An Automatic User Grouping Model for a Group Recommender System in Location-Based Social Networks

Author:

Khazaei Elahe,Alimohammadi Abbas

Abstract

Spatial group recommendation refers to suggesting places to a given set of users. In a group recommender system, members of a group should have similar preferences in order to increase the level of satisfaction. Location-based social networks (LBSNs) provide rich content, such as user interactions and location/event descriptions, which can be leveraged for group recommendations. In this paper, an automatic user grouping model is introduced that obtains information about users and their preferences through an LBSN. The preferences of the users, proximity of the places the users have visited in terms of spatial range, users’ free days, and the social relationships among users are extracted automatically from location histories and users’ profiles in the LBSN. These factors are combined to determine the similarities among users. The users are partitioned into groups based on these similarities. Group size is the key to coordinating group members and enhancing their satisfaction. Therefore, a modified k-medoids method is developed to cluster users into groups with specific sizes. To evaluate the efficiency of the proposed method, its mean intra-cluster distance and its distribution of cluster sizes are compared to those of general clustering algorithms. The results reveal that the proposed method compares favourably with general clustering approaches, such as k-medoids and spectral clustering, in separating users into groups of a specific size with a lower mean intra-cluster distance.

Publisher

MDPI AG

Subject

Earth and Planetary Sciences (miscellaneous),Computers in Earth Sciences,Geography, Planning and Development

Reference47 articles.

1. Recommendations in location-based social networks: a survey

2. Ranking the City: The Role of Location-Based Social Media Check-Ins in Collective Human Mobility Prediction

3. Group-Based Personalized Location Recommendation on Social Networks;Wang,2014

4. Location recommendation in location-based social networks using user check-in data;Wang,2013

5. A Social Influence Approach for Group User Modeling in Group Recommendation Systems

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