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Main Authors: Hong, Zihan, Wu, Yushi, Zhao, Zhiting, Feng, Shanshan, Ma, Jianghong, Liu, Jiao, Wei, Tianjun
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2506.16893
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author Hong, Zihan
Wu, Yushi
Zhao, Zhiting
Feng, Shanshan
Ma, Jianghong
Liu, Jiao
Wei, Tianjun
author_facet Hong, Zihan
Wu, Yushi
Zhao, Zhiting
Feng, Shanshan
Ma, Jianghong
Liu, Jiao
Wei, Tianjun
contents With the recent progress in generative artificial intelligence (Generative AI), particularly in the development of large language models, recommendation systems are evolving to become more versatile. Unlike traditional techniques, generative AI not only learns patterns and representations from complex data but also enables content generation, data synthesis, and personalized experiences. This generative capability plays a crucial role in the field of recommendation systems, helping to address the issue of data sparsity and improving the overall performance of recommendation systems. Numerous studies on generative AI have already emerged in the field of recommendation systems. Meanwhile, the current requirements for recommendation systems have surpassed the single utility of accuracy, leading to a proliferation of multi-objective research that considers various goals in recommendation systems. However, to the best of our knowledge, there remains a lack of comprehensive studies on multi-objective recommendation systems based on generative AI technologies, leaving a significant gap in the literature. Therefore, we investigate the existing research on multi-objective recommendation systems involving generative AI to bridge this gap. We compile current research on multi-objective recommendation systems based on generative techniques, categorizing them by objectives. Additionally, we summarize relevant evaluation metrics and commonly used datasets, concluding with an analysis of the challenges and future directions in this domain.
format Preprint
id arxiv_https___arxiv_org_abs_2506_16893
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Multi-Objective Recommendation in the Era of Generative AI: A Survey of Recent Progress and Future Prospects
Hong, Zihan
Wu, Yushi
Zhao, Zhiting
Feng, Shanshan
Ma, Jianghong
Liu, Jiao
Wei, Tianjun
Information Retrieval
With the recent progress in generative artificial intelligence (Generative AI), particularly in the development of large language models, recommendation systems are evolving to become more versatile. Unlike traditional techniques, generative AI not only learns patterns and representations from complex data but also enables content generation, data synthesis, and personalized experiences. This generative capability plays a crucial role in the field of recommendation systems, helping to address the issue of data sparsity and improving the overall performance of recommendation systems. Numerous studies on generative AI have already emerged in the field of recommendation systems. Meanwhile, the current requirements for recommendation systems have surpassed the single utility of accuracy, leading to a proliferation of multi-objective research that considers various goals in recommendation systems. However, to the best of our knowledge, there remains a lack of comprehensive studies on multi-objective recommendation systems based on generative AI technologies, leaving a significant gap in the literature. Therefore, we investigate the existing research on multi-objective recommendation systems involving generative AI to bridge this gap. We compile current research on multi-objective recommendation systems based on generative techniques, categorizing them by objectives. Additionally, we summarize relevant evaluation metrics and commonly used datasets, concluding with an analysis of the challenges and future directions in this domain.
title Multi-Objective Recommendation in the Era of Generative AI: A Survey of Recent Progress and Future Prospects
topic Information Retrieval
url https://arxiv.org/abs/2506.16893