计算机科学
注释
判决
变压器
自然语言处理
过程(计算)
人工智能
功能可见性
语言学
主观性
生成语法
人机交互
认识论
物理
量子力学
电压
操作系统
哲学
作者
Danni Yu,Marina Bondi,Ken Hyland
标识
DOI:10.1093/applin/amae071
摘要
Abstract One of the most powerful and enduring ideas in written discourse analysis is that genres can be described in terms of the moves which structure a writer’s purpose. Considerable research has sought to identify these distinct communicative acts, but analyses have been beset by problems of subjectivity, reliability, and the time-consuming need for multiple coders to confirm analyses. In this article, we employ the affordances of Generative Pre-trained Transformer 4 (GPT-4) to automate the annotation process by using natural language prompts. Focusing on abstracts from articles in four applied linguistics journals, we devise prompts which enable the model to identify moves effectively. The annotated outputs of these prompts were evaluated by two assessors with a third addressing disagreements. The results show that an eight-shot prompt was more effective than one using two, confirming that the inclusion of examples illustrating areas of variability can enhance GPT-4’s ability to recognize multiple moves in a single sentence and reduce bias related to textual position. We suggest that GPT-4 offers considerable potential in automating this annotation process, when human actors with domain-specific linguistic expertise inform the prompting process.
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