Time-aware User Modeling with Check-in Time Prediction for Next POI Recommendation

Xin Wang, Xiao Liu, Li Li, Xiao Chen, Jin Liu, Hao Wu
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引用次数: 8

Abstract

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.
下一个POI推荐的具有时间感知的用户建模与签入时间预测
随着基于位置的社交网络的兴起,POI (point-of-interest)推荐作为一种重要的基于位置的服务受到越来越多的关注。尽管已经有大量的研究致力于根据用户的历史移动轨迹来学习和推荐用户的下一个poi,但仍然缺乏对用户签到时间偏好的差异以及poi与签到时间之间的内在关系的考虑。为了填补这一空白,本文提出了一种新的推荐方法,该方法将多任务学习应用于已知稀疏的历史用户移动轨迹。具体来说,我们设计了一个交叉图神经网络来获得时间感知的用户建模,并控制有多少信息在不同的语义空间中流动,这弥补了现有用户建模方法的不足。此外,我们设计了一个签到时间预测任务,从时间角度学习用户的活动,并学习poi与其签到时间之间的内部模式,旨在减少搜索空间以克服数据稀疏性问题。在两个真实的公共数据集上的综合实验表明,我们提出的方法优于几种具有代表性的POI推荐方法,在Recall@1、5、10上提高了8.93% ~ 20.21%,在Mean Reciprocal Rank上提高了9.25% ~ 17.56%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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