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Rescue: Ranking LLM Responses with Partial Ordering to Improve Response Generation

Authors :
Wang, Yikun
Zheng, Rui
Li, Haoming
Zhang, Qi
Gui, Tao
Liu, Fei
Publication Year :
2023

Abstract

Customizing LLMs for a specific task involves separating high-quality responses from lower-quality ones. This skill can be developed using supervised fine-tuning with extensive human preference data. However, obtaining a large volume of expert-annotated data is costly for most tasks. In this paper, we explore a novel method to optimize LLMs using ranking metrics. This method trains the model to prioritize the best responses from a pool of candidates created for a particular task. Rather than a traditional full ordering, we advocate for a partial ordering, as achieving consensus on the perfect order of candidate responses can be challenging. Our partial ordering is more robust, less sensitive to noise, and can be achieved with limited human annotations or through heuristic methods. We test our system's improved response generation ability using benchmark datasets, including textual entailment and multi-document question answering. We conduct ablation studies to understand crucial factors, such as how to gather candidate responses for a specific task, determine their most suitable order, and balance supervised fine-tuning with ranking metrics. Our approach, named Rescue, offers a promising avenue for enhancing the response generation and task accuracy of LLMs.<br />Comment: ACL 2024 SRW

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2311.09136
Document Type :
Working Paper