Auto-scoring Student Responses with Images in Mathematics

Article Status
Published
Authors/contributors
Title
Auto-scoring Student Responses with Images in Mathematics
Abstract
Teachers often rely on the use of a range of open-ended problems to assess students' understanding of mathematical concepts. Beyond traditional conceptions of student open-ended work, commonly in the form of textual short-answer or essay responses, the use of figures, tables, number lines, graphs, and pictographs are other examples of open-ended work common in mathematics. While recent developments in areas of natural language processing and machine learning have led to automated methods to score student open-ended work, these methods have largely been limited to textual answers. Several computer-based learning systems allow students to take pictures of hand-written work and include such images within their answers to open-ended questions. With that, however, there are few-to-no existing solutions that support the auto-scoring of student hand-written or drawn answers to questions. In this work, we build upon an existing method for auto-scoring textual student answers and explore the use of OpenAI/CLIP, a deep learning embedding method designed to represent both images and text, as well as Optical Character Recognition (OCR) to improve model performance. We evaluate the performance of our method on a dataset of student open-responses that contains both text- and image-based responses, and find a reduction of model error in the presence of images when controlling for other answer-level features.
Date
2023-07-05
Accessed
08/04/2024, 21:11
Library Catalogue
DOI.org (Datacite)
Rights
Creative Commons Attribution 4.0 International, Open Access
Extra
Publisher: [object Object] Citation Key: baral2023
Citation
Baral, S., Botelho, A., Abhishek Santhanam, Gurung, A., Cheng, L., & Heffernan, N. (2023). Auto-scoring Student Responses with Images in Mathematics. https://doi.org/10.5281/ZENODO.8115645
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