KASER: Knowledge-Aligned Student Error Simulator for Open-Ended Coding Tasks
By: Zhangqi Duan, Nigel Fernandez, Andrew Lan
Potential Business Impact:
Helps computers guess student coding mistakes.
Open-ended tasks, such as coding problems that are common in computer science education, provide detailed insights into student knowledge. However, training large language models (LLMs) to simulate and predict possible student errors in their responses to these problems can be challenging: they often suffer from mode collapse and fail to fully capture the diversity in syntax, style, and solution approach in student responses. In this work, we present KASER (Knowledge-Aligned Student Error Simulator), a novel approach that aligns errors with student knowledge. We propose a training method based on reinforcement learning using a hybrid reward that reflects three aspects of student code prediction: i) code similarity to the ground-truth, ii) error matching, and iii) code prediction diversity. On two real-world datasets, we perform two levels of evaluation and show that: At the per-student-problem pair level, our method outperforms baselines on code and error prediction; at the per-problem level, our method outperforms baselines on error coverage and simulated code diversity.
Similar Papers
Learning to Make MISTAKEs: Modeling Incorrect Student Thinking And Key Errors
Machine Learning (CS)
Teaches computers to make smart mistakes.
Towards Valid Student Simulation with Large Language Models
Computation and Language
Teaches computers to act like students learning.
Towards Automated Error Discovery: A Study in Conversational AI
Computation and Language
Finds hidden mistakes in talking computer programs.