A Survey on Generative Recommendation: Data, Model, and Tasks
Min Hou, Le Wu, Yuxin Liao, Yonghui Yang, Zhen Zhang, Yu Wang, Changlong Zheng, Han Wu, Richang Hong

TL;DR
This survey explores the emerging field of generative recommendation, analyzing data, models, and tasks, highlighting new capabilities and challenges in integrating large language models and diffusion models into recommender systems.
Contribution
It provides a unified framework for understanding generative recommendation approaches, categorizing data augmentation, model alignment, and task formulation innovations.
Findings
Generative models enable knowledge-infused data augmentation and simulation.
LLM-based methods and diffusion approaches are systematically categorized.
New capabilities include conversational interaction and explainable reasoning.
Abstract
Recommender systems serve as foundational infrastructure in modern information ecosystems, helping users navigate digital content and discover items aligned with their preferences. At their core, recommender systems address a fundamental problem: matching users with items. Over the past decades, the field has experienced successive paradigm shifts, from collaborative filtering and matrix factorization in the machine learning era to neural architectures in the deep learning era. Recently, the emergence of generative models, especially large language models (LLMs) and diffusion models, have sparked a new paradigm: generative recommendation, which reconceptualizes recommendation as a generation task rather than discriminative scoring. This survey provides a comprehensive examination through a unified tripartite framework spanning data, model, and task dimensions. Rather than simply…
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