绘制台湾高等通识教育中的数据科学教育图景:综合教学大纲分析

Yu-Chia Hsu
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摘要

不断发展的数据科学教育为普通教育课程的教师带来了挑战。随着致力于培养数据科学家的高等教育不断扩大,将数据科学教育纳入大学课程已势在必行。然而,针对不同的学生背景,强调了对课程内容和设计进行系统审查的必要性。本研究系统回顾了台湾所有大学的 60 门通识教育数据科学课程的教学大纲。利用内容分析、文献计量学和文本挖掘方法,本研究量化了教学大纲中的关键指标,包括教学材料、评估技术、学习目标和涵盖的主题。研究强调了不常见的教科书共享,尤其关注 Python 编程。评估方法主要包括参与、作业和项目。对布鲁姆分类学的分析表明,学习目标侧重于中等复杂程度。所涵盖的主题从高到低依次为大数据能力、分析技术、编程能力和教学策略。本研究应对了划分数据科学具体内容的挑战,为现有知识做出了宝贵贡献。它还为简化入门课程中多个学科的整合提供了有价值的参考,同时确保了数据科学教育领域中具有不同编程和统计能力的学生的灵活性。
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Mapping the Landscape of Data Science Education in Higher General Education in Taiwan: A Comprehensive Syllabi Analysis
The evolving landscape of data science education poses challenges for instructors in general education classes. With the expansion of higher education dedicated to cultivating data scientists, integrating data science education into university curricula has become imperative. However, addressing diverse student backgrounds underscores the need for a systematic review of course content and design. This study systematically reviews 60 data science courses syllabi in general education across all universities in Taiwan. Utilizing content analysis, bibliometric, and text-mining methodologies, this study quantifies key metrics found within syllabi, including instructional materials, assessment techniques, learning objectives, and covered topics. The study highlights infrequent textbook sharing, with particular focus on Python programming. Assessment methods primarily involve participation, assignments, and projects. Analysis of Bloom’s Taxonomy suggests a focus on moderate complexity learning objectives. The topics covered prioritize big data competency, analytical techniques, programming competency, and teaching strategies in descending order. This study makes a valuable contribution to the current knowledge by tackling the challenge of delineating the specific content of data science. It also provides valuable references for potentially streamlining the integration of multiple disciplines within introductory courses while ensuring flexibility for students with varying programming and statistical proficiencies in the realm of data science education.
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