Leveraging multi-aspect time-related influence in location recommendation

被引:0
作者
Saeid Hosseini
Hongzhi Yin
Xiaofang Zhou
Shazia Sadiq
Mohammad Reza Kangavari
Ngai-Man Cheung
机构
[1] Singapore University of Technology and Design,ST Electronics
[2] Iran University of Science and Technology, SUTD Cyber Security Laboratory
[3] University of Queensland,School of Computer Engineering
来源
World Wide Web | 2019年 / 22卷
关键词
Multi-aspect time-related influence; Hybrid location recommendation; Location-based service;
D O I
暂无
中图分类号
学科分类号
摘要
Point-Of-Interest (POI) recommendation aims to mine a user’s visiting history and find her/his potentially preferred places. Although location recommendation methods have been studied and improved pervasively, the challenges w.r.t employing various influences including temporal aspect still remain unresolved. Inspired by the fact that time includes numerous granular slots (e.g. minute, hour, day, week and etc.), in this paper, we define a new problem to perform recommendation through exploiting all diversified temporal factors. In particular, we argue that most existing methods only focus on a limited number of time-related features and neglect others. Furthermore, considering a specific granularity (e.g. time of a day) in recommendation cannot always apply to each user or each dataset. To address the challenges, we propose a probabilistic generative model, named after Multi-aspect Time-related Influence (MATI) to promote the effectiveness of the location (POI) recommendation task. We also develop an effective optimization algorithm based on Expectation Maximization (EM). Our MATI model firstly detects a user’s temporal multivariate orientation using her check-in log in Location-based Social Networks(LBSNs). It then performs recommendation using temporal correlations between the user and proposed locations. Our method is applicable to various types of the recommendation models and can work efficiently in multiple time-scales. Extensive experimental results on two large-scale LBSN datasets verify the effectiveness of our method over other competitors. Categories and Subject Descriptors: H.3.3 [Information Search and Retrieval]: Information filtering; H.2.8 [Database Applications]: Data mining; J.4 [Computer Applications]: Social and Behavior Sciences
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页码:1001 / 1028
页数:27
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