Robust evaluation of binary collaborative recommendation under profile injection attack

Qingyun Long, Qiaoduo Hu
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引用次数: 6

Abstract

Recommender systems are being improved by every means to be more accurate, more robust, and faster. Collaborative filtering is the mainstream type of recommendation algorithms, and its core is calculating the similarity between users or items based on ratings. Researchers recently found that the binary similarity based solely on who-rated-what rather than actual ratings output more accurate recommendation. We, from robust perspective, evaluated the binary collaborative filtering under multiple types of profile injection attacks on large dataset. Experimental results show binary collaborative filtering is more robust than actual ratings based collaborative filtering in all situations.
配置文件注入攻击下二进制协同推荐的鲁棒性评估
推荐系统正在通过各种方式得到改进,以更准确、更健壮和更快。协同过滤是推荐算法的主流类型,其核心是基于评分计算用户或物品之间的相似度。研究人员最近发现,仅仅基于“谁给什么打分”的二元相似性,而不是基于实际评分,会输出更准确的推荐。从鲁棒性的角度,对大型数据集上多种配置文件注入攻击下的二值协同过滤进行了评估。实验结果表明,在所有情况下,二值协同过滤都比基于实际评级的协同过滤具有更强的鲁棒性。
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