Language Models and Cognitive Automation for Economic Research
Anton Korinek
No 17923, CEPR Discussion Papers from C.E.P.R. Discussion Papers
Abstract:
Large language models (LLMs) such as ChatGPT have the potential to revolutionize research in economics and other disciplines. I describe 25 use cases along six domains in which LLMs are starting to become useful as both research assistants and tutors: ideation, writing, background research, data analysis, coding, and mathematical derivations. I provide general instructions and demonstrate specific examples for how to take advantage of each of these, classifying the LLM capabilities from experimental to highly useful. I hypothesize that ongoing advances will improve the performance of LLMs across all of these domains, and that economic researchers who take advantage of LLMs to automate micro tasks will become significantly more productive. Finally, I speculate on the longer-term implications of cognitive automation via LLMs for economic research.
JEL-codes: A10 B41 J23 O30 (search for similar items in EconPapers)
Date: 2023-02
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Working Paper: Language Models and Cognitive Automation for Economic Research (2023) 
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