Scaling New Frontiers: Insights into Large Recommendation Models
Wei Guo, Hao Wang, Luankang Zhang, Jin Yao Chin, Zhongzhou Liu, Kai, Cheng, Qiushi Pan, Yi Quan Lee, Wanqi Xue, Tingjia Shen, Kenan Song, Kefan, Wang, Wenjia Xie, Yuyang Ye, Huifeng Guo, Yong Liu, Defu Lian, Ruiming Tang,, Enhong Chen

TL;DR
This paper investigates the scaling laws of large recommendation models, evaluates different architectures, and explores their performance on complex tasks, highlighting new insights and future directions for the field.
Contribution
It provides a comprehensive analysis of scaling laws in large recommendation models, including ablation studies and performance evaluations of the HSTU model.
Findings
Scaling laws vary across backbone architectures.
Ablation studies reveal origins of scaling laws.
HSTU performs well on complex user behavior and ranking tasks.
Abstract
Recommendation systems are essential for filtering data and retrieving relevant information across various applications. Recent advancements have seen these systems incorporate increasingly large embedding tables, scaling up to tens of terabytes for industrial use. However, the expansion of network parameters in traditional recommendation models has plateaued at tens of millions, limiting further benefits from increased embedding parameters. Inspired by the success of large language models (LLMs), a new approach has emerged that scales network parameters using innovative structures, enabling continued performance improvements. A significant development in this area is Meta's generative recommendation model HSTU, which illustrates the scaling laws of recommendation systems by expanding parameters to thousands of billions. This new paradigm has achieved substantial performance gains in…
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Taxonomy
TopicsRecommender Systems and Techniques
