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GPT-Jass : A Text-to-model Pipeline for ACT-R Models

Authors
Dr. Anthony Harrison
US Naval Research Laboratory
Greg Trafton
N/A
Laura Hiatt
Naval Research Laboratory
Abstract

The GPT-family of Large Language Models has garnered significant attention in the past year. Its ability to digest natural language has opened up previously unsolvable natural language problem domains. We tasked GPT-3 with generating complex cognitive models from plain text instructions. The quality of the generated models is dependent upon the quality and quantity of fine-tuning samples, but is otherwise quite promising, producing executable and correct models in four of six task areas.

Tags

Keywords

ACT-R
GPT-3
cognitive modeling
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Cite this as:

Harrison, A., Trafton, G., & Hiatt, L. (2023, July). GPT-Jass : A Text-to-model Pipeline for ACT-R Models. Abstract published at MathPsych/ICCM/EMPG 2023. Via mathpsych.org/presentation/1097.