Efficient Detection of Shilling’s Attacks in Collaborative Filtering Recommendation Systems Using Deep Learning Models

Mahsa Ebrahimian, R. Kashef
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引用次数: 7

Abstract

Recommendation systems, especially collaborative filtering recommenders, are vulnerable to shilling attacks as some profit-driven users may inject fake profiles into the system to alter recommendation outputs. Current shilling attack detection methods are mostly based on feature extraction techniques. The hand-designed features can confine the model to specific domains or datasets while deep learning techniques enable us to derive deeper level features, enhance detection performance, and generalize the solution on various datasets and domains. This paper illustrates the application of two deep learning methods to detect shilling attacks. We conducted experiments on the MovieLens 100K and Netflix Dataset with different levels of attacks and types. Experimental results show that deep learning models can achieve an accuracy of up to 99%.
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基于深度学习模型的协同过滤推荐系统中Shilling攻击的有效检测
推荐系统,尤其是协同过滤推荐系统,很容易受到先令攻击,因为一些受利润驱动的用户可能会向系统注入虚假的个人资料来改变推荐输出。目前的先令攻击检测方法大多基于特征提取技术。手工设计的特征可以将模型限制在特定的领域或数据集,而深度学习技术使我们能够获得更深层次的特征,提高检测性能,并将解决方案推广到各种数据集和领域。本文阐述了两种深度学习方法在检测先令攻击中的应用。我们在MovieLens 100K和Netflix数据集上进行了不同级别和类型的攻击实验。实验结果表明,深度学习模型的准确率高达99%。
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