Ruifeng DingZhenzhong ChenXiaolei Li
With the growing popularity of location-based social networks (LBSNs), time-specific POI recommendation has become important in recent years, which provides more accurate recommendation services for users in specific spatio–temporal contexts. In this paper, we propose a spatio–temporal distance metric embedding model (ST-DME) for time–specific recommendation, which exploits both temporal and geo-sequential property of a check-in to effectively model users’ time-specific preferences. Specifically, we divide timestamps of user’ check-ins into different time slots and adopt Euclidean distance rather than inner product of latent vectors to measure users’ preferences for POIs in a given time slot. We also apply a transition coefficient based on users’ most recent check-ins to incorporate geo-sequential influence in users’ check-in behaviors. A weighted pairwise loss with a hard sampling strategy is adopted to optimize latent vectors of users, POIs, and time slots in a metric space. Extensive experiments are conducted to demonstrate the effectiveness of our proposed method and results show that ST-DME outperforms state-of-the-art algorithms for time-specific POI recommendation on two public LBSNs data sets.
Feng LiangHonglong ChenKai LinJunjian LiZhe LiHuansheng XueVladimir ShakhovHannan Bin Liaqat
Haochao YingJian WuGuandong XuYanchi LiuTingting LiangXiao ZhangHui Xiong
Xu ChenYixian LiuFeng LiXiangxiang LiXiangyang Jia
LI Manwen, ZHANG Yueqin, ZHANG Chenwei, ZHANG Zehua