计算机科学
排序倒数
任务(项目管理)
登记入住
学习排名
透视图(图形)
兴趣点
秩(图论)
情报检索
图形
点(几何)
推荐系统
代表(政治)
机器学习
数据挖掘
人工智能
排名(信息检索)
理论计算机科学
几何学
数学
政治学
法学
管理
经济
气象学
物理
组合数学
政治
作者
Xin Wang,Xiao Liu,Li Li,Xiao Chen,Jin Liu,Hao Wu
标识
DOI:10.1109/icws53863.2021.00028
摘要
POI (point-of-interest) recommendation as an important type of location-based services has received increasing attention with the rise of location-based social networks. Although significant efforts have been dedicated to learning and recommending users' next POIs based on their historical mobility traces, there still lacks consideration of the discrepancy of users' check-in time preferences and the inherent relationships between POIs and check-in times. To fill this gap, this paper proposes a novel recommendation method which applies multi-task learning over historical user mobility traces known to be sparse. Specifically, we design a cross-graph neural network to obtain time-aware user modeling and control how much information flows across different semantic spaces, which makes up the inadequate representation of existing user modeling methods. In addition, we design a check-in time prediction task to learn users' activities from a time perspective and learn internal patterns between POIs and their check-in times, aiming to reduce the search space to overcome the data sparsity problem. Comprehensive experiments on two real-world public datasets demonstrate that our proposed method outperforms several representative POI recommendation methods with 8.93% to 20.21 % improvement on Recall@1, 5, 10, and 9.25% to 17.56% improvement on Mean Reciprocal Rank.
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