A Dataset for Learning University STEM Courses at Scale and Generating Questions at a Human Level.

Iddo Drori,Sarah J. Zhang,Zad Chin, Reece Shuttleworth, Albert Lu, Linda Chen,Bereket Birbo, Michele He,Pedro Lantigua,Sunny Tran, Gregory Hunter,Bo Feng,Newman Cheng,Roman Wang,Yann Hicke,Saisamrit Surbehera, Arvind Raghavan, Alexander E. Siemenn,Nikhil Singh,Jayson Lynch,Avi Shporer,Nakul Verma, Tonio Buonassisi,Armando Solar-Lezama

AAAI(2023)

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摘要
We present a new dataset for learning to solve, explain, and generate university-level STEM questions from 27 courses across a dozen departments in seven universities. We scale up previous approaches to questions from courses in the departments of Mechanical Engineering, Materials Science and Engineering, Chemistry, Electrical Engineering, Computer Science, Physics, Earth Atmospheric and Planetary Sciences, Economics, Mathematics, Biological Engineering, Data Systems, and Society, and Statistics. We visualize similarities and differences between questions across courses. We demonstrate that a large foundation model is able to generate questions that are as appropriate and at the same difficulty level as human-written questions.
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