posted on 2023-11-06, 11:37authored byLuis Fabricio Góes, Marco Volpe, Piotr Sawicki, Marek Grses, Jacob Watson
<p>In this paper, we investigate the potential of Large LanguageModels (LLMs), specifically GPT-4, to improve their cre-ative responses in well-known creativity tests, such as Guil-ford’s Alternative Uses Test (AUT) and an adapted version ofthe Torrance Test of Creative Thinking (TTCT) visual com-pletion tests. We exploit GPT-4’s self-improving ability byusing a sequence of forceful interactive prompts in a multi-step conversation, aiming to accelerate the convergence pro-cess towards more creative responses. Our contributions in-clude an automated approach to enhance GPT’s responses inthe AUT and TTCT visual completion test and a series ofprompts to generate and evaluate GPT’s responses in thesetests. Our results show that the creativity of GPT’s responsescan be improved through the use of forceful prompts. Thispaper opens up possibilities for future research on differentsets of prompts to further improve the creativity convergenceof LLM-generated responses and the application of similarinteractive processes to tasks involving other cognitive skills.</p>