只是模拟它!在第二统计学课程中介绍通过模拟研究计算

Aimee Schwab-McCoy
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引用次数: 0

摘要

数据科学入门课程为学生提供了超越传统入门课程的计算基础。即使在入门课程中,许多学生也在使用R来支持他们的课程作业,而不是applet或“点击式”软件系统。在统计和数据科学课程中更早地引入计算,使学生能够更深入、更快地使用真实的数据集。早期统计学和数据科学教育的变化会对整个课程产生连锁反应。随着导论课程的现代化,后面的课程也必须改变。本文中描述的课程是第二学期的统计建模课程,具有现代的后数据科学风格。回归模型分别介绍(多元回归,泊松回归,逻辑回归),然后推广为广义线性模型(GLM)。在这门课上,学习者通过有针对性的实验,大量依赖模拟数据来研究这些模型的模式和行为。本课程强调通过实践学习经验来发展统计直觉,而不是针对每种情况制定一套规则。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Just Simulate It! Introducing Computing Through Simulation Studies in a Second Statistics Course
Introductory data science courses provide students with a computational foundation beyond traditional introductory courses. Even in the intro stats course, many students are using R to support their coursework rather than applet or “point-and-click” software systems. Introducing computation earlier in the statistics and data science curriculum enables students to work deeper and sooner with real data sets. Changes in early statistics and data science education have a ripple effect across the curriculum. As the introductory courses are modernized, the later courses must change too. The class described in this paper is a second-semester statistical modeling course with a modern, post-data science flair. Regression models are introduced separately (multiple regression, Poisson regression, logistic regression) before being generalized as the generalized linear model (GLM). In this class, learners studied the patterns and behaviors of these models through targeted labs leaning heavily on simulated data. This course emphasizes the development of statistical intuition through hands-on learning experiences, rather than a set of rules for each situation.
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