E-MMKGR: A Unified Multimodal Knowledge Graph Framework for E-commerce Applications
About
Multimodal recommender systems (MMRSs) enhance collaborative filtering by leveraging item-side modalities, but their reliance on a fixed set of modalities and task-specific objectives limits both modality extensibility and task generalization. We propose E-MMKGR, a framework that constructs an e-commerce-specific Multimodal Knowledge Graph E-MMKG and learns unified item representations through GNN-based propagation and KG-oriented optimization. These representations provide a shared semantic foundation applicable to diverse tasks. Experiments on real-world Amazon datasets show improvements of up to 10.18% in Recall@10 for recommendation and up to 21.72% over vector-based retrieval for product search, demonstrating the effectiveness and extensibility of our approach.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Recommendation | Beauty | Recall@1011.33 | 39 | |
| Recommendation | OFFICE | -- | 31 | |
| Recommendation | Clothing | Recall@106.11 | 22 | |
| Recommendation | Toys | Hit Ratio@100.1101 | 21 | |
| Recommendation | Grocery | Recall@1012.35 | 8 | |
| Recommendation | Pet | Recall@1011.87 | 8 | |
| Product Search | Clothing Fine-grained Query | R@50.7048 | 2 | |
| Product Search | Clothing Coarse-grained Query | R@576.65 | 2 |