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- Title
Collaborative filtering by graph convolution network in location-based recommendation system.
- Authors
Tran, Tin T.; Snasel, Vaclav; Nguyen, Thuan Q.
- Abstract
Recommendation systems research is a subfield of information retrieval, as these systems recommend appropriate items to users during their visits. Appropriate recommendation results will help users save time searching while increasing productivity at work, travel, or shopping. The problem becomes more difficult when the items are geographical locations on the ground, as they are associated with a wealth of contextual information, such as geographical location, opening time, and sequence of related locations. Furthermore, on social networking platforms that allow users to check in or express interest when visiting a specific location, their friends receive this signal by spreading the word on that online social network. Consideration should be given to relationship data extracted from online social networking platforms, as well as their impact on the geolocation recommendation process. In this study, we compare the similarity of geographic locations based on their distance on the ground and their correlation with users who have checked in at those locations. When calculating feature embeddings for users and locations, social relationships are also considered as attention signals. The similarity value between location and correlation between users will be exploited in the overall architecture of the recommendation model, which will employ graph convolution networks to generate recommendations with high precision and recall. The proposed model is implemented and executed on popular datasets, then compared to baseline models to assess its overall effectiveness.
- Subjects
ONLINE social networks; RECOMMENDER systems; SOCIAL networks; INFORMATION retrieval; SOCIAL systems
- Publication
KSII Transactions on Internet & Information Systems, 2024, Vol 18, Issue 7, p1868
- ISSN
1976-7277
- Publication type
Academic Journal
- DOI
10.3837/tiis.2024.07.008