为技术学生和非技术学生开设以数据挖掘为重点的商业分析课程

Q2 Social Sciences Journal of Information Systems Education Pub Date : 2024-01-01 DOI:10.62273/mwcg1518
Yulei Zhang, Mandy Yan Dang, M. Albritton, Yulei Gavin, Zhang Mandy, Yan Dang
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引用次数: 0

摘要

本研究详细介绍了本科商业分析课程的开发情况,该课程结合了主动学习和体验学习的内容。该课程旨在让不同背景的学生接触到中高级水平的商业分析。该课程的独特之处在于,它的设计既适合 "精通技术 "的学习者,也适合非技术学习者--这两个群体可能拥有截然不同的技能组合。该课程采用了高级分析技术和算法来提高决策水平,并使用了一个名为 RapidMiner 的商业分析平台,该平台包含嵌入式分析框架,因此学员无需具备计算机编程经验即可成功学习。每个课程模块都包含不同类型的实验项目--包括大量使用指导性实验项目、自定进度的问题解决实验和基于考试的实验评估--在这些项目中,学生有多次机会练习建立随着时间推移越来越复杂的经验。课程前后的调查用于评估课程设计,包括学生参与度、学生学习情况、学习兴趣和学习满意度。随着时间的推移,对课程感知的定量分析显示,学生的参与度、满意度和学习兴趣平均都有所提高。学生们对商业分析的理解和整体态度都有了明显改善,这似乎让他们对未来接触商业分析这一兴趣学科产生了更多的兴趣。
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Delivering a Business Analytics Course Focused on Data Mining for Both Technical and Non-Technical Students
The current study details the development of an undergraduate business analytics course that combines components of both active and experiential learning. The course offering is designed to expose students from different backgrounds to an intermediate-to-advanced level of business analytics. The course is unique in that it was designed to be appropriate for both “tech savvy” and non-technical learners—two groups who likely possess very different skill sets. The course incorporates high-level analytic techniques and algorithms that enhance decision-making and makes use of a business analytics platform called RapidMiner that includes embedded analytic frameworks, so learners do not require prior computer programming experience to be successful. Each course module incorporates different types of lab projects—including heavy usage of guided lab projects, self-paced problem-solving labs, and exam-based lab assessments—where students have multiple opportunities to practice building increasingly sophisticated experiences over time. Pre-and post-course surveys were used to assess course design, including student engagement, student learning, learning interest, and learning satisfaction. Quantitative analyses of course perceptions over time reveal that students, on average, report increases in engagement, satisfaction, and learning interest. Students demonstrate significant improvements in their understanding and overall attitudes toward business analytics, which appears to generate additional excitement about future exposure to business analytics as a subject of interest.
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来源期刊
Journal of Information Systems Education
Journal of Information Systems Education Social Sciences-Education
CiteScore
2.80
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0.00%
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0
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