中间的小猪

IF 2.8 4区 管理学 Q1 INFORMATION SCIENCE & LIBRARY SCIENCE Data Base for Advances in Information Systems Pub Date : 2021-12-09 DOI:10.1145/3505639.3505644
N. Danks
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引用次数: 10

摘要

研究人员逐渐认识到利用偏最小二乘结构方程模型(PLS-SEM)进行预测分析的价值,既可以评估过拟合,也可以说明模型的实用价值。中介是一种流行的机制,可以为因果模型增加细微差别和更大的解释力。然而,中介对产生预测提出了特殊的挑战,因为它们扮演着先决条件和结果的双重角色。从介导的PLS-SEM模型生成预测的解决方案尚未得到适当的探索或记录,也没有探索这些介质的模型复杂性是否在预测性能方面是合理的。我们通过评估从中介模型生成预测的方法来解决这一差距,并提出了一个简单的度量来量化中介(PCM)的预测贡献。我们进行蒙特卡罗模拟,然后在实证论证中应用这些方法。我们发现没有简单的最佳解决方案,但这三种方法都有优点和缺点。此外,PCM度量在量化非中介替代方案之上的中介预测质量方面表现良好。我们提出了关于选择最合适的方法和应用PCM作为额外证据来支持研究结论的指南。
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The Piggy in the Middle
Researchers are becoming cognizant of the value of conducting predictive analysis using partial least squares structural equation modeling (PLS-SEM) for both the evaluation of overfit and to illustrate the practical value of models. Mediators are a popular mechanism for adding nuance and greater explanatory power to causal models. However, mediators pose a special challenge to generating predictions as they serve a dual role of antecedent and outcome. Solutions for generating predictions from mediated PLS-SEM models have not been suitably explored or documented, nor has there been exploration of whether the added model complexity of such mediators is justified in the light of predictive performance. We address that gap by evaluating methods for generating predictions from mediated models, and propose a simple metric that quantifies the predictive contribution of the mediator (PCM). We conduct Monte Carlo simulations and then apply the methods in an empirical demonstration. We find that there is no simple best solution, but that all three approaches have strengths and weaknesses. Further, the PCM metric performs well to quantify the predictive qualities of the mediator over-and-above the non-mediated alternative. We present guidelines on selecting the most appropriate method and applying PCM for additional evidence to support research conclusions.
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来源期刊
Data Base for Advances in Information Systems
Data Base for Advances in Information Systems INFORMATION SCIENCE & LIBRARY SCIENCE-
CiteScore
3.60
自引率
7.10%
发文量
18
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