Leveraging Small LLMs for Argument Mining in Education: Argument Component Identification, Classification, and Assessment
Favero, Lucile, Pérez-Ortiz, Juan Antonio, Käser, Tanja, Oliver, Nuria
–arXiv.org Artificial Intelligence
Argument mining algorithms analyze the argumentative structure of essays, making them a valuable tool for enhancing education by providing targeted feedback on the students' argumentation skills. While current methods often use encoder or encoder-decoder deep learning architectures, decoder-only models remain largely unexplored, offering a promising research direction. This paper proposes leveraging open-source, small Large Language Models (LLMs) for argument mining through few-shot prompting and fine-tuning. These models' small size and open-source nature ensure accessibility, privacy, and computational efficiency, enabling schools and educators to adopt and deploy them locally. Specifically, we perform three tasks: segmentation of student essays into arguments, classification of the arguments by type, and assessment of their quality. We empirically evaluate the models on the Feedback Prize - Predicting Effective Arguments dataset of grade 6-12 students essays and demonstrate how fine-tuned small LLMs outperform baseline methods in segmenting the essays and determining the argument types while few-shot prompting yields comparable performance to that of the baselines in assessing quality. This work highlights the educational potential of small, open-source LLMs to provide real-time, personalized feedback, enhancing independent learning and writing skills while ensuring low computational cost and privacy.
arXiv.org Artificial Intelligence
Feb-20-2025
- Country:
- Europe
- Spain (0.14)
- Switzerland (0.14)
- North America > United States (0.15)
- Europe
- Genre:
- Research Report (1.00)
- Industry:
- Education
- Curriculum > Subject-Specific Education (0.54)
- Educational Setting (0.68)
- Education
- Technology: