A Systematic Literature Review of Automated Feedback Generation for Programming Exercises

Author:

Keuning Hieke1,Jeuring Johan2,Heeren Bastiaan3

Affiliation:

1. Open University of the Netherlands and Windesheim University of Applied Sciences

2. Utrecht University and Open University of the Netherlands

3. Open University of the Netherlands

Abstract

Formative feedback, aimed at helping students to improve their work, is an important factor in learning. Many tools that offer programming exercises provide automated feedback on student solutions. We have performed a systematic literature review to find out what kind of feedback is provided, which techniques are used to generate the feedback, how adaptable the feedback is, and how these tools are evaluated. We have designed a labelling to classify the tools, and use Narciss’ feedback content categories to classify feedback messages. We report on the results of coding a total of 101 tools. We have found that feedback mostly focuses on identifying mistakes and less on fixing problems and taking a next step. Furthermore, teachers cannot easily adapt tools to their own needs. However, the diversity of feedback types has increased over the past decades and new techniques are being applied to generate feedback that is increasingly helpful for students.

Funder

Netherlands Organisation for Scientific Research

Publisher

Association for Computing Machinery (ACM)

Subject

Education,General Computer Science

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