大型语言模型的知识编辑:调查

IF 23.8 1区 计算机科学 Q1 COMPUTER SCIENCE, THEORY & METHODS ACM Computing Surveys Pub Date : 2024-10-07 DOI:10.1145/3698590
Song Wang, Yaochen Zhu, Haochen Liu, Zaiyi Zheng, Chen Chen, Jundong Li
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引用次数: 0

摘要

大型语言模型(LLMs)凭借其丰富的知识和推理能力,在理解、分析和生成文本方面具有非凡的能力,近来已改变了学术界和工业界的面貌。然而,LLMs 的一个主要缺点是,由于参数数量空前庞大,预训练的计算成本非常高。如果经常需要在预训练模型中引入新知识,这一缺点就会更加严重。因此,当务之急是开发有效且高效的技术来更新预训练 LLM。传统方法通过直接微调将新知识编码到预训练 LLM 中。然而,天真地重新训练 LLM 可能会耗费大量计算,并有可能使模型中与更新无关的有价值的预训练知识退化。最近,基于知识的模型编辑(Knowledge-based Model Editing,KME),也称为知识编辑或模型编辑(Model Editing),吸引了越来越多的关注,其目的是精确修改 LLMs,以纳入特定知识,同时不对其他无关知识产生负面影响。在本研究中,我们旨在全面深入地概述 KME 领域的最新进展。我们首先介绍了 KME 的一般表述,以涵盖不同的 KME 策略。随后,我们根据如何将新知识引入预训练的 LLM,提供了一种创新的 KME 技术分类法,并研究了现有的 KME 策略,同时分析了各类方法的关键见解、优势和局限性。此外,我们还介绍了 KME 的代表性指标、数据集和应用。最后,我们深入分析了 KME 的实用性和仍然存在的挑战,并为进一步推动该领域的发展提出了有前景的研究方向。
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Knowledge Editing for Large Language Models: A Survey
Large Language Models (LLMs) have recently transformed both the academic and industrial landscapes due to their remarkable capacity to understand, analyze, and generate texts based on their vast knowledge and reasoning ability. Nevertheless, one major drawback of LLMs is their substantial computational cost for pre-training due to their unprecedented amounts of parameters. The disadvantage is exacerbated when new knowledge frequently needs to be introduced into the pre-trained model. Therefore, it is imperative to develop effective and efficient techniques to update pre-trained LLMs. Traditional methods encode new knowledge in pre-trained LLMs through direct fine-tuning. However, naively re-training LLMs can be computationally intensive and risks degenerating valuable pre-trained knowledge irrelevant to the update in the model. Recently, Knowledge-based Model Editing (KME), also known as Knowledge Editing or Model Editing , has attracted increasing attention, which aims to precisely modify the LLMs to incorporate specific knowledge, without negatively influencing other irrelevant knowledge. In this survey, we aim to provide a comprehensive and in-depth overview of recent advances in the field of KME. We first introduce a general formulation of KME to encompass different KME strategies. Afterward, we provide an innovative taxonomy of KME techniques based on how the new knowledge is introduced into pre-trained LLMs, and investigate existing KME strategies while analyzing key insights, advantages, and limitations of methods from each category. Moreover, representative metrics, datasets, and applications of KME are introduced accordingly. Finally, we provide an in-depth analysis regarding the practicality and remaining challenges of KME and suggest promising research directions for further advancement in this field.
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来源期刊
ACM Computing Surveys
ACM Computing Surveys 工程技术-计算机:理论方法
CiteScore
33.20
自引率
0.60%
发文量
372
审稿时长
12 months
期刊介绍: ACM Computing Surveys is an academic journal that focuses on publishing surveys and tutorials on various areas of computing research and practice. The journal aims to provide comprehensive and easily understandable articles that guide readers through the literature and help them understand topics outside their specialties. In terms of impact, CSUR has a high reputation with a 2022 Impact Factor of 16.6. It is ranked 3rd out of 111 journals in the field of Computer Science Theory & Methods. ACM Computing Surveys is indexed and abstracted in various services, including AI2 Semantic Scholar, Baidu, Clarivate/ISI: JCR, CNKI, DeepDyve, DTU, EBSCO: EDS/HOST, and IET Inspec, among others.
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