剖面注入攻击中不同填料尺寸对鲁棒加权斜率1的影响

Newton Masinde, S. Fatima
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引用次数: 3

摘要

推荐系统的使用已经成为电子商务系统中事实上的标准。最流行的推荐技术是协同过滤技术。然而,协作推荐系统的开放性允许攻击者注入有偏见的个人资料数据,从而对所产生的推荐产生影响。标准的基于内存的协同过滤算法,如k近邻算法,已经被证明很容易受到这种攻击。在本文中,我们研究了基于模型的推荐算法在面对剖面注入攻击时的鲁棒性。具体来说,考虑了Slope One类算法下的两种推荐算法,即加权斜率1和改进斜率1。此外,我们提出了一种改进的基于斜率1的算法,我们称之为鲁棒加权斜率1 (RWSO)算法。经验表明,鲁棒加权斜率1在剖面注入攻击下表现更好。我们还表明,改进的坡1在攻击前条件下表现不佳,与预期相反。
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Effect of varying filler-size in profile injection attacks on the Robust Weighted Slope One
The use of recommender systems have become the de-facto standard in e-commerce systems. The most popular recommendation techniques are the collaborative filtering techniques. Their open nature of collaborative recommender systems however allow attackers who inject biased profile data to have an impact on the recommendations produced. The standard memory-based collaborative filtering algorithms, such as k-nearest neighbor, have been shown to be quite vulnerable to such attacks. In this paper, we examine the robustness of model-based recommendation algorithms in the face of profile injection attacks. Specifically, two recommendation algorithms under the Slope One class of algorithms, namely, Weighted Slope One and Improved Slope One, are considered. Additionally, we propose a modified Slope One based algorithm which we call the Robust Weighted Slope One (RWSO) algorithm. Empirically, we show that the Robust Weighted Slope One performs better under profile injection attacks. We also show that the Improved Slope One performs poorly under pre-attack conditions contrary to expectations.
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