Poisoning Self-supervised Learning Based Sequential Recommendations


연구 분야: Artificial Intelligence



학회: SIGIR '23: Proceedings of the 46th International ACM SIGIR Conference on Research and Development in Information Retrieval


초록

Self-supervised learning (SSL) has been recently applied to sequential recommender systems to provide high-quality user representations. However, while facilitating the learning process recommender systems, SSL is not without security threats: carefully crafted inputs can poison the pre-trained models driven by SSL, thus reducing the effectiveness of the downstream recommendation model. This work shows that poisoning attacks against the pre-training stage threaten sequential recommender systems. Without any background knowledge of the model architecture and parameters, nor any API queries, our strategy proves the feasibility of poisoning attacks on mainstream SSL-based recommender schemes as well as on commonly used datasets. By injecting only a tiny amount of fake users, we get the target item recommended to real users more than thousands of times as before, demonstrating that recommender systems have a new attack surface due to SSL. We further show our attack is challenging for recommendation platforms to detect and defend. Our work highlights the weakness of self-supervised recommender systems and shows the necessity for researchers to be aware of this security threat. Our source code is available at https://github.com/CongGroup/Poisoning-SSL-based-RS.


Author Profile
Yanling Wang

Wuhan University & City University of Hong Kong Wuhan

Hong Kong
Author Profile
Yuchen Liu

Hong Kong China

China
Author Profile
Qian Wang

Wuhan University & City University of Hong Kong Wuhan

Hong Kong

📄 논문 정보

발행 연도 2023년
인용수 15
출판 국가 China, Hong Kong
사이트 ACM
좋아요 수 0

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