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Disentangling Popularity and Quality: An Edge Classification Approach for Fair Recommendation

About

Graph neural networks (GNNs) have proven to be an effective tool for enhancing the performance of recommender systems. However, these systems often suffer from popularity bias, leading to an unfair advantage for frequently interacted items, while overlooking high-quality but less popular items. In this paper, we propose a GNN-based recommendation model that disentangles popularity and quality to address this issue. Unlike existing methods that treat all long-tail items uniformly, our approach introduces an edge classification technique to differentiate between popularity bias and genuine quality disparities among items. Furthermore, it uses cost-sensitive learning to adjust the misclassification penalties, ensuring that underrepresented yet relevant items are not unfairly disregarded. Experimental results demonstrate improvements in fairness metrics by approximately $32\%$ on average across different scenarios while maintaining competitive accuracy, with only minor variations compared to state-of-the-art methods.

Nemat Gholinejad, Mostafa Haghir Chehreghani• 2025

Related benchmarks

TaskDatasetResultRank
RecommendationAmazon Health
Recall66.2
36
RecommendationAmazon Toys
Recall81.21
36
RecommendationBookCrossing
Recall24.32
27
RecommendationAmazon Electronics
Recall14.3
18
RecommendationAmazon-CDs
Recall20.51
15
RecommendationBook-Crossing
NDCG@1015.07
10
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