BERT4Loc: BERT for Location—POI Recommender System

Author:

Bashir Syed1,Raza Shaina2,Misic Vojislav1

Affiliation:

1. Department of Computer Science, Toronto Metropolitan University, Toronto, ON M5B 2K3, Canada

2. Vector Institute of Artificial Intelligence, Toronto, ON M5G 1M1, Canada

Abstract

Recommending points of interest (POI) is a challenging task that requires extracting comprehensive location data from location-based social media platforms. To provide effective location-based recommendations, it is important to analyze users’ historical behavior and preferences. In this study, we present a sophisticated location-aware recommendation system that uses Bidirectional Encoder Representations from Transformers (BERT) to offer personalized location-based suggestions. Our model combines location information and user preferences to provide more relevant recommendations compared to models that predict the next POI in a sequence. Based on our experiments conducted on two benchmark datasets, we have observed that our BERT-based model surpasses baselines models in terms of HR by a significant margin of 6% compared to the second-best performing baseline. Furthermore, our model demonstrates a percentage gain of 1–2% in the NDCG compared to second best baseline. These results indicate the superior performance and effectiveness of our BERT-based approach in comparison to other models when evaluating HR and NDCG metrics. Moreover, we see the effectiveness of the proposed model for quality through additional experiments.

Publisher

MDPI AG

Subject

Computer Networks and Communications

Reference52 articles.

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3. Progress in Context-Aware Recommender Systems—An Overview;Raza;Comput. Sci. Rev.,2019

4. Raza, S., and Ding, C. (2019, January 9–12). News Recommender System Considering Temporal Dynamics and News Taxonomy. Proceedings of the—2019 IEEE International Conference on Big Data, Big Data 2019, Los Angeles, CA, USA.

5. Karatzoglou, A., and Hidasi, B. (2017, January 27–31). Deep Learning for Recommender Systems. Proceedings of the RecSys 2017—11th ACM Conference on Recommender Systems, Como, Italy.

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