基于平均平分线分析和余弦相似度(MBACS)的信誉系统威胁分析和恶意用户检测

H. K. Jnanamurthy, C. Warty, Sanjay Singh
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引用次数: 7

摘要

反馈信誉系统越来越受欢迎,因为处理信誉系统中的不公平评级已被认为是一项重要但困难的任务。当真实用户评价数量相对较少且不公平评价在评价值中占多数时,这个问题就具有挑战性。在本文中,我们提出了一种利用均值平分线分析和余弦相似度(MBACS)在在线声誉系统中发现恶意用户的新方法。这里的工作主要集中在评级值领域和恶意用户领域的异常。MBACS在检测恶意用户评级和聚合可信评级方面非常有效。通过仿真对所提出的信誉系统进行了评价,MBACS系统可以显著降低不公平评级的影响。
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Threat Analysis and malicious user detection in reputation systems using Mean Bisector Analysis and Cosine Similarity (MBACS)
Feedback reputation systems are gaining popularity as dealing with unfair ratings in reputation systems has been recognized as an important but difficult task. This problem is challenging when the number of true user ratings is relatively small and unfair ratings plays majority in rated values. In this paper, we propose a new method to find malicious users in online reputation systems using Mean Bisector Analysis and Cosine Similarity (MBACS). Here the effort is mainly concentrated on abnormals in both rating-values domain and the malicious users domain. MBACS is very efficient to detect malicious user ratings and aggregate trustful ratings. The proposed reputation system is evaluated through simulations, MBACS system can significantly reduce the impact of unfair ratings.
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