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Evil Twins: Modeling Power Users in Attacks on Recommender Systems

机译:邪恶的双胞胎:在推荐系统的攻击中建模电力用户

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Attacks on Collaborative Filtering Recommender Systems (RS) can bias recommendations, potentially causing users to distrust results and the overall system. Attackers constantly innovate, and understanding the implications of novel attack vectors on system robustness is important for designers and operators. Foundational research on attacks in RSs studied attack user profiles based on straightforward models such as random or average ratings data. We are studying a novel category of attack based explicitly on measures of influence, in particular the potential impact of high-influence power users. This paper describes our approach to generate synthetic attack profiles that emulate influence characteristics of real power users, and it studies the impact of attack vectors that use synthetic power user profiles. We evaluate both the quality of synthetic power user profiles and the effectiveness of the attack, on both user-based and matrix-factorization-based recommender systems. Results show that synthetic user profiles that model real power users are an effective way of attacking collaborative recommender systems.
机译:攻击协作过滤推荐系统(RS)可以偏离建议,可能导致用户不信任结果和整个系统。攻击者不断创新,了解新型攻击向量对系统稳健性的影响对于设计人员和运营商来说很重要。基于诸如随机或平均评级数据的直接模型,RSS攻击的基础攻击基础研究。我们正在明确地研究一种新的攻击类别,特别是对影响措施,特别是高影响力用户的潜在影响。本文介绍了我们生成综合攻击曲线的方法,以模拟实际功率用户的影响特性,研究使用合成电源用户配置文件的攻击向量的影响。我们在基于用户和基于矩阵分解的推荐系统的基于用户和矩阵分解的推荐系统中评估合成电力用户简档的质量和攻击的有效性。结果表明,型号实证用户的合成用户简档是攻击协作推荐系统的有效方式。

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