AICLJan 22

LLM Prompt Evaluation for Educational Applications

arXiv:2601.16134v1h-index: 5
Originality Synthesis-oriented
AI Analysis

This work addresses the need for evidence-based prompt development in educational technology, offering a generalizable method to improve personalized and pedagogically aligned outputs, though it is incremental in applying existing evaluation frameworks to this domain.

The study tackled the problem of designing and evaluating LLM prompts for educational applications by developing a systematic evaluation approach, demonstrating that a specific prompt template for strategic reading outperformed others with win probabilities of 81% to 100% in pairwise comparisons.

As large language models (LLMs) become increasingly common in educational applications, there is a growing need for evidence-based methods to design and evaluate LLM prompts that produce personalized and pedagogically aligned out-puts. This study presents a generalizable, systematic approach for evaluating prompts, demonstrated through an analysis of LLM-generated follow-up questions in a structured dialogue activity. Six prompt templates were designed and tested. The templates incorporated established prompt engineering patterns, with each prompt emphasizing distinct pedagogical strategies. The prompt templates were compared through a tournament-style evaluation framework that can be adapted for other educational applications. The tournament employed the Glicko2 rating system with eight judges evaluating question pairs across three dimensions: format, dialogue support, and appropriateness for learners. Data was sourced from 120 authentic user interactions across three distinct educational deployments. Results showed that a single prompt related to strategic reading out-performed other templates with win probabilities ranging from 81% to 100% in pairwise comparisons. This prompt combined persona and context manager pat-terns and was designed to support metacognitive learning strategies such as self-directed learning. The methodology showcases how educational technology re- searchers can systematically evaluate and improve prompt designs, moving beyond ad-hoc prompt engineering toward evidence-based prompt development for educational applications.

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