Automatic Transformation of Textual Content Using LLM-Technology: a Feasibility Study

Authors

Koen Smit
University of Applied Sciences Utrecht image/svg+xml
Sam Leewis
University of Applied Sciences Utrecht image/svg+xml
Annemae van de Hoef
University of Applied Sciences Utrecht image/svg+xml
Duain Castro
University of Applied Sciences Utrecht image/svg+xml

Synopsis

This study investigates the feasibility of using Large Language Model (LLM)-technology to classify and transform textual (educational) content according to CEFR proficiency levels in support of digital accessibility in higher education. We developed a browser-based Proof-of-Concept that performs on-the-fly CEFR classification and transform text to target levels (A1–C2) in Dutch and English. Using a corpus of 120 texts evenly distributed across CEFR levels, we evaluated classification accuracy and transformation effectiveness under multiple temperature settings. Results show modest zero-shot classification performance and systematic mid-level bias, particularly for Dutch. Transformation outcomes were stronger in English, especially for B1–B2 targets, but weak for extreme levels and prone to instability. The findings suggest that while LLMs show promise for automated readability adaptation, reliable deployment requires task-specific tuning, multilingual robustness testing, and human-centered evaluation to ensure meaningful accessibility gains.

Author Biographies

Koen Smit, University of Applied Sciences Utrecht

Utrecht, the Netherlands. E-mail: koen.smit@hu.nl

Sam Leewis, University of Applied Sciences Utrecht

Utrecht, the Netherlands. E-mail: sam.leewis@hu.nl

Annemae van de Hoef, University of Applied Sciences Utrecht

Utrecht, the Netherlands. E-mail: annemae.vandehoef@hu.nl

Duain Castro, University of Applied Sciences Utrecht

Utrecht, the Netherlands. E-mail: duain.castro@hu.nl

Published

June 5, 2026

License

Creative Commons License

This work is licensed under a Creative Commons Attribution 4.0 International License.

How to Cite

Smit, K., Leewis, S., van de Hoef, A., & Castro, D. (2026). Automatic Transformation of Textual Content Using LLM-Technology: a Feasibility Study. In D. Vidmar, A. Pucihar, M. Kljajić Borštnar, R. W. H. Bons, M. Glowatz, & H.-D. Zimmermann (Eds.), & (Ed.), 39th Bled eConference: Co-Creating Human-Centred and Responsible Digital Futures; Conference Proceedings (Vols. 39., pp. 571-586). University of Maribor Press. https://doi.org/10.18690/um.fov.4.2026.35