Recommender systems: attack types and strategies
AAAI(2005)
摘要
In the research to date, the performance of recommender systems has been extensively evaluated across various dimensions. Increasingly, the issue of robustness against malicious attack is receiving attention from the research community. In previous work, we have shown that knowledge of certain domain statistics is sufficient to allow successful attacks to be mounted against recommender systems. In this paper, we examine the extent of domain knowledge that is actually required and find that, even when little such knowledge is known, it remains possible to mount successful attacks.
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关键词
research community,recommender system,certain domain statistic,attack type,various dimension,previous work,domain knowledge,successful attack,malicious attack
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