Multifaceted Scenario-Aware Hypergraph Learning for Next POI Recommendation
About
Among the diverse services provided by Location-Based Social Networks (LBSNs), Next Point-of-Interest (POI) recommendation plays a crucial role in inferring user preferences from historical check-in trajectories. However, existing sequential and graph-based methods frequently neglect significant mobility variations across distinct contextual scenarios (e.g., tourists versus locals). This oversight results in suboptimal performance due to two fundamental limitations: the inability to capture scenario-specific features and the failure to resolve inherent inter-scenario conflicts. To overcome these limitations, we propose the Multifaceted Scenario-Aware Hypergraph Learning method (MSAHG), a framework that adopts a scenario-splitting paradigm for next POI recommendation. Our main contributions are: (1) Construction of scenario-specific, multi-view disentangled sub-hypergraphs to capture distinct mobility patterns; (2) A parameter-splitting mechanism to adaptively resolve conflicting optimization directions across scenarios while preserving generalization capability. Extensive experiments on three real-world datasets demonstrate that MSAHG consistently outperforms five state-of-the-art methods across diverse scenarios, confirming its effectiveness in multi-scenario POI recommendation.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Next POI Prediction | NYC | ACC@10.2881 | 31 | |
| Next POI Prediction | TKY | HR@2061.7 | 26 | |
| Next POI Prediction | CA (Tail) | H@2039.52 | 13 | |
| Next POI Prediction | NYC (Tail) | H@2064.55 | 13 | |
| Next POI Prediction | NYC (Head) | H@2097.02 | 13 | |
| Next POI Prediction | TKY (Head) | H@2077.86 | 13 | |
| Next POI Prediction | CA (Head) | H@2070.54 | 13 |