Multimodal LLMs match human visual creativity ratings zero-shot on AI images and sketches, with reasoning outputs that are interpretable but do not boost alignment.
The Effect of Idea Elaboration on the Automatic Assessment of Idea Originality
1 Pith paper cite this work. Polarity classification is still indexing.
abstract
Automatic systems are increasingly used to assess the originality of responses in creative tasks. They offer a potential solution to key limitations of human assessment (cost, fatigue, and subjectivity), but there is preliminary evidence of a self-preference bias. Accordingly, automatic systems tend to prefer outcomes that are more closely related to their style, rather than to the human one. In this paper, we investigated how Large Language Models (LLMs) align with human raters in assessing the originality of responses in a divergent thinking task. We analysed 4,813 responses to the Alternate Uses Task produced by higher and lower creative humans and ChatGPT-4o. Human raters were two university students who underwent intensive training. Machine raters were two specialised systems fine-tuned on AUT responses and corresponding human ratings (OCSAI and CLAUS) and ChatGPT-4o, which was prompted with the same instructions as human raters. Results confirmed the presence of a self-preference bias in LLMs. Automatic systems tended to privilege artificial responses. However, this self-preference bias disappeared when the analyses controlled for the idea elaboration. We discuss theoretical and methodological implications of these findings by highlighting future directions for research on creativity assessment.
fields
cs.CL 1years
2026 1verdicts
UNVERDICTED 1representative citing papers
citing papers explorer
-
How LLMs See Creativity: Zero-Shot Scoring of Visual Creativity with Interpretable Reasoning
Multimodal LLMs match human visual creativity ratings zero-shot on AI images and sketches, with reasoning outputs that are interpretable but do not boost alignment.