Investigating Student's Problem-solving Approaches in MOOCs using Natural Language Processing

ByeongJo Kong, Erik Hemberg, Ana Bell, Una-May O’Reilly
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引用次数: 1

Abstract

Problem-solving approaches are an essential part of learning. Knowing how students approach solving problems can help instructors improve their instructional designs and effectively guide the learning process of students. We propose a natural language processing (NLP) driven method to capture online learners’ problem-solving approaches at scale while using Massive Open Online Courses (MOOCs) as a learning platform. We employ an online survey to gather data, NLP techniques, and existing educational theories to investigate this in the lens of both computer science and education. The paper shows how NLP techniques, i.e. preprocessing, topic modeling, and text summarization, must be tuned to extract information from a large-scale text corpus. The proposed method discovered 18 problem-solving approaches from the text data, such as using pen and paper, peer learning, trial and error, etc. We also observed topics that appear over the years, such as clarifying code logic, watching videos, etc. We observed that students heavily rely on "tools" for solving programming problems and can expect that such selection of methods can vary depending on the type of task.
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利用自然语言处理调查mooc学生解决问题的方法
解决问题的方法是学习的重要组成部分。了解学生如何解决问题可以帮助教师改进教学设计,有效地指导学生的学习过程。我们提出了一种自然语言处理(NLP)驱动的方法,在使用大规模开放在线课程(MOOCs)作为学习平台的同时,大规模捕获在线学习者的问题解决方法。我们采用在线调查来收集数据、NLP技术和现有的教育理论,从计算机科学和教育的角度来调查这个问题。本文展示了如何调整NLP技术,即预处理,主题建模和文本摘要,以从大规模文本语料库中提取信息。该方法从文本数据中发现了18种解决问题的方法,如用笔和纸、同侪学习、试错法等。我们还观察了多年来出现的主题,例如澄清代码逻辑,观看视频等。我们观察到学生严重依赖“工具”来解决编程问题,并且可以预期,这种方法的选择可以根据任务的类型而变化。
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