Abstract

In location-based social networks (LBSNs), point-of-interest (POI) recommendations facilitate access to information for people by recommending attractive locations they have not previously visited. Check-in data and various contextual factors are widely taken into consideration to obtain people’s preferences regarding POIs in existing POI recommendation methods. In psychological effect-based POI recommendations, the memory-based attenuation of people’s preferences with respect to POIs, e.g., the fact that more attention is paid to POIs that were checked in to recently than those visited earlier, is emphasized. However, the memory effect only reflects the changes in an individual’s check-in trajectory and cannot discover the important POIs that dominate their mobility patterns, which are related to the repeat-visit frequency of an individual at a POI. To solve this problem, in this paper, we developed a novel POI recommendation framework using people’s memory-based preferences and POI stickiness, named U-CF-Memory-Stickiness. First, we used the memory-based preference-attenuation mechanism to emphasize personal psychological effects and memory-based preference evolution in human mobility patterns. Second, we took the visiting frequency of POIs into consideration and introduced the concept of POI stickiness to identify the important POIs that reflect the stable interests of an individual with respect to their mobility behavior decisions. Lastly, we incorporated the influence of both memory-based preferences and POI stickiness into a user-based collaborative filtering framework to improve the performance of POI recommendations. The results of the experiments we conducted on a real LBSN dataset demonstrated that our method outperformed other methods.

Highlights

  • Advances in mobile communication devices, the global positioning system, and wireless networking technologies have promoted the development of location-based social networks (LBSNs) such as Foursquare and Yelp, which encourage people to upload their locations and experiences with points of interest (POIs) such as restaurants, tourist attractions, and cinemas [1]

  • In this paper, we introduce the concept of POI stickiness as a way of exploring the effects of the various visiting frequencies of an individual at POIs for use in building POI recommendations

  • On the one hand, we incorporated visiting frequency into the user–POI check-in matrix; on the other hand, we introduced the concept of POI stickiness for fully understanding people’s potential interest behind each check-in

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Summary

Introduction

Advances in mobile communication devices, the global positioning system, and wireless networking technologies have promoted the development of location-based social networks (LBSNs) such as Foursquare and Yelp, which encourage people to upload their locations and experiences with points of interest (POIs) such as restaurants, tourist attractions, and cinemas [1]. The implicit feedback data from users are usually regarded as a set of binary variables, e.g., whether a user has checked in at a POI These methods ignore the number of an individual’s check-ins at a POI and assume that even rare visits to a POI by an individual indicate that they are interested in it [10,11]. For example, is their friends’ tastes, as people are more likely to go for dinner at a restaurant in which their friends are interested than at one in which they themselves are interested In this case, just one or two check-ins at a restaurant by an individual do not indicate that they have any great interest in it, whereas multiple check-ins at a restaurant by an individual indicate that they have a high degree of recognition of it. In this paper, we introduce the concept of POI stickiness as a way of exploring the effects of the various visiting frequencies of an individual at POIs for use in building POI recommendations

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Conclusion

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