When to Use Large Language Model: Upper Bound Analysis of BM25 Algorithms in Reading Comprehension Task

Q3 Arts and Humanities
Icon Pub Date : 2023-03-01 DOI:10.1109/icnlp58431.2023.00049
Tingzhen Liu, Qianqian Xiong, Shengxi Zhang
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引用次数: 1

Abstract

Large language model (LLM) is a representation of a major advancement in AI, and has been used in multiple natural language processing tasks. Nevertheless, in different business scenarios, LLM requires fine-tuning by engineers to achieve satisfactory performance, and the cost of achieving target performance and fine-turning may not match. Based on the Baidu STI dataset, we study the upper bound of the performance that classical information retrieval methods can achieve under a specific business, and compare it with the cost and performance of the participating team based on LLM. This paper gives an insight into the potential of classical computational linguistics algorithms, and which can help decision-makers make reasonable choices for LLM and low-cost methods in business R& D.
何时使用大型语言模型:阅读理解任务中BM25算法的上界分析
大型语言模型(Large language model, LLM)是人工智能领域取得重大进展的代表,已被用于多种自然语言处理任务。然而,在不同的业务场景中,LLM需要工程师进行微调才能达到满意的性能,而实现目标性能和微调的成本可能并不匹配。基于百度STI数据集,研究了特定业务下经典信息检索方法所能达到的性能上界,并与基于LLM的参与团队的成本和性能进行了比较。本文揭示了经典计算语言学算法的潜力,可以帮助决策者在商业研发中合理选择LLM和低成本方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
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Icon Arts and Humanities-History and Philosophy of Science
CiteScore
0.30
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