Next point-of-interest recommendation with temporal and multi-level context attention

R Li, Y Shen, Y Zhu - 2018 IEEE International Conference on …, 2018 - ieeexplore.ieee.org
R Li, Y Shen, Y Zhu
2018 IEEE International Conference on Data Mining (ICDM), 2018ieeexplore.ieee.org
With the prosperity of the location-based social networks, next Point-of-Interest (POI)
recommendation has become an important service and received much attention in recent
years. The next POI is dynamically determined by the mobility pattern and various contexts
associated with user check-in sequence. However, exploring spatial-temporal mobility
patterns and incorporating heterogeneous contextual factors for recommendation are
challenging issues to be resolved. In this paper, we introduce a novel neural network model …
With the prosperity of the location-based social networks, next Point-of-Interest (POI) recommendation has become an important service and received much attention in recent years. The next POI is dynamically determined by the mobility pattern and various contexts associated with user check-in sequence. However, exploring spatial-temporal mobility patterns and incorporating heterogeneous contextual factors for recommendation are challenging issues to be resolved. In this paper, we introduce a novel neural network model named TMCA (Temporal and Multi-level Context Attention) for next POI recommendation. Our model employs the LSTM-based encoder-decoder framework, which is able to automatically learn deep spatial-temporal representations for historical check-in activities and integrate multiple contextual factors using the embedding method in a unified manner. We further propose the temporal and multi-level context attention mechanisms to adaptively select relevant check-in activities and contextual factors for next POI preference prediction. Extensive experiments have been conducted using two real-world check-in datasets. The results verify (1) the superior performance of our proposed method in different evaluation metrics, compared with several state-of-the-art methods; and (2) the effectiveness of the temporal and multi-level context attention mechanisms on recommendation performance.
ieeexplore.ieee.org