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USING SIMULATION TO INTERPRET RESULTS FROM LOGIT, PROBIT, AND OTHER NONLINEAR MODELS

机译:使用模拟从Logit,Probit和其他非线性模型解释结果

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In a recent issue of this journal, Glenn Hoetker proposes that researchers improve the interpretation and presentation of logit and probit results by reporting the marginal effects of key independent variables at theoretically interesting or empirically relevant values of the other independent variables in the model, and also by presenting results graphically (Hoetker, 2007: 335, 337). In this research note, I suggest an alternative approach for achieving this objective: reporting differences in predicted probabilities associated with discrete changes in key independent variable values. This intuitive approach to interpretation is especially useful when the theoretically interesting or empirically relevant changes in independent variables values are not very small, and also for models that contain interaction terms (or higher-order terms such as quadratics). Although the graphical presentations recommended by Hoetker implicitly embody this approach, they typically fail to include appropriate measures of statistical significance, and may therefore lead to erroneous conclusions. In order to calculate such measures, I recommend and demonstrate an intuitive simulation-based approach to statistical interpretation, developed by King et al. (2000), that has gained widespread adherence in the field of political science. Throughout the article, I provide a running example based on research that has previously appeared in the Strategic Management Journal.
机译:在该杂志的最新一期中,格伦·霍特克(Glenn Hoetker)建议研究人员通过报告关键自变量在模型中其他自变量的理论上有意义或与经验相关的值上的边际效应,来改善对数和概率结果的解释和表示。通过以图形方式呈现结果(Hoetker,2007:335,337)。在这篇研究笔记中,我提出了实现该目标的另一种方法:报告与关键独立变量值的离散变化相关的预测概率的差异。当自变量值的理论上有意义或与经验相关的变化不是很小时,以及对于包含交互项(或更高阶项,例如二次项)的模型,这种直观的解释方法特别有用。尽管Hoetker推荐的图形表示形式暗含了这种方法,但它们通常不能包括具有统计意义的适当度量,因此可能会得出错误的结论。为了计算这样的度量,我推荐并演示了King等人开发的基于直观模拟的统计解释方法。 (2000年),这已在政治科学领域得到广泛的遵守。在整篇文章中,我提供了一个基于先前在《战略管理杂志》上发表的研究的运行示例。

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