TY - GEN
T1 - A Diversity-aware Approach to Bundle Recommendations
AU - Ebrahimi, Nastaran
AU - Zhang, Zheying
AU - Stefanidis, Kostas
N1 - Publisher Copyright:
© 2025 Copyright for this paper by its authors.
PY - 2025
Y1 - 2025
N2 - Recommendation systems help users navigate vast amounts of data, with bundle recommendation systems enhancing personalization and customized experience by grouping related items. However, many existing methods overemphasize relevance, leading to repetitive suggestions and user fatigue. This paper introduces two novel bundling methods—Bundle Partition and Bundle Function—designed to balance both diversity and relevance. These methods were evaluated using Amazon datasets on the Appliances, All_Beauty, and Luxury_Beauty categories. Results show a significant increase in diversity, as measured by Intra-List Diversity (ILD), while maintaining high relevance through average ratings. Furthermore, the novelty, assessed via Mean Inverse User Frequency (MIUF), indicates that these methods offer a fresh and relevant experience. These findings emphasize the importance of diversity in enhancing user engagement.
AB - Recommendation systems help users navigate vast amounts of data, with bundle recommendation systems enhancing personalization and customized experience by grouping related items. However, many existing methods overemphasize relevance, leading to repetitive suggestions and user fatigue. This paper introduces two novel bundling methods—Bundle Partition and Bundle Function—designed to balance both diversity and relevance. These methods were evaluated using Amazon datasets on the Appliances, All_Beauty, and Luxury_Beauty categories. Results show a significant increase in diversity, as measured by Intra-List Diversity (ILD), while maintaining high relevance through average ratings. Furthermore, the novelty, assessed via Mean Inverse User Frequency (MIUF), indicates that these methods offer a fresh and relevant experience. These findings emphasize the importance of diversity in enhancing user engagement.
KW - Bundle Recommendation Systems
KW - Diversity
KW - Novelty
M3 - Conference contribution
AN - SCOPUS:86000257387
T3 - CEUR Workshop Proceedings
SP - 49
EP - 53
BT - Proceedings of the 27th International Workshop on Design, Optimization, Languages and Analytical Processing of Big Data (DOLAP 2025)
PB - CEUR-WS
T2 - International Workshop on Design, Optimization, Languages and Analytical Processing of Big Data
Y2 - 25 March 2025 through 25 March 2025
ER -