SyllabusQA: A Course Logistics Question Answering Dataset
Article Status
Published
Authors/contributors
- Fernandez, Nigel (Author)
- Scarlatos, Alexander (Author)
- Lan, Andrew (Author)
Title
SyllabusQA: A Course Logistics Question Answering Dataset
Abstract
Automated teaching assistants and chatbots have significant potential to reduce the workload of human instructors, especially for logistics-related question answering, which is important to students yet repetitive for instructors. However, due to privacy concerns, there is a lack of publicly available datasets. We introduce SyllabusQA, an open-source dataset with 63 real course syllabi covering 36 majors, containing 5,078 open-ended course logistics-related question-answer pairs that are diverse in both question types and answer formats. Since many logistics-related questions contain critical information like the date of an exam, it is important to evaluate the factuality of answers. We benchmark several strong baselines on this task, from large language model prompting to retrieval-augmented generation. We introduce Fact-QA, an LLM-based (GPT-4) evaluation metric to evaluate the factuality of predicted answers. We find that despite performing close to humans on traditional metrics of textual similarity, there remains a significant gap between automated approaches and humans in terms of fact precision.
Repository
arXiv
Archive ID
arXiv:2403.14666
Date
2024-07-22
Citation Key
fernandez2024
Accessed
08/01/2025, 21:38
Short Title
SyllabusQA
Library Catalogue
Extra
arXiv:2403.14666 [cs]
<标题>: SyllabusQA: 一份课程后勤问题回答数据集
<AI Smry>: SyllabusQA, an open-source dataset with 63 real course syllabi covering 36 majors, containing 5,078 open-ended course logistics-related question-answer pairs that are diverse in both question types and answer formats is introduced.
Citation
Fernandez, N., Scarlatos, A., & Lan, A. (2024). SyllabusQA: A Course Logistics Question Answering Dataset (arXiv:2403.14666). arXiv. https://doi.org/10.48550/arXiv.2403.14666
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