Feature engineering for clustering student solutions

Elena L. Glassman, Rishabh Singh, Rob Miller
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引用次数: 25

Abstract

Open-ended homework problems such as coding assignments give students a broad range of freedom for the design of solutions. We aim to use the diversity in correct solutions to enhance student learning by automatically suggesting alternate solutions. Our approach is to perform a two-level hierarchical clustering of student solutions to first partition them based on the choice of algorithm and then partition solutions implementing the same algorithm based on low-level implementation details. Our initial investigations in domains of introductory programming and computer architecture demonstrate that we need two different classes of features to perform effective clustering at the two levels, namely abstract features and concrete features.
聚类学生解决方案的特征工程
开放式的家庭作业问题,如编码作业,给学生广泛的自由设计解决方案。我们的目标是利用正确解决方案的多样性,通过自动提出替代解决方案来增强学生的学习。我们的方法是对学生解决方案执行两级分层聚类,首先根据算法的选择对它们进行分区,然后根据低级实现细节对实现相同算法的解决方案进行分区。我们在入门编程和计算机体系结构领域的初步研究表明,我们需要两类不同的特征来在两个层次上执行有效的聚类,即抽象特征和具体特征。
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