Litcius/Paper detail

Memory Augmented Hierarchical Attention Network for Next Point-of-Interest Recommendation

Chenwang Zheng, Dan Tao, Jiangtao Wang, Lei Cui, Wenjie Ruan, Shui Yu

2020IEEE Transactions on Computational Social Systems26 citationsDOIOpen Access PDF

Abstract

Next point-of-interest (POI) recommendation has been an important task for location-based intelligent services. However, the application of such promising technique is still limited due to the following three challenges: 1) the difficulty of capturing complicated spatiotemporal patterns of user movements; 2) the hardness of modeling fine-grained long-term preferences of users; and 3) the effective learning of interaction between long- and short-term preferences. Motivated by this, we propose a memory augmented hierarchical attention network (MAHAN), which considers both short-term check-in sequences and long-term memories. To capture the complicated interest tendencies of users within a short-term period, we design a spatiotemporal self-attention network (ST-SAN). For long-term preferences modeling, we employ a memory network to maintain fine-grained preferences of users and dynamically operate them based on users' constantly updated check-ins. Moreover, we first employ a coattention network/mechanism to integrate the proposed ST-SAN and memory network, which can fully learn the dynamic interaction between long- and short-term preferences. Our extensive experiments on two publicly available data sets demonstrate the effectiveness of MAHAN.

Topics & Concepts

Computer scienceTerm (time)Task (project management)Point of interestPoint (geometry)Long short term memoryArtificial intelligenceHuman–computer interactionMachine learningArtificial neural networkRecurrent neural networkMathematicsEconomicsManagementGeometryPhysicsQuantum mechanicsRecommender Systems and TechniquesHuman Mobility and Location-Based AnalysisMultimodal Machine Learning Applications