4.6 Article

A BERT-Based Sequential POI Recommender system in Social Media

Journal

COMPUTER STANDARDS & INTERFACES
Volume 87, Issue -, Pages -

Publisher

ELSEVIER
DOI: 10.1016/j.csi.2023.103766

Keywords

BERT; POI Route; Context-Aware; Deep Neural Networks; Personalization; Sequential recommendation

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This paper proposes a novel personalized sequential recommendation model, BERTSeqHybrid, which utilizes Bidirectional Encoder Representations from Transformers (BERT) to improve user-user similarity model. The model also employs asymmetric schemas and topic modeling to enhance contextual data from Points of Interest (POIs). Furthermore, a novel method for evaluating user preferences utilizing explicit demographic data is proposed to solve the cold start problem. Experimental evaluation demonstrates the superiority of the developed methodology in terms of RMSE, F-Score, MAP, and NDCG indexes on two different datasets (Yelp and Flickr).
Route schema is challenging for tourists because they must choose Points of Interest (POIs) in unknown areas that meet their preferences and limitations. Historically, sequential methods were utilized to generate recommendations based on previous user interactions. Despite their efficacy, however, such left-to-right unidirectional models are suboptimal due to the following factors: a) user behavior sequences are restricted in their ability to utilize hidden representations in unidirectional architectures; b) a rigidly ordered sequence is frequently assumed but is not always possible. This paper proposes a novel personalized sequential recommendation model, termed BERTSeqHybrid, which utilizes Bidirectional Encoder Representations from Transformers (BERT) to circumvent these limitations. In addition to contextual data from POIs, asymmetric schemas, and topic modeling are employed to improve the user-user similarity model. Furthermore, a novel method for evaluating user preferences is proposed utilizing explicit demographic data to mitigate the cold start problem. In the experimental evaluation, the developed methodology, which was applied to two different datasets (Yelp and Flickr), produced superior root mean square error RMSE, F-Score, mean average precision (MAP), and normalized discounted cumulative gain (NDCG) indexes.

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