Visible to the public Improving Resistance of Matrix Factorization Recommenders To Data Poisoning Attacks

TitleImproving Resistance of Matrix Factorization Recommenders To Data Poisoning Attacks
Publication TypeConference Paper
Year of Publication2022
AuthorsShams, Sulthana, Leith, Douglas J.
Conference Name2022 Cyber Research Conference - Ireland (Cyber-RCI)
Keywordsattack resistance, composability, data poisoning attacks, decomposition, Human Behavior, matrix factorisation, Metrics, Monitoring, pubcrawl, recommender systems, Resistance, Systematics
AbstractIn this work, we conduct a systematic study on data poisoning attacks to Matrix Factorisation (MF) based Recommender Systems (RS) where a determined attacker injects fake users with false user-item feedback, with an objective to promote a target item by increasing its rating. We explore the capability of a MF based approach to reduce the impact of attack on targeted item in the system. We develop and evaluate multiple techniques to update the user and item feature matrices when incorporating new ratings. We also study the effectiveness of attack under increasing filler items and choice of target item.Our experimental results based on two real-world datasets show that the observations from the study could be used to design a more robust MF based RS.
DOI10.1109/Cyber-RCI55324.2022.10032671
Citation Keyshams_improving_2022