Back to Search Start Over

The 2nd Workshop on Recommendation with Generative Models

Authors :
Wang, Wenjie
Zhang, Yang
Lin, Xinyu
Feng, Fuli
Liu, Weiwen
Liu, Yong
Zhao, Xiangyu
Zhao, Wayne Xin
Song, Yang
He, Xiangnan
Publication Year :
2024

Abstract

The rise of generative models has driven significant advancements in recommender systems, leaving unique opportunities for enhancing users' personalized recommendations. This workshop serves as a platform for researchers to explore and exchange innovative concepts related to the integration of generative models into recommender systems. It primarily focuses on five key perspectives: (i) improving recommender algorithms, (ii) generating personalized content, (iii) evolving the user-system interaction paradigm, (iv) enhancing trustworthiness checks, and (v) refining evaluation methodologies for generative recommendations. With generative models advancing rapidly, an increasing body of research is emerging in these domains, underscoring the timeliness and critical importance of this workshop. The related research will introduce innovative technologies to recommender systems and contribute to fresh challenges in both academia and industry. In the long term, this research direction has the potential to revolutionize the traditional recommender paradigms and foster the development of next-generation recommender systems.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2403.04399
Document Type :
Working Paper