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An attention‐based category‐aware GRU model for the next POI recommendation
Author(s) -
Liu Yuwen,
Pei Aixiang,
Wang Fan,
Yang Yihong,
Zhang Xuyun,
Wang Hao,
Dai Hongning,
Qi Lianyong,
Ma Rui
Publication year - 2021
Publication title -
international journal of intelligent systems
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.291
H-Index - 87
eISSN - 1098-111X
pISSN - 0884-8173
DOI - 10.1002/int.22412
Subject(s) - computer science , construct (python library) , set (abstract data type) , context (archaeology) , check in , preference , information retrieval , artificial intelligence , recommender system , point (geometry) , data mining , machine learning , recurrent neural network , data set , sequence (biology) , artificial neural network , paleontology , physics , geometry , mathematics , genetics , meteorology , microeconomics , economics , biology , programming language
With the continuous accumulation of users' check‐in data, we can gradually capture users' behavior patterns and mine users' preferences. Based on this, the next point‐of‐interest (POI) recommendation has attracted considerable attention. Its main purpose is to simulate users' behavior habits of check‐in behavior. Then, different types of context information are used to construct a personalized recommendation model. However, the users' check‐in data are extremely sparse, which leads to low performance in personalized model training using recurrent neural network. Therefore, we propose a category‐aware gated recurrent unit (GRU) model to mitigate the negative impact of sparse check‐in data, capture long‐range dependence between user check‐ins and get better recommendation results of POI category. We combine the spatiotemporal information of check‐in data and take the POI category as users' preference to train the model. Also, we develop an attention‐based category‐aware GRU (ATCA‐GRU) model for the next POI category recommendation. The ATCA‐GRU model can selectively utilize the attention mechanism to pay attention to the relevant historical check‐in trajectories in the check‐in sequence. We evaluate ATCA‐GRU using a real‐world data set, named Foursquare. The experimental results indicate that our ATCA‐GRU model outperforms the existing similar methods for next POI recommendation.