Ciência_Iscte
Publications
Publication Detailed Description
Journal Title
Journal of the Brazilian Computer Society
Year (definitive publication)
2025
Language
English
Country
Brazil
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Abstract
The automatic assessment of text complexity has an important role to play in the context of language education. In this study, we shift the focus from L2 learners to adult native speakers with low literacy by exploring the new iRead4Skills dataset in European Portuguese. Furthermore, instead of relying on classical machine learning approaches or fine-tuning a pre-trained language model, we leverage the capabilities of prompt-based Large Language Models (LLMs), with a special focus on few-shot prompting approaches. We explore prompts with varying degrees of information, as well as different example selection approaches. Overall, the results of our experiments reveal that even a single example significantly increases the performance of the model and that few-shot approaches generalize better than fine-tuned models. However, automatic complexity assessment is a difficult and highly subjective task that is still far from solved.
Acknowledgements
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Keywords
Text complexity,Readability,Few-shot Prompting,Large Language Models
Fields of Science and Technology Classification
- Computer and Information Sciences - Natural Sciences
Funding Records
| Funding Reference | Funding Entity |
|---|---|
| UIDB/50021/2020 | Fundação para a Ciência e a Tecnologia |
| 1010094837 | Comissão Europeia |
Português