S-DAT: A Multilingual, GenAI-Driven Framework for Automated Divergent Thinking Assessment
This provides a scalable and inclusive tool for global creativity research, addressing limitations in cross-cultural applicability, though it is incremental as it builds on existing divergent thinking methods.
The paper tackles the problem of labor-intensive and language-specific creativity assessments by introducing S-DAT, a multilingual framework that uses large language models to compute semantic distance for automated divergent thinking evaluation, showing robust scoring across eleven languages with convergent and discriminant validity.
This paper introduces S-DAT (Synthetic-Divergent Association Task), a scalable, multilingual framework for automated assessment of divergent thinking (DT) -a core component of human creativity. Traditional creativity assessments are often labor-intensive, language-specific, and reliant on subjective human ratings, limiting their scalability and cross-cultural applicability. In contrast, S-DAT leverages large language models and advanced multilingual embeddings to compute semantic distance -- a language-agnostic proxy for DT. We evaluate S-DAT across eleven diverse languages, including English, Spanish, German, Russian, Hindi, and Japanese (Kanji, Hiragana, Katakana), demonstrating robust and consistent scoring across linguistic contexts. Unlike prior DAT approaches, the S-DAT shows convergent validity with other DT measures and correct discriminant validity with convergent thinking. This cross-linguistic flexibility allows for more inclusive, global-scale creativity research, addressing key limitations of earlier approaches. S-DAT provides a powerful tool for fairer, more comprehensive evaluation of cognitive flexibility in diverse populations and can be freely assessed online: https://sdat.iol.zib.de/.