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Attacks and Detections in Recommender Systems: A Comprehensive Analysis for Models, Progresses, and Trends

  • Yan Feng
  • , Zhihai Yang
  • , Kexin Li
  • , Jianxin Li
  • , Pinghui Wang
  • , Zhiquan Liu
  • Chang'an University
  • Edith Cowan University
  • Jinan University

科研成果: 期刊稿件文章同行评审

1 引用 (Scopus)

摘要

Recommender systems (RSs), as crucial components of online services, can help users efficiently obtain information they may like. In reality, RSs face long-term threats. Attackers manipulate recommendation results by injecting malicious data in order to obtain benefits. At present, research on the security of RSs lacks a comprehensive understanding of attack capabilities. Moreover, existing defense strategies have not yet been systematically associated with attack characteristics. More importantly, existing defense methods rarely focus on real unlabeled data in practical application scenarios for anomaly detection and forensics. Therefore, this survey systematically analyzes the security of RSs and provides new insights. Specifically, we first categorize attack models from an attack perspective into: attack strategies based on targets, attack strategies against security and privacy, attack strategies based on prior knowledge, and attack strategies against other RSs. From a perspective of defense, existing detection models, second, can be divided into: behavioral representation based on statistics, detection based on hidden features, detection against privacy attacks, anomaly discovery based on association mining, and abnormality forensics for real-world data. Finally, we propose several potential research directions aimed at providing guidance for the security research of RSs.

源语言英语
页(从-至)889-910
页数22
期刊IEEE Transactions on Knowledge and Data Engineering
38
2
DOI
出版状态已出版 - 2026

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