Enhancing group recommender systems: A fusion of social tagging and collaborative filtering for cohesive recommendations
Jian Wang,
Asif Kamran,
Fakhar Shahzad and
Nadeem Ahmad Syed
Systems Research and Behavioral Science, 2024, vol. 41, issue 4, 665-680
Abstract:
This study examines the challenges and opportunities of using group recommendation systems in an information overload scenario. Social network recommendation systems are increasingly important because they deliver users customized choices. Most existing solutions are geared for single users, making it difficult to propose for a group with different interests. This paper analyses group recommendation systems and exposes their flaws. This study tested whether the suggested approach outperforms the one without tagging information in recall, precision, and user satisfaction. Empirical evidence indicates that the algorithm exhibits appropriate levels of reliability and accuracy compared to conventional methods. The proposed approach has the potential to substantially enhance the existing state of social network group recommendation systems, thereby facilitating users in their quest to identify and participate in groups that align with their preferences.
Date: 2024
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Persistent link: https://EconPapers.repec.org/RePEc:bla:srbeha:v:41:y:2024:i:4:p:665-680
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