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Detecting Vicious Users in Recommendation Systems

机译:在推荐系统中检测恶意用户

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摘要

Spam and noisy ratings affect the performance of recommendation systems which can lead to incorrect estimations and predictions. The challenge is to discover noisy ratings early in order to isolate its impact. In this paper we suggest an analysis using positive feedback which considers the user's level of confidence, and grades the user from completely honest to complete dishonest. The calculated user's level of confidence is computed based upon the detected level of honesty and affect his ratings. Each domain of ontologies has a calculated region of rejection and non-rejection using each user confidence level, placing his ratings in one region or another and thereby affecting his level of confidence. We used a Movie Lens of 1M ratings dataset to perform the required training. Suggested method has distinguished perfectly between Normal, Excess, Inferiority, and completely dishonest.
机译:垃圾邮件和嘈杂的评分会影响推荐系统的性能,从而导致错误的估算和预测。面临的挑战是尽早发现噪声等级,以隔离其影响。在本文中,我们建议使用正反馈进行分析,该分析考虑了用户的置信度,并将用户从完全诚实变为完全不诚实。基于检测到的诚实度来计算所计算出的用户的信任度,并影响其评级。使用每个用户的置信度,每个本体域都有一个计算得出的拒绝和不拒绝区域,将其评分置于一个或另一个区域中,从而影响其置信度。我们使用了1M评级的电影镜头数据集来执行所需的训练。建议的方法在正常,过度,自卑和完全不诚实之间做出了完美区分。

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