CLFeb 5, 2025

How do Humans and Language Models Reason About Creativity? A Comparative Analysis

arXiv:2502.03253v23 citationsh-index: 23CogSci
Originality Incremental advance
AI Analysis

This work addresses the problem of understanding cognitive biases in creativity assessment for researchers and practitioners in AI and psychology, though it is incremental in comparing existing methods.

The study investigated how humans and language models evaluate creativity, finding that humans without examples used more comparative language and emphasized uncommonness, while LLMs prioritized uncommonness and remoteness, with example conditions improving LLM accuracy but homogenizing facet correlations to near 1.0.

Creativity assessment in science and engineering is increasingly based on both human and AI judgment, but the cognitive processes and biases behind these evaluations remain poorly understood. We conducted two experiments examining how including example solutions with ratings impact creativity evaluation, using a finegrained annotation protocol where raters were tasked with explaining their originality scores and rating for the facets of remoteness (whether the response is "far" from everyday ideas), uncommonness (whether the response is rare), and cleverness. In Study 1, we analyzed creativity ratings from 72 experts with formal science or engineering training, comparing those who received example solutions with ratings (example) to those who did not (no example). Computational text analysis revealed that, compared to experts with examples, no-example experts used more comparative language (e.g., "better/worse") and emphasized solution uncommonness, suggesting they may have relied more on memory retrieval for comparisons. In Study 2, parallel analyses with state-of-the-art LLMs revealed that models prioritized uncommonness and remoteness of ideas when rating originality, suggesting an evaluative process rooted around the semantic similarity of ideas. In the example condition, while LLM accuracy in predicting the true originality scores improved, the correlations of remoteness, uncommonness, and cleverness with originality also increased substantially -- to upwards of $0.99$ -- suggesting a homogenization in the LLMs evaluation of the individual facets. These findings highlight important implications for how humans and AI reason about creativity and suggest diverging preferences for what different populations prioritize when rating.

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