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Main Authors: Saule, Erik, Subramanian, Kalpathi, Bunescu, Razvan
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2602.03962
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author Saule, Erik
Subramanian, Kalpathi
Bunescu, Razvan
author_facet Saule, Erik
Subramanian, Kalpathi
Bunescu, Razvan
contents Professional societies often publish curriculum guidelines to help programs align their content to international standards. In Computer Science, the primary standard is published by ACM and IEEE and provide detailed guidelines for what should be and could be included in a Computer Science program. While very helpful, it remains difficult for program administrators to assess how much of the guidelines is being covered by a CS program. This is in particular due to the extensiveness of the guidelines, containing thousands of individual items. As such, it is time consuming and cognitively demanding to audit every course to confidently mark everything that is actually being covered. Our preliminary work indicated that it takes about a day of work per course. In this work, we propose using Natural Language Processing techniques to accelerate the process. We explore two kinds of techniques, the first relying on traditional tools for parsing, tagging, and embeddings, while the second leverages the power of Large Language Models. We evaluate the application of these techniques to classify a corpus of pedagogical materials and show that we can meaningfully classify documents automatically.
format Preprint
id arxiv_https___arxiv_org_abs_2602_03962
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Automatic Classification of Pedagogical Materials against CS Curriculum Guidelines
Saule, Erik
Subramanian, Kalpathi
Bunescu, Razvan
Computation and Language
Professional societies often publish curriculum guidelines to help programs align their content to international standards. In Computer Science, the primary standard is published by ACM and IEEE and provide detailed guidelines for what should be and could be included in a Computer Science program. While very helpful, it remains difficult for program administrators to assess how much of the guidelines is being covered by a CS program. This is in particular due to the extensiveness of the guidelines, containing thousands of individual items. As such, it is time consuming and cognitively demanding to audit every course to confidently mark everything that is actually being covered. Our preliminary work indicated that it takes about a day of work per course. In this work, we propose using Natural Language Processing techniques to accelerate the process. We explore two kinds of techniques, the first relying on traditional tools for parsing, tagging, and embeddings, while the second leverages the power of Large Language Models. We evaluate the application of these techniques to classify a corpus of pedagogical materials and show that we can meaningfully classify documents automatically.
title Automatic Classification of Pedagogical Materials against CS Curriculum Guidelines
topic Computation and Language
url https://arxiv.org/abs/2602.03962