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Securing Visually-Aware Recommender Systems: An Adversarial Image Reconstruction and Detection Framework

  • Minglei Yin
  • , Bin Liu
  • , Neil Zhenqiang Gong
  • , Xin Li
  • SUNY Albany
  • West Virginia University
  • Duke University

Research output: Contribution to journalArticlepeer-review

Abstract

With rich visual data, such as images, becoming readily associated with items, visually-aware recommendation systems (VARS) have been widely used in different applications. Recent studies have shown that VARS are vulnerable to item-image adversarial attacks, which add human-imperceptible perturbations to the clean images associated with those items. Attacks on VARS pose new security challenges to a wide range of applications, such as e-commerce and social media, where VARS are widely used. How to secure VARS from such adversarial attacks becomes a critical problem. Currently, there is still a lack of systematic studies on how to design defense strategies against visual attacks on VARS. In this article, we attempt to fill this gap by proposing an adversarial image denoising and detection framework to secure VARS. Our proposed method can simultaneously (1) secure VARS from adversarial attacks characterized by local perturbations by image denoising based on global vision transformers; and (2) accurately detect adversarial examples using a novel contrastive learning approach. Meanwhile, our framework is designed to be used as both a filter and a detector so that they can be jointly trained to improve the flexibility of our defense strategy to a variety of attacks and VARS models. Our approach is uniquely tailored for VARS, addressing the distinct challenges in scenarios where adversarial attacks can differ across industries, for instance, causing misclassification in e-commerce or misrepresentation in real estate. We have conducted extensive experimental studies with two popular attack methods (FGSM and PGD). Our experimental results on two real-world datasets show that our defense strategy against visual attacks is effective and outperforms existing methods on different attacks. Moreover, our method demonstrates high accuracy in detecting adversarial examples, complementing its robustness across various types of adversarial attacks.

Original languageEnglish
Article number27
JournalACM Transactions on Management Information Systems
Volume16
Issue number3
DOIs
StatePublished - Sep 11 2025

Keywords

  • Recommendation systems
  • adversarial machine learning
  • attack detection
  • contrastive learning
  • visual features

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