用虚假数据进行真实研究:计算机模拟研究与教学教程

Michael C. Sturman
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引用次数: 0

摘要

尽管许多人已经认识到计算机模拟作为一种研究工具的价值,但在大多数博士生教育和研究方法教材中,却没有关于构建计算机模拟的指导。本文为研究和教学提供了计算机模拟入门教程。它展示了根据变量之间的预期关系或指定模型创建数据所需的技术。本文还介绍了使数据更 "有趣 "的技术,包括添加偏度或峰度、创建不可靠的多项目测量、使数据多层次以及纳入中介、调节和非线性关系。论文中描述的方法使用 Excel、Mplus 和 R 进行了说明;此外,还探讨了使用 ChatGPT 在 R 中创建代码的功能,并与论文中的示例进行了比较。本文还提供了补充文件,对文中使用的每个示例以及文中提到的几种更高级的技术进行了说明。本文的目的不是帮助专家了解仿真技术,而是向所有读者展示这一研究和教学工具的强大潜力。
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Real Research with Fake Data: A Tutorial on Conducting Computer Simulation for Research and Teaching
Although many have recognized the value of computer simulations as a research tool, instruction on building computer simulations is absent from most doctoral education and research methods texts. This paper provides an introductory tutorial on computer simulations for research and teaching. It shows the techniques needed to create data based on desired relationships among the variables or based on a specified model. The paper also introduces techniques to make data more “interesting,” including adding skew or kurtosis, creating multi-item measures with unreliability, making data multilevel, and incorporating mediated, moderated, and nonlinear relationships. The methods described in the paper are illustrated using Excel, Mplus, and R; furthermore, the functionality of using ChatGPT to create code in R is explored and compared to the paper's illustrative examples. Supplemental files are provided that illustrate each example used in the paper as well as several more advanced techniques mentioned in the paper. The goal of this paper is not to help inform experts on simulation; rather, it is to open up to all readers the powerful potential of this research and teaching tool.
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