Abstract

The POI recommendation system has become an important means to help people discover attractive and interesting places. Based on our data analysis, we observe that users pay equal attention to conservatism and curiosity. In particular, adopting analysis corresponding to different time intervals, we find that users lean towards old POIs in the short term and look for new POIs with the increase of the time interval. However, existing approaches usually neglect users’ conservatism and curiosity preferences. Therefore, they are confronted with a bottleneck of depicting accurate user needs, making it difficult to improve the recommendation performance further. Besides, we further find that the number of user daily check‐ins has uneven distribution, which is not conducive to capture the accurate transition patterns of user behaviors. In light of the above, we design a single POI sequential method. On this basis, we propose a recommendation method of the variable additive Markov chain. We consider the user sequential preferences, especially liking old and pursuing new features. In addition, our model exploits the geographical tendency of user behaviors. Finally, we conduct abundant experiments on four cities in the two real datasets, i.e., Foursquare and Jiepang. The experimental results show its superiority over other competitors.

Highlights

  • Recommender systems are valuable tools that play a crucial role in mitigating information overload problems

  • With the increasing popularity of WSN [4] and locationbased social networks (LBSNs), such as Foursquare, Gowalla, and Yelp, unlimited possibilities are provided for users to share their highlights

  • (3) Based on the above discovery and the results of single POI serialization, we propose a variable-order additive Markov chain model to capture the influence of historical sequences on subsequent POIs

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Summary

Introduction

Recommender systems are valuable tools that play a crucial role in mitigating information overload problems Today, such systems are used in many application domains [1,2,3]. The academic and industry has invested a great deal of enthusiasm and energy in studies of recommendation, such as location-based activity recommendation [6], friend recommendation [1, 7], and location recommendation [8, 9] In these studies, providing location recommendations becomes an important application with the rapid emergence of LBSNs, such as POIs recommendation [10,11,12,13,14,15,16] and routes recommendation [17, 18]

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