%0 Journal Article
%T An Unsupervised Algorithm for Detecting Shilling Attacks onRecommender Systems
一种探测推荐系统托攻击的无监督算法
%A LI Cong
%A LUO Zhi-Gang
%A SHI Jin-Long
%A
李聪
%A 骆志刚
%A 石金龙
%J 自动化学报
%D 2011
%I
%X Shilling attack is one of the significant security problems involved in recommender systems. Developing detection algorithms against shilling attacks has become the key to guaranteeing both the preciseness and robustness of recommender systems. Considering the low degree of unsupervised features the existing algorithms suffer from, this paper proposes an iterative Bayesian inference genetic detection algorithm (IBIGDA) through the introduction of the quantitative metric for the group effect of attack profiles and the corresponding object function for genetic optimization. This algorithm combines the posterior inference for the adaptive parameters with the process of attack detection, thus relaxes the dependence of the detection performance on the relating prior knowledge of the systems. Experimental results show that this algorithm can effectively detect shilling attacks of typical types.
%K Recommender system
%K shilling attack
%K group effect
%K genetic algorithm
%K Bayesian inference
推荐系统
%K 托攻击
%K 群体效应
%K 遗传算法
%K 贝叶斯推断
%U http://www.alljournals.cn/get_abstract_url.aspx?pcid=5B3AB970F71A803DEACDC0559115BFCF0A068CD97DD29835&cid=8240383F08CE46C8B05036380D75B607&jid=E76622685B64B2AA896A7F777B64EB3A&aid=3F71E9BDE08F0235591C965580B10DFC&yid=9377ED8094509821&vid=42425781F0B1C26E&iid=0B39A22176CE99FB&sid=1B97AE5098AEB49C&eid=ED01F5AE50BE09C0&journal_id=0254-4156&journal_name=自动化学报&referenced_num=0&reference_num=0