Is Prompt the Future?

Zhen Zhu, Liting Wang, Dongmei Gu, Hong Wu, Behrooz Janfada, B. Minaei-Bidgoli
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Abstract

A vast amount of unstructured data is being generated in the age of big data. Relation extraction (RE) is the critical way to improve the utility of the data by extracting structured data, which has seen a great evolution in recent years. This paper first introduces five paradigms of RE, namely the rule-based paradigm, the machine learning paradigm, the deep learning model-based paradigm, and the two types of current mainstream methods with pretrained language models. Based on the RE scenario, a comprehensive introduction is made for the currently popular paradigm with prompt learning, which is investigated regarding four aspects. The main contributions of this paper are as follows. Since big models are too large to be easily trained, prompt learning has become a promising research direction for RE, our work is, therefore, a systematic introduction to this paradigm for RE and compared with traditional paradigms. In addition, this paper summarizes the current problems faced by RE tasks and proposes valuable research directions with prompt learning.
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在大数据时代,大量的非结构化数据正在产生。关系抽取(RE)是一种通过抽取结构化数据来提高数据效用的关键方法,近年来得到了很大的发展。本文首先介绍了可重构的五种范式,即基于规则的范式、基于机器学习的范式、基于深度学习模型的范式,以及目前主流的两种预训练语言模型方法。基于RE情景,本文对当前流行的快速学习范式进行了全面的介绍,并从四个方面对其进行了研究。本文的主要贡献如下:由于大的模型太大,不容易训练,提示学习已经成为一个有前途的研究方向,因此,我们的工作是系统地介绍该范式的RE,并与传统范式进行比较。此外,本文总结了当前可重构任务面临的问题,并提出了有价值的研究方向。
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