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Hauptverfasser: Lu, Li-Chun, Liu, Miri, Lu, Pin-Chun, Tian, Yufei, Sun, Shao-Hua, Peng, Nanyun
Format: Preprint
Veröffentlicht: 2025
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Online-Zugang:https://arxiv.org/abs/2508.05470
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author Lu, Li-Chun
Liu, Miri
Lu, Pin-Chun
Tian, Yufei
Sun, Shao-Hua
Peng, Nanyun
author_facet Lu, Li-Chun
Liu, Miri
Lu, Pin-Chun
Tian, Yufei
Sun, Shao-Hua
Peng, Nanyun
contents We examine, analyze, and compare four representative creativity measures--perplexity, LLM-as-a-Judge, the Creativity Index (CI; measuring n-gram overlap with web corpora), and syntactic templates (detecting repetition of common part-of-speech patterns)--across the diverse creative domains, such as creative writing, unconventional problem-solving, and research ideation. For each domain, we compile datasets with human-aligned creative and uncreative examples and evaluate each metric's ability to discriminate between the two sets. Our analyses reveal limited consistency both across domains and metrics, as metrics that distinguish creativity in one domain fail in others (e.g., CI correctly distinguishes in creative writing but fails in problem-solving), and different metrics often disagree on the same data points (e.g., CI suggests one set to be more creative, while perplexity indicates the other set to be more creative.) We highlight key limitations, such as perplexity reflecting fluency rather than novelty; LLM-as-a-Judge producing inconsistent judgments under minor prompt variations and exhibiting bias towards particular labels; CI primarily measuring lexical diversity, with high sensitivity to implementation choices; and syntactic templates being ineffective in settings dominated by formulaic language. Our findings underscore the need for more robust, generalizable evaluation frameworks that better align with human judgments of creativity.
format Preprint
id arxiv_https___arxiv_org_abs_2508_05470
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Rethinking Creativity Evaluation: A Critical Analysis of Existing Creativity Evaluations
Lu, Li-Chun
Liu, Miri
Lu, Pin-Chun
Tian, Yufei
Sun, Shao-Hua
Peng, Nanyun
Computation and Language
We examine, analyze, and compare four representative creativity measures--perplexity, LLM-as-a-Judge, the Creativity Index (CI; measuring n-gram overlap with web corpora), and syntactic templates (detecting repetition of common part-of-speech patterns)--across the diverse creative domains, such as creative writing, unconventional problem-solving, and research ideation. For each domain, we compile datasets with human-aligned creative and uncreative examples and evaluate each metric's ability to discriminate between the two sets. Our analyses reveal limited consistency both across domains and metrics, as metrics that distinguish creativity in one domain fail in others (e.g., CI correctly distinguishes in creative writing but fails in problem-solving), and different metrics often disagree on the same data points (e.g., CI suggests one set to be more creative, while perplexity indicates the other set to be more creative.) We highlight key limitations, such as perplexity reflecting fluency rather than novelty; LLM-as-a-Judge producing inconsistent judgments under minor prompt variations and exhibiting bias towards particular labels; CI primarily measuring lexical diversity, with high sensitivity to implementation choices; and syntactic templates being ineffective in settings dominated by formulaic language. Our findings underscore the need for more robust, generalizable evaluation frameworks that better align with human judgments of creativity.
title Rethinking Creativity Evaluation: A Critical Analysis of Existing Creativity Evaluations
topic Computation and Language
url https://arxiv.org/abs/2508.05470