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Using Topic Modeling to Extract Pre-Service Teachers’ Understandings of Computational Thinking From Their Coding Reflections

机译:使用主题建模从编码思考中提取出职前教师对计算思维的理解

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Contribution: This paper employs the automatic scoring of short essays as a novel way to determine pre-service teachers' knowledge of and attitudes toward computational thinking (CT) from their written reflections. Implications about designing CT courses for pre-service teachers are discussed. Background: CT is an essential 21st-century competency that supports the development of problem-solving skills. Inspired by computing science problem-solving practices, CT should transcend disciplines, but few universities or colleges include CT courses or CT content in their core courses. It is also difficult to know what pre-service teachers think about CT and their role in promoting it. Research Questions: Do pre-service teachers' coding reflections reveal any important information about their knowledge of, skills in, and attitudes toward CT? Methodology: Traditional qualitative techniques based on human raters are impractical in analyzing hundreds of essays. Topic modeling, an unsupervised machine learning modeling technique, was employed to extract topical features from participants' reflections. In one section of an undergraduate Introduction to Educational Technology course offered at a large university in Western Canada, n & x003D; 139 pre-service teachers wrote a short reflection on their experience following a 20 h Accelerated Intro to Computer Science Code.org course. Topics were identified by analyzing contextual trends in participants' written reflections. Findings: Results showed that pre-service teachers' reflections included CT concepts, practices, and perspectives. Specifically, participants connected the coding activity to prior knowledge and experiences.
机译:贡献:本文采用了对短文的自动评分作为一种新颖的方式,可以根据他们的书面思考来确定职前教师对计算思维(CT)的知识和态度。讨论了为职前教师设计CT课程的含义。背景:CT是21世纪必不可少的能力,可支持解决问题的技能的发展。受计算机科学问题解决实践的启发,计算机科学应超越学科,但很少有大学或学院将计算机科学课程或计算机科学内容纳入其核心课程。也很难知道职前教师对CT的看法及其在促进CT中的作用。研究问题:职前教师的编码思考是否揭示出有关其对CT的知识,技能和态度的任何重要信息?方法论:基于人类评分者的传统定性技术在分析数百篇论文时是不切实际的。主题建模是一种无监督的机器学习建模技术,用于从参与者的思考中提取主题特征。 n&x003D;在加拿大西部的一所大型大学开设的《教育技术本科概论》课程的一部分。 139名岗前教师简短地回顾了他们在20个小时的计算机科学Code.org入门课程之后的经历。通过分析参与者书面思考中的语境趋势来确定主题。调查结果:结果表明,职前教师的反思包括CT概念,实践和观点。具体来说,参与者将编码活动与先前的知识和经验联系在一起。

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