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Shilling attacks against collaborative recommender systems: a review

机译:针对协作推荐系统的先令攻击:审查

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摘要

Collaborative filtering recommender systems (CFRSs) have already been proved effective to cope with the information overload problem since they merged in the past two decades. However, CFRSs are highly vulnerable to shilling or profile injection attacks since their openness. Ratings injected by malicious users seriously affect the authenticity of the recommendations as well as users' trustiness in the recommendation systems. In the past two decades, various studies have been conducted to scrutinize different profile injection attack strategies, shilling attack detection schemes, robust recommendation algorithms, and to evaluate them with respect to accuracy and robustness. Due to their popularity and importance, we survey about shilling attacks in CFRSs. We first briefly discuss the related survey papers about shilling attacks and analyze their deficiencies to illustrate the necessity of this paper. Next we give an overall picture about various shilling attack types and their deployment modes. Then we explain profile injection attack strategies, shilling attack detection schemes and robust recommendation algorithms proposed so far in detail. Moreover, we briefly explain evaluation metrics of the proposed schemes. Last, we discuss some research directions to improve shilling attack detection rates robustness of collaborative recommendation, and conclude this paper.
机译:协作过滤推荐系统(CFRS)已经证明有效应对信息超载问题,因为它们在过去二十年中合并。然而,由于他们的开放以来,CFRS非常容易遭受先令或轮廓注射攻击。恶意用户注入的评级严重影响了建议制度中建议的真实性以及用户的信任。在过去的二十年中,已经进行了各种研究,以审查不同的轮廓注入攻击策略,先令攻击检测计划,强大的推荐算法,并评估它们的准确性和鲁棒性。由于他们的普及和重要性,我们对CFRSS的先令攻击进行了调查。我们首先简要介绍一下关于先令攻击的相关调查文件,并分析他们的缺陷,以说明本文的必要性。接下来我们提供关于各种先令攻击类型及其部署模式的整体情况。然后我们解释了简介注入攻击策略,给出了迄今为止提出的攻击攻击检测方案和强大推荐算法。此外,我们简要解释了所提出的计划的评估指标。最后,我们讨论了一些研究方向,以提高先令攻击检测率的协作推荐的鲁棒性,并结束了本文。

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