Skip to main navigation Skip to search Skip to main content

Multi-Agent Attacks for Black-Box Social Recommendations

  • Shijie WANG
  • , Wenqi FAN
  • , Xiao-Yong WEI
  • , Xiaowei MEI
  • , Shanru LIN*
  • , Qing LI
  • *Corresponding author for this work

Research output: Journal Publications and ReviewsRGC 21 - Publication in refereed journalpeer-review

Abstract

The rise of online social networks has facilitated the evolution of social recommender systems, which incorporate social relations to enhance users' decision-making process. With the great success of Graph Neural Networks (GNNs) in learning node representations, GNN-based social recommendations have been widely studied to model user-item interactions and user-user social relations simultaneously. Despite their great successes, recent studies have shown that these advanced recommender systems are highly vulnerable to adversarial attacks, in which attackers can inject well-designed fake user profiles to disrupt recommendation performances. While most existing studies mainly focus on targeted attacks to promote target items on vanilla recommender systems, untargeted attacks to degrade the overall prediction performance are less explored on social recommendations under a black-box scenario. To perform untargeted attacks on social recommender systems, attackers can construct malicious social relationships for fake users to enhance the attack performance. However, the coordination of social relations and item profiles is challenging for attacking black-box social recommendations. To address this limitation, we first conduct several preliminary studies to demonstrate the effectiveness of cross-community connections and cold-start items in degrading recommendations performance. Specifically, we propose a novel framework MultiAttack based on multi-agent reinforcement learning to coordinate the generation of cold-start item profiles and cross-community social relations for conducting untargeted attacks on black-box social recommendations. Comprehensive experiments on various real-world datasets demonstrate the effectiveness of our proposed attacking framework under the black-box setting. © 2024 Copyright held by the owner/author(s). Publication rights licensed to ACM.
Original languageEnglish
Article number24
JournalACM Transactions on Information Systems
Volume43
Issue number1
Online published19 Dec 2024
DOIs
Publication statusPublished - Jan 2025

Bibliographical note

Full text of this publication does not contain sufficient affiliation information. The Research Unit(s) information for this record is based on the then academic department affiliation of the author(s).

Funding

The research described in this article has been partly supported by the National Natural Science Foundation of China (project no. 62102335), General Research Funds from the Hong Kong Research Grants Council (project nos. PolyU 15200021, 15207322, and 15200023), internal research funds from The Hong Kong Polytechnic University (project nos. P0036200, P0042693, P0048625, P0048752, and P0051361), and SHTM Interdisciplinary Large Grant (project no. P0043302).

Research Keywords

  • Additional Key Words and PhrasesSocial Recommendations
  • Adversarial Attacks
  • Black-box Attacks
  • Graph Neural Networks
  • Multi-agent Reinforcement Learning
  • Recommender Systems

RGC Funding Information

  • RGC-funded

Fingerprint

Dive into the research topics of 'Multi-Agent Attacks for Black-Box Social Recommendations'. Together they form a unique fingerprint.

Cite this