违反假设系列:模拟演示,说明假设如何影响统计估计

Ian A. Silver
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引用次数: 0

摘要

当教授和讨论统计假设时,我们的重点通常放在如何测试和处理潜在的违反上,而不是违反假设对统计模型产生的估计的影响。后者代表了一种潜在的途径,可以帮助我们更好地理解研究者自由度对我们产生的统计估计的影响。违反假设系列是我所做的一项努力,旨在证明违反假设对各种统计模型产生的估计的影响。本系列将回顾与估计因果关系相关的假设,以及更复杂的统计模型,包括但不限于多层模型、路径模型、结构方程模型和贝叶斯模型。除了主要目标之外,这一系列文章还旨在说明如何使用模拟来培养对应用统计学的全面理解。
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The Violating Assumptions Series: Simulated demonstrations to illustrate how assumptions can affect statistical estimates
When teaching and discussing statistical assumptions, our focus is oftentimes placed on how to test and address potential violations rather than the effects of violating assumptions on the estimates produced by our statistical models. The latter represents a potential avenue to help us better understand the impact of researcher degrees of freedom on the statistical estimates we produce. The Violating Assumptions Series is an endeavor I have undertaken to demonstrate the effects of violating assumptions on the estimates produced across various statistical models. The series will review assumptions associated with estimating causal associations, as well as more complicated statistical models including, but not limited to, multilevel models, path models, structural equation models, and Bayesian models. In addition to the primary goal, the series of posts is designed to illustrate how simulations can be used to develop a comprehensive understanding of applied statistics.
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