Generative Representational Learning of Foundation Models for Recommendation
- URL: http://arxiv.org/abs/2506.11999v2
- Date: Mon, 16 Jun 2025 03:10:31 GMT
- Title: Generative Representational Learning of Foundation Models for Recommendation
- Authors: Zheli Zhou, Chenxu Zhu, Jianghao Lin, Bo Chen, Ruiming Tang, Weinan Zhang, Yong Yu,
- Abstract summary: RecFound is a generative representational learning framework for recommendation foundation models.<n>We construct the first comprehensive dataset for recommendation foundation models covering both generative and embedding tasks.<n> Experiments demonstrate that RecFound achieves state-of-the-art performance across various recommendation tasks.
- Score: 45.88034661002164
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Developing a single foundation model with the capability to excel across diverse tasks has been a long-standing objective in the field of artificial intelligence. As the wave of general-purpose foundation models sweeps across various domains, their influence has significantly extended to the field of recommendation systems. While recent efforts have explored recommendation foundation models for various generative tasks, they often overlook crucial embedding tasks and struggle with the complexities of multi-task learning, including knowledge sharing & conflict resolution, and convergence speed inconsistencies. To address these limitations, we introduce RecFound, a generative representational learning framework for recommendation foundation models. We construct the first comprehensive dataset for recommendation foundation models covering both generative and embedding tasks across diverse scenarios. Based on this dataset, we propose a novel multi-task training scheme featuring a Task-wise Mixture of Low-rank Experts (TMoLE) to handle knowledge sharing & conflict, a Step-wise Convergence-oriented Sample Scheduler (S2Sched) to address inconsistent convergence, and a Model Merge module to balance the performance across tasks. Experiments demonstrate that RecFound achieves state-of-the-art performance across various recommendation tasks, outperforming existing baselines.
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