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A Robust Multi-Criteria Collaborative Filtering Algorithm

机译:鲁棒的多准则协同过滤算法

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摘要

Collaborative filtering recommender systems assist individuals to discover relevant products or services that they might be interested in a large set of alternatives by analyzing the collected preferences. Recent research presents that the accuracy of recommendations might be improved significantly by collecting multi-criteria user preferences. Such rating scheme allows users to express their preferences better. Multi-criteria collaborative filtering algorithms are suitable for utilizing in many domains such as research paper, movie, or hotel recommendation. However, such systems are vulnerable to shilling attacks. In order to prevent manipulations, robust recommendation algorithms are required. Although multi-criteria collaborative filtering algorithms were evaluated in several dimension, robustness against shilling attacks has not been studied as a feature. In this paper, we propose an attack-resistant multi-criteria collaborative filtering algorithm. Experimental evaluation confirms that the proposed algorithm is not deeply affected against all known attack types.
机译:协作式过滤推荐系统可帮助个人通过分析收集的偏好来发现他们可能对大量替代产品感兴趣的相关产品或服务。最近的研究表明,通过收集多标准用户的偏好,建议的准确性可能会大大提高。这样的评分方案使用户可以更好地表达自己的偏好。多准则协作过滤算法适用于许多领域,例如研究论文,电影或酒店推荐。但是,这样的系统容易受到先令攻击。为了防止操纵,需要鲁棒的推荐算法。尽管在多个维度上评估了多准则协作过滤算法,但尚未研究针对先令攻击的鲁棒性。在本文中,我们提出了一种抗攻击的多准则协同过滤算法。实验评估证实,所提出的算法不会对所有已知的攻击类型产生深远的影响。

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