Putting GPT-3's Creativity to the (Alternative Uses) Test
June 10, 2022 Β· Declared Dead Β· π ICCC
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Authors
Claire Stevenson, Iris Smal, Matthijs Baas, Raoul Grasman, Han van der Maas
arXiv ID
2206.08932
Category
cs.AI: Artificial Intelligence
Cross-listed
cs.CL,
cs.HC
Citations
118
Venue
ICCC
Last Checked
3 months ago
Abstract
AI large language models have (co-)produced amazing written works from newspaper articles to novels and poetry. These works meet the standards of the standard definition of creativity: being original and useful, and sometimes even the additional element of surprise. But can a large language model designed to predict the next text fragment provide creative, out-of-the-box, responses that still solve the problem at hand? We put Open AI's generative natural language model, GPT-3, to the test. Can it provide creative solutions to one of the most commonly used tests in creativity research? We assessed GPT-3's creativity on Guilford's Alternative Uses Test and compared its performance to previously collected human responses on expert ratings of originality, usefulness and surprise of responses, flexibility of each set of ideas as well as an automated method to measure creativity based on the semantic distance between a response and the AUT object in question. Our results show that -- on the whole -- humans currently outperform GPT-3 when it comes to creative output. But, we believe it is only a matter of time before GPT-3 catches up on this particular task. We discuss what this work reveals about human and AI creativity, creativity testing and our definition of creativity.
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