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Diagnosing University Student Subject Proficiency and Predicting Degree Completion in Vector Space

机译:诊断大学生学科熟练程度和预测矢量空间学位完成

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We investigate the issues of undergraduate on-time graduation with respect to subject proficiencies through the lens of representation learning, training a student vector embeddings from a dataset of 8 years of course enrollments. We compare the per-semester student representations of a cohort of undergraduate Integrative Biology majors to those of graduated students in subject areas involved in their degree requirements. The result is an embedding rich in information about the relationships between majors and pathways taken by students which encoded enough information to improve prediction accuracy of on-time graduation to 95%, up from a baseline of 87.3%. Challenges to preparation of the data for student vectorization and sourcing of validation sets for optimization are discussed.
机译:我们通过代表学习镜头调查本科对象毕业的问题,从代表学习镜头,从8年的日期入学的数据集中培训学生矢量嵌入。 我们比较本科综合生物学队伍队列的每学期学生代表,以学院要求的主题领域的毕业生。 结果是一个富裕的信息,其中有关专业和途径之间的关系的信息,这些学生通过学生编码了足够的信息,从基线提高了95%的预测准确性,从87.3%的基线增加到95%。 讨论了对学生矢量化数据的挑战进行探讨,用于优化的验证集采购。

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