English

Assertion Enhanced Few-Shot Learning: Instructive Technique for Large Language Models to Generate Educational Explanations

Computation and Language 2024-01-23 v3

Abstract

Human educators possess an intrinsic ability to anticipate and seek educational explanations from students, which drives them to pose thought-provoking questions when students cannot articulate these explanations independently. We aim to imbue Intelligent Tutoring Systems with this ability using few-shot learning capability of Large Language Models. Our work proposes a novel prompting technique, Assertion Enhanced Few-Shot Learning, to facilitate the generation of accurate, detailed oriented educational explanations. Our central hypothesis is that, in educational domain, few-shot demonstrations are necessary but not a sufficient condition for quality explanation generation. We conducted a study involving 12 in-service teachers, comparing our approach to Traditional Few-Shot Learning. The results show that Assertion Enhanced Few-Shot Learning improves explanation accuracy by 15% and yields higher-quality explanations, as evaluated by teachers. We also conduct a qualitative ablation study to factor the impact of assertions to provide educator-friendly prompting guidelines for generating explanations in their domain of interest.

Keywords

Cite

@article{arxiv.2312.03122,
  title  = {Assertion Enhanced Few-Shot Learning: Instructive Technique for Large Language Models to Generate Educational Explanations},
  author = {Tasmia Shahriar and Kelly Ramos and Noboru Matsuda},
  journal= {arXiv preprint arXiv:2312.03122},
  year   = {2024}
}
R2 v1 2026-06-28T13:42:14.391Z