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A Survey on Open Information Extraction from Rule-based Model to Large Language Model

Authors :
Liu, Pai
Gao, Wenyang
Dong, Wenjie
Ai, Lin
Gong, Ziwei
Huang, Songfang
Li, Zongsheng
Hoque, Ehsan
Hirschberg, Julia
Zhang, Yue
Publication Year :
2022

Abstract

Open Information Extraction (OpenIE) represents a crucial NLP task aimed at deriving structured information from unstructured text, unrestricted by relation type or domain. This survey paper provides an overview of OpenIE technologies spanning from 2007 to 2024, emphasizing a chronological perspective absent in prior surveys. It examines the evolution of task settings in OpenIE to align with the advances in recent technologies. The paper categorizes OpenIE approaches into rule-based, neural, and pre-trained large language models, discussing each within a chronological framework. Additionally, it highlights prevalent datasets and evaluation metrics currently in use. Building on this extensive review, the paper outlines potential future directions in terms of datasets, information sources, output formats, methodologies, and evaluation metrics.<br />Comment: The first five authors contributed to this work equally. Names are ordered randomly

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2208.08690
Document Type :
Working Paper