Robustness Analysis of Naive Bayesian Classifier-Based Collaborative Filtering
Abstract
In this study, binary forms of previously defined basic shilling attack models are proposed and the robustness of naive Bayesian classifier-based collaborative filtering algorithm is examined. Real data-based experiments are conducted and each attack type's performance is explicated. Since existing measures, which are used to assess the success of shilling attacks, do not work on binary data, a new evaluation metric is proposed. Empirical outcomes show that it is possible to manipulate binary rating-based recommender systems' predictions by inserting malicious user profiles. Hence, it is shown that naive Bayesian classifier-based collaborative filtering scheme is not robust against shilling attacks.
Source
E-Commerce and Web Technologies, Ec-Web 2013Volume
152Collections
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