GORACS: Group-level Optimal Transport-guided Coreset Selection for LLM-based Recommender Systems
Tiehua Mei, Hengrui Chen, Peng Yu, Jiaqing Liang, Deqing Yang

TL;DR
This paper introduces GORACS, a novel group-level optimal transport-guided coreset selection method that reduces fine-tuning costs for LLM-based recommender systems while improving performance.
Contribution
GORACS is the first to incorporate group-level data selection guided by optimal transport for efficient LLM fine-tuning in recommender systems.
Findings
Significantly reduces fine-tuning costs.
Achieves superior recommendation performance.
Outperforms state-of-the-art baselines.
Abstract
Although large language models (LLMs) have shown great potential in recommender systems, the prohibitive computational costs for fine-tuning LLMs on entire datasets hinder their successful deployment in real-world scenarios. To develop affordable and effective LLM-based recommender systems, we focus on the task of coreset selection which identifies a small subset of fine-tuning data to optimize the test loss, thereby facilitating efficient LLMs' fine-tuning. Although there exist some intuitive solutions of subset selection, including distribution-based and importance-based approaches, they often lead to suboptimal performance due to the misalignment with downstream fine-tuning objectives or weak generalization ability caused by individual-level sample selection. To overcome these challenges, we propose GORACS, which is a novel Group-level Optimal tRAnsport-guided Coreset Selection…
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Taxonomy
TopicsTopic Modeling · Recommender Systems and Techniques · Multimodal Machine Learning Applications
