Analysis of a low-dimensional linear model under recommendation attacks

Sheng Zhang, Ouyang Yi, J. Ford, F. Makedon
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引用次数: 90

Abstract

Collaborative filtering techniques have become popular in the past decade as an effective way to help people deal with information overload. Recent research has identified significant vulnerabilities in collaborative filtering techniques. Shilling attacks, in which attackers introduce biased ratings to influence recommendation systems, have been shown to be effective against memory-based collaborative filtering algorithms. We examine the effectiveness of two popular shilling attacks (the random attack and the average attack) on a model-based algorithm that uses Singular Value Decomposition (SVD) to learn a low-dimensional linear model. Our results show that the SVD-based algorithm is much more resistant to shilling attacks than memory-based algorithms. Furthermore, we develop an attack detection method directly built on the SVD-based algorithm and show that this method detects random shilling attacks with high detection rates and very low false alarm rates.
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推荐攻击下的低维线性模型分析
协同过滤技术作为一种帮助人们处理信息过载的有效方法在过去十年中变得流行起来。最近的研究发现了协同过滤技术的重大漏洞。先令攻击,其中攻击者引入有偏见的评级来影响推荐系统,已被证明对基于记忆的协同过滤算法有效。我们研究了两种流行的先令攻击(随机攻击和平均攻击)对基于模型的算法的有效性,该算法使用奇异值分解(SVD)来学习低维线性模型。我们的研究结果表明,基于奇异值分解的算法比基于内存的算法更能抵抗先令攻击。此外,我们开发了一种直接建立在基于奇异值分解的算法上的攻击检测方法,并表明该方法检测随机先令攻击具有很高的检测率和很低的虚警率。
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