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Main Authors: Laverghetta Jr., Antonio, Luchini, Simone, Linell, Averie, Reiter-Palmon, Roni, Beaty, Roger
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2409.00202
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author Laverghetta Jr., Antonio
Luchini, Simone
Linell, Averie
Reiter-Palmon, Roni
Beaty, Roger
author_facet Laverghetta Jr., Antonio
Luchini, Simone
Linell, Averie
Reiter-Palmon, Roni
Beaty, Roger
contents Increasingly, large language models (LLMs) are being used to automate workplace processes requiring a high degree of creativity. While much prior work has examined the creativity of LLMs, there has been little research on whether they can generate valid creativity assessments for humans despite the increasingly central role of creativity in modern economies. We develop a psychometrically inspired framework for creating test items (questions) for a classic free-response creativity test: the creative problem-solving (CPS) task. Our framework, the creative psychometric item generator (CPIG), uses a mixture of LLM-based item generators and evaluators to iteratively develop new prompts for writing CPS items, such that items from later iterations will elicit more creative responses from test takers. We find strong empirical evidence that CPIG generates valid and reliable items and that this effect is not attributable to known biases in the evaluation process. Our findings have implications for employing LLMs to automatically generate valid and reliable creativity tests for humans and AI.
format Preprint
id arxiv_https___arxiv_org_abs_2409_00202
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle The creative psychometric item generator: a framework for item generation and validation using large language models
Laverghetta Jr., Antonio
Luchini, Simone
Linell, Averie
Reiter-Palmon, Roni
Beaty, Roger
Computation and Language
Increasingly, large language models (LLMs) are being used to automate workplace processes requiring a high degree of creativity. While much prior work has examined the creativity of LLMs, there has been little research on whether they can generate valid creativity assessments for humans despite the increasingly central role of creativity in modern economies. We develop a psychometrically inspired framework for creating test items (questions) for a classic free-response creativity test: the creative problem-solving (CPS) task. Our framework, the creative psychometric item generator (CPIG), uses a mixture of LLM-based item generators and evaluators to iteratively develop new prompts for writing CPS items, such that items from later iterations will elicit more creative responses from test takers. We find strong empirical evidence that CPIG generates valid and reliable items and that this effect is not attributable to known biases in the evaluation process. Our findings have implications for employing LLMs to automatically generate valid and reliable creativity tests for humans and AI.
title The creative psychometric item generator: a framework for item generation and validation using large language models
topic Computation and Language
url https://arxiv.org/abs/2409.00202