious user behavior detection in social network applications, clustering analysis algorithms based on multi-dimensional user characteristics are usually used for detection. This paper proposes a dynamic feature selection algorithm (DFSA), which uses a fuzzy C-means objective function with feature weighted entropy. Firstly, a learning mode is constructed for the parameters, and each feature weight is automatically calculated, and features whose weight is less than the threshold are eliminated. Important feature components are selected dynamically, and the membership function, cluster center and feature weights are updated iteratively until the optimization is achieved. Finally, malicious user behavior clusters with high accuracy is detect- ed. The simulation results show that the proposed algorithm outperforms the SDAFS algorithm, the ELAFC algorithm and the NADMB algorithm in terms of three main performance indicators such as Rand index, Jaccard index and normalized mutual information.
Keywords:feature selection  malicious user behavior  online social network  fuzzy clustering     
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