Defending Substitution-Based Profile Pollution Attacks on Sequential Recommenders

07/19/2022
by   Zhenrui Yue, et al.
0

While sequential recommender systems achieve significant improvements on capturing user dynamics, we argue that sequential recommenders are vulnerable against substitution-based profile pollution attacks. To demonstrate our hypothesis, we propose a substitution-based adversarial attack algorithm, which modifies the input sequence by selecting certain vulnerable elements and substituting them with adversarial items. In both untargeted and targeted attack scenarios, we observe significant performance deterioration using the proposed profile pollution algorithm. Motivated by such observations, we design an efficient adversarial defense method called Dirichlet neighborhood sampling. Specifically, we sample item embeddings from a convex hull constructed by multi-hop neighbors to replace the original items in input sequences. During sampling, a Dirichlet distribution is used to approximate the probability distribution in the neighborhood such that the recommender learns to combat local perturbations. Additionally, we design an adversarial training method tailored for sequential recommender systems. In particular, we represent selected items with one-hot encodings and perform gradient ascent on the encodings to search for the worst case linear combination of item embeddings in training. As such, the embedding function learns robust item representations and the trained recommender is resistant to test-time adversarial examples. Extensive experiments show the effectiveness of both our attack and defense methods, which consistently outperform baselines by a significant margin across model architectures and datasets.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/20/2020

Defense against Adversarial Attacks in NLP via Dirichlet Neighborhood Ensemble

Despite neural networks have achieved prominent performance on many natu...
research
12/11/2022

Untargeted Attack against Federated Recommendation Systems via Poisonous Item Embeddings and the Defense

Federated recommendation (FedRec) can train personalized recommenders wi...
research
04/25/2022

MLP4Rec: A Pure MLP Architecture for Sequential Recommendations

Self-attention models have achieved state-of-the-art performance in sequ...
research
09/16/2021

Membership Inference Attacks Against Recommender Systems

Recently, recommender systems have achieved promising performances and b...
research
06/11/2023

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

With rich visual data, such as images, becoming readily associated with ...
research
06/02/2020

Adversarial Item Promotion: Vulnerabilities at the Core of Top-N Recommenders that Use Images to Address Cold Start

E-commerce platforms provide their customers with ranked lists of recomm...
research
01/29/2022

Robustness of Deep Recommendation Systems to Untargeted Interaction Perturbations

While deep learning-based sequential recommender systems are widely used...

Please sign up or login with your details

Forgot password? Click here to reset