论文标题
现代化本科回归分析课程的三个原则
Three principles for modernizing an undergraduate regression analysis course
论文作者
论文摘要
随着数据在学术界,行业和日常生活中变得越来越普遍,本科生必须具备分析现代环境中数据所需的技能。近年来,有很多工作创新了入门统计课程和开发入门数据科学课程。但是,除了第一门课程之外,工作的工作较少。本文介绍了杜克大学(Duke University)教授的回归分析的创新,该课程侧重于应用程序,为统计学和数据科学专业的多样化的本科生群体以及非律师提供了服务。指导课程现代化的三个原则介绍了有关这些原则如何与最近统计和数据科学课程指南中概述的必要实践技能保持一致的详细信息。本文包括教学策略,这是由入门课程中的创新动机所激发的,这使得能够实施技能,以实施现代统计和数据科学实践以及基本统计概念。本文以这些变化,挑战和下一步的影响结束。本文中包括一部分活动和作业,其中包含完整的样本作业和资源,用于在补充材料中查找数据。
As data have become more prevalent in academia, industry, and daily life, it is imperative that undergraduate students are equipped with the skills needed to analyze data in the modern environment. In recent years there has been a lot of work innovating introductory statistics courses and developing introductory data science courses; however, there has been less work beyond the first course. This paper describes innovations to Regression Analysis taught at Duke University, a course focused on application that serves a diverse undergraduate student population of statistics and data science majors along with non-majors. Three principles guiding the modernization of the course are presented with details about how these principles align with the necessary skills of practice outlined in recent statistics and data science curriculum guidelines. The paper includes pedagogical strategies, motivated by the innovations in introductory courses, that make it feasible to implement skills for the practice of modern statistics and data science alongside fundamental statistical concepts. The paper concludes with the impact of these changes, challenges, and next steps for the course. Portions of in-class activities and assignments are included in the paper, with full sample assignments and resources for finding data in the supplemental materials.