Unsupervised detection of obfuscated diverse attacks in recommender systems

S. S. Hashmi, Sang-Wook Kim
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Abstract

Biased ratings of attack profiles have a significant impact on the effectiveness of collaborative recommender systems. Previous work has shown standard memory-based recommendation algorithms, such as k-nearest neighbor (kNN), susceptible to the attacks compared with model-based collaborative filtering (CF) algorithms. An obfuscated diverse attack strategy made model-based algorithms vulnerable to attacks. Attack profiles generated with this strategy are also able to avoid principal component analysis (PCA)-based detection. This paper proposes an algorithm to detect obfuscated diverse attack profiles. Profiles' pairwise covariance with each other is used to separate attack profiles from genuine profiles. Through extensive experiments, we demonstrate that our algorithm detects these attack profiles with high accuracy.
推荐系统中混淆攻击的无监督检测
攻击配置文件的偏见评级对协同推荐系统的有效性有重大影响。先前的研究表明,与基于模型的协同过滤(CF)算法相比,标准的基于记忆的推荐算法,如k-最近邻(kNN),更容易受到攻击。模糊的多种攻击策略使得基于模型的算法容易受到攻击。使用此策略生成的攻击配置文件还能够避免基于主成分分析(PCA)的检测。本文提出了一种检测被混淆的各种攻击特征的算法。利用配置文件之间的两两协方差来区分攻击配置文件和真实配置文件。通过大量的实验,我们证明了我们的算法可以高精度地检测这些攻击特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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