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College Course Name Classification at Scale

机译:高校课程名称分类

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摘要

Accessing college course content data at scale is often challenging due to a variety of legal and technical reasons. In this study, we classify college courses into course categories using only a college course name as an input. We describe our training data design, training process and report performance and evaluation metrics on two deep learning models- an LSTM and a word sequence-to-sequence models - trained on a three-level hierarchical course taxonomy with a number of course categories ranging from 58 to 2322. Despite scarce input data, the best performing models reach 0.91 accuracy and 88% relevance in quantitative and qualitative evaluations respectively.
机译:由于各种法律和技术原因,大规模访问大学课程内容数据通常具有挑战性。在本研究中,我们仅使用大学课程名称作为输入将大学课程分类为课程类别。我们描述了我们的训练数据设计,训练过程以及报告绩效和评估指标,基于两种深度学习模型-LSTM和单词序列-序列模型-在三级分层课程分类法中进行了培训,课程类别包括58到2322。尽管输入数据稀少,但性能最佳的模型在定量和定性评估中分别达到0.91的准确度和88%的相关性。

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