Projects per year
Abstract
Federated learning addresses privacy concerns in multimedia recommender systems by enabling collaborative model training without exchanging raw data. However, existing federated recommendation models are mainly based on basic backbones like Matrix Factorization (MF), which are inadequate to capture complex implicit interactions between users and multimedia content. Graph Convolutional Networks (GCNs) offer a promising method by utilizing the information from high-order neighbors, but face challenges in federated settings due to problems such as over-smoothing, data heterogeneity, and elevated communication expenses. To resolve these problems, we propose a Cluster-driven Personalized Federated Recommender System with Interest-aware Graph Convolution Network (CPF-GCN) for multimedia recommendation. CPF-GCN comprises a local interest-aware GCN module that optimizes node representations through subgraph-enhanced adaptive graph convolution operations, mitigating the over-smoothing problem by adaptively extracting information from layers and selectively utilizing high-order connectivity based on user interests. Simultaneously, a cluster-driven aggregation approach at the server significantly reduces communication costs by selectively aggregating models from clusters. The aggregation produces a global model and cluster-level models, combining them with the user's local model allows us to tailor the recommendation model for the user, achieving personalized recommendations. Moreover, we propose an adversarial optimization technique to further augment the robustness of CPF-GCN. Experiments on three datasets demonstrate that CPF-GCN significantly outperforms the state-of-the-art models.
Original language | English |
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Title of host publication | MM '24 |
Subtitle of host publication | proceedings of the 32nd ACM International Conference on Multimedia |
Place of Publication | New York |
Publisher | Association for Computing Machinery |
Pages | 5614-5622 |
Number of pages | 9 |
ISBN (Electronic) | 9798400706868 |
DOIs | |
Publication status | Published - 2024 |
Event | ACM International Conference on Multimedia (32nd : 2024) - Melbourne, Australia Duration: 28 Oct 2024 → 1 Nov 2024 Conference number: 32nd |
Conference
Conference | ACM International Conference on Multimedia (32nd : 2024) |
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Abbreviated title | MM '24 |
Country/Territory | Australia |
City | Melbourne |
Period | 28/10/24 → 1/11/24 |
Keywords
- Recommender System
- Federated Learning
- Graph Convolution Network
- Clustering
- Multimedia Recommendation
Projects
- 1 Finished
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DE21 : Scalable and Deep Anomaly Detection from Big Data with Similarity Hashing
1/01/21 → 31/12/23
Project: Research