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Collaborative Filtering Under a Sybil Attack: Similarity Metrics do Matter!

机译:在Sybil攻击下进行协作过滤:相似性指标至关重要!

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Recommendation systems help users identify interesting content, but they also open new privacy threats. In this paper, we deeply analyze the effect of a Sybil attack that tries to infer information on users from a user-based collaborative-filtering recommendation systems. We discuss the impact of different similarity metrics used to identity users with similar tastes in the trade-off between recommendation quality and privacy. Finally, we propose and evaluate a novel similarity metric that combines the best of both worlds: a high recommendation quality with a low prediction accuracy for the attacker. Our results, on a state-of-the-art recommendation framework and on real datasets show that existing similarity metrics exhibit a wide range of behaviors in the presence of Sybil attacks, while our new similarity metric consistently achieves the best trade-off while outperforming state-of-the-art solutions.
机译:推荐系统可以帮助用户识别有趣的内容,但同时也带来了新的隐私威胁。在本文中,我们深入分析了Sybil攻击的效果,该攻击试图从基于用户的协作筛选推荐系统中推断用户的信息。我们讨论了在推荐质量和隐私之间进行权衡时,使用不同的相似性度量标准来标识具有相似品味的用户的影响。最后,我们提出并评估了一种新颖的相似性度量标准,该度量标准结合了两个方面的优势:对攻击者的高推荐质量和较低的预测准确性。我们在最新的推荐框架和真实数据集上的结果表明,在存在Sybil攻击的情况下,现有的相似性指标表现出各种各样的行为,而我们的新相似性指标始终在达到最佳折衷效果的同时却表现出色最先进的解决方案。

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