多变量模型的相对重要性分析:将焦点从自变量转移到参数估计

Joseph N. Luchman, Xue Lei, Seth A. Kaplan
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引用次数: 2

摘要

关于统计模型中不同自变量的相对重要性的结论对理论和实践具有重要意义。然而,确定相对重要性的方法尚未扩展到具有单一因变量和有限多变量模型集的统计模型之外。为了适应多变量模型,目前的工作建议从自变量相对重要性的概念转向参数估计相对重要性(PERI)的概念。本文通过将其与回归斜率和自变量相对重要性(IVRI)统计的评估进行比较来说明PERI方法,以显示新概念和相关方法的解释性和方法学优势。PERI优于标准化斜率的优势源于用于计算PERI统计数据的相同拟合度量;这使得它们比标准化的斜率更具有可比性。相对于IVRI, pi的优势源于自变量不能预测所有因变量的情况;因此,在自变量嵌套在它们预测的因变量中的情况下,pi允许确定重要性。我们还提供了使用统计模型的优势分析来实现PERI的建议,这些模型可以通过最大似然估计和一系列模型约束来估计,并使用两个示例。
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Relative importance analysis with multivariate models: Shifting the focus from independent variables to parameter estimates
Conclusions regarding the relative importance of different independent variables in a statistical model have meaningful implications for theory and practice. However, methods for determining relative importance have yet to extend beyond statistical models with a single dependent variable and a limited set of multivariate models. To accommodate multivariate models, the current work proposes shifting away from the concept of independent variable relative importance toward that of parameter estimate relative importance (PERI). This paper illustrates the PERI approach by comparing it to the evaluation of regression slopes and independent variable relative importance (IVRI) statistics to show the interpretive and methodological advantages of the new concept and associated methods. PERI’s advantages above standardized slopes stem from the same fit metric that is used to compute PERI statistics; this makes them more comparable to one another than standardized slopes. PERI’s advantages over IVRI stem from situations where independent variables do not predict all dependent variables; hence, PERI permits importance determination in situations where independent variables are nested in dependent variables they predict. We also provide recommendations for implementing PERI using dominance analysis with statistical models that can be estimated with maximum likelihood estimation combined with a series of model constraints using two examples.
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来源期刊
Journal of Applied Structural Equation Modeling
Journal of Applied Structural Equation Modeling Business, Management and Accounting-Business, Management and Accounting (miscellaneous)
CiteScore
9.50
自引率
0.00%
发文量
12
审稿时长
12 weeks
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