CYLGJul 23, 2021

ProtoTransformer: A Meta-Learning Approach to Providing Student Feedback

arXiv:2107.14035v227 citations
Originality Highly original
AI Analysis

This addresses the bottleneck of instructor feedback in computer science education by enabling scalable, high-quality automated feedback for students.

The paper tackles the problem of providing automated feedback on student code at scale by framing it as few-shot classification, using a meta-learning approach with task augmentation and transformer embeddings, achieving 88% average precision on unseen questions, surpassing teaching assistants at 82%.

High-quality computer science education is limited by the difficulty of providing instructor feedback to students at scale. While this feedback could in principle be automated, supervised approaches to predicting the correct feedback are bottlenecked by the intractability of annotating large quantities of student code. In this paper, we instead frame the problem of providing feedback as few-shot classification, where a meta-learner adapts to give feedback to student code on a new programming question from just a few examples annotated by instructors. Because data for meta-training is limited, we propose a number of amendments to the typical few-shot learning framework, including task augmentation to create synthetic tasks, and additional side information to build stronger priors about each task. These additions are combined with a transformer architecture to embed discrete sequences (e.g. code) to a prototypical representation of a feedback class label. On a suite of few-shot natural language processing tasks, we match or outperform state-of-the-art performance. Then, on a collection of student solutions to exam questions from an introductory university course, we show that our approach reaches an average precision of 88% on unseen questions, surpassing the 82% precision of teaching assistants. Our approach was successfully deployed to deliver feedback to 16,000 student exam-solutions in a programming course offered by a tier 1 university. This is, to the best of our knowledge, the first successful deployment of a machine learning based feedback to open-ended student code.

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