CYCLOct 26, 2023

Techniques for supercharging academic writing with generative AI

arXiv:2310.17143v465 citationsh-index: 6
Originality Synthesis-oriented
AI Analysis

It addresses the problem of time-consuming academic writing for researchers, offering incremental improvements through structured AI integration.

This paper tackles the laborious nature of academic writing by proposing a human-AI collaborative framework using generative AI, such as LLMs, to enhance quality and efficiency, ultimately aiming to ease communication burdens and accelerate discovery.

Academic writing is an indispensable yet laborious part of the research enterprise. This Perspective maps out principles and methods for using generative artificial intelligence (AI), specifically large language models (LLMs), to elevate the quality and efficiency of academic writing. We introduce a human-AI collaborative framework that delineates the rationale (why), process (how), and nature (what) of AI engagement in writing. The framework pinpoints both short-term and long-term reasons for engagement and their underlying mechanisms (e.g., cognitive offloading and imaginative stimulation). It reveals the role of AI throughout the writing process, conceptualized through a two-stage model for human-AI collaborative writing, and the nature of AI assistance in writing, represented through a model of writing-assistance types and levels. Building on this framework, we describe effective prompting techniques for incorporating AI into the writing routine (outlining, drafting, and editing) as well as strategies for maintaining rigorous scholarship, adhering to varied journal policies, and avoiding overreliance on AI. Ultimately, the prudent integration of AI into academic writing can ease the communication burden, empower authors, accelerate discovery, and promote diversity in science.

Foundations

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