Topology-Aware Popularity Debiasing via Simplicial Complexes
Recommender systems (RS) play a critical role in delivering personalized content across various online platforms, leveraging collaborative filtering (CF) as a key technique to generate recommendations based on users' historical interaction data. Recent advancements in CF have been driven by the...
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Zusammenfassung: | Recommender systems (RS) play a critical role in delivering personalized
content across various online platforms, leveraging collaborative filtering
(CF) as a key technique to generate recommendations based on users' historical
interaction data. Recent advancements in CF have been driven by the adoption of
Graph Neural Networks (GNNs), which model user-item interactions as bipartite
graphs, enabling the capture of high-order collaborative signals. Despite their
success, GNN-based methods face significant challenges due to the inherent
popularity bias in the user-item interaction graph's topology, leading to
skewed recommendations that favor popular items over less-known ones.
To address this challenge, we propose a novel topology-aware popularity
debiasing framework, Test-time Simplicial Propagation (TSP), which incorporates
simplicial complexes (SCs) to enhance the expressiveness of GNNs. Unlike
traditional methods that focus on pairwise relationships, our approach captures
multi-order relationships through SCs, providing a more comprehensive
representation of user-item interactions. By enriching the neighborhoods of
tail items and leveraging SCs for feature smoothing, TSP enables the
propagation of multi-order collaborative signals and effectively mitigates
biased propagation.
Our TSP module is designed as a plug-and-play solution, allowing for seamless
integration into pre-trained GNN-based models without the need for fine-tuning
additional parameters. Extensive experiments on five real-world datasets
demonstrate the superior performance of our method, particularly in long-tail
recommendation tasks. Visualization results further confirm that TSP produces
more uniform distributions of item representations, leading to fairer and more
accurate recommendations. |
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DOI: | 10.48550/arxiv.2411.13892 |