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Clustering Introductory Computer Science Exercises Using Topic Modeling Methods

机译:使用主题建模方法进行聚类介绍计算机科学练习

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Manually determining concepts present in a group of questions is a challenging and time-consuming process. However, the process is an essential step while modeling a virtual learning environment since a mapping between concepts and questions using mastery level assessment and recommendation engines is required. In this article, we investigated unsupervised semantic models (known as topic modeling techniques) to assist computer science teachers in this task and propose a method to transform Computer Science 1 teacher-provided code solutions into representative text documents, including the code structure information. By applying nonnegative matrix factorization and latent Dirichlet allocation techniques, we extract the underlying relationship between questions and validate the results using an external dataset. We consider the interpretability of the learned concepts using 14 university professors' data, and the results confirm six semantically coherent clusters using the current dataset. Moreover, the six topics comprise the main concepts present in the test dataset, achieving 0.75 in the normalized pointwise mutual information metric. The metric correlates with human ratings, making the proposed method useful and providing semantics for large amounts of unannotated code.
机译:手动确定一组问题中存在的概念是一个具有挑战性和耗时的过程。然而,该过程是在建模虚拟学习环境的同时,因为需要使用掌握级别评估和推荐引擎的概念和问题之间的映射。在本文中,我们调查了无监督的语义模型(称为主题建模技术)来帮助计算机科学教师在此任务中,并提出将计算机科学1教师提供的代码解决方案转换为代表性文本文档,包括代码结构信息。通过应用非负矩阵分组和潜在的Dirichlet分配技术,我们将提取问题之间的基础关系并使用外部数据集验证结果。我们考虑使用14所大学教授的数据的学习概念的可解释性,结果使用当前数据集确认六个语义相干群集。此外,六个主题包括在测试数据集中存在的主要概念,在归一化的点相互信息度量中实现0.75。度量与人类评级相关,使得提出的方法有用和为大量未经发布的代码提供语义。

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