Prompt engineering for digital mental health: a short review

Y. H. P. P. Priyadarshana, A. Senanayake, Zilu Liang, Ian Piumarta
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Abstract

Prompt engineering, the process of arranging input or prompts given to a large language model to guide it in producing desired outputs, is an emerging field of research that shapes how these models understand tasks, process information, and generate responses in a wide range of natural language processing (NLP) applications. Digital mental health, on the other hand, is becoming increasingly important for several reasons including early detection and intervention, and to mitigate limited availability of highly skilled medical staff for clinical diagnosis. This short review outlines the latest advances in prompt engineering in the field of NLP for digital mental health. To our knowledge, this review is the first attempt to discuss the latest prompt engineering types, methods, and tasks that are used in digital mental health applications. We discuss three types of digital mental health tasks: classification, generation, and question answering. To conclude, we discuss the challenges, limitations, ethical considerations, and future directions in prompt engineering for digital mental health. We believe that this short review contributes a useful point of departure for future research in prompt engineering for digital mental health.
数字心理健康即时工程:简评
提示工程是一个新兴的研究领域,它决定了这些模型如何理解任务、处理信息并在广泛的自然语言处理(NLP)应用中产生反应。另一方面,数字心理健康正变得越来越重要,原因有几个,包括早期检测和干预,以及缓解用于临床诊断的高技能医务人员有限的可用性。这篇简短的综述概述了数字心理健康 NLP 领域提示工程的最新进展。据我们所知,这是首次尝试讨论数字心理健康应用中使用的最新提示工程类型、方法和任务。我们讨论了三种类型的数字心理健康任务:分类、生成和问题解答。最后,我们讨论了数字心理健康提示工程所面临的挑战、局限性、伦理考虑和未来发展方向。我们相信,这篇简短的综述为数字心理健康提示工程的未来研究提供了一个有用的出发点。
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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