Comprehensive Assessment of Robustness in Fairness of GNN-based Recommender Systems against Attacks

Boratto L.;Fenu G.;Marras M.;Medda G.
2024-01-01

Abstract

The robustness of recommendation models is typically measured by their ability to maintain the original utility when exposed to attacks. In contrast, robustness in fairness pertains to the resilience of fairness levels in the presence of such attacks. Despite its significance, this latter area remains largely underexplored. In this extended abstract, we evaluate the robustness of graph-based recommender systems with respect to fairness from both the consumer and provider perspectives, under attacks involving edge-level perturbations. We analyze the impact of these perturbations on fairness through an experimental protocol involving three datasets and three graph neural networks. Our findings reveal severe fairness issues, particularly on the consumer side, where fairness is compromised to a greater extent than on the provider side. Source code: https://github.com/jackmedda/CPFairRobust.
2024
Inglese
IIR 2024. Italian Information Retrieval Workshop 2024. Proceedings of the 14th Italian Information Retrieval Workshop. Udine, Italy, September 5-6, 2024
CEUR-WS
3802
62
65
4
14th Italian Information Retrieval Workshop, IIR 2024
Comitato scientifico
September 5-6, 2024
Udine, Italy
scientifica
Consumer; Fairness; GNN; Multi-Stakeholder; Perturbation; Provider; Recommendation; Robustness
4 Contributo in Atti di Convegno (Proceeding)::4.1 Contributo in Atti di convegno
Boratto, L.; Fabbri, F.; Fenu, G.; Marras, M.; Medda, G.
273
5
4.1 Contributo in Atti di convegno
open
info:eu-repo/semantics/conferencePaper
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