A Chain-of-thought Prompting Approach With Llms For Evaluating Students' Formative Assessment Responses In Science · The Large Language Model Bible Contribute to LLM-Bible

A Chain-of-thought Prompting Approach With Llms For Evaluating Students' Formative Assessment Responses In Science

Cohn Clayton, Hutchins Nicole, Le Tuan, Biswas Gautam. Arxiv 2024

[Paper]    
Few Shot GPT Interpretability And Explainability Model Architecture Prompting Uncategorized

This paper explores the use of large language models (LLMs) to score and explain short-answer assessments in K-12 science. While existing methods can score more structured math and computer science assessments, they often do not provide explanations for the scores. Our study focuses on employing GPT-4 for automated assessment in middle school Earth Science, combining few-shot and active learning with chain-of-thought reasoning. Using a human-in-the-loop approach, we successfully score and provide meaningful explanations for formative assessment responses. A systematic analysis of our method’s pros and cons sheds light on the potential for human-in-the-loop techniques to enhance automated grading for open-ended science assessments.

Similar Work