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Comparing Out-of-Sample Predictive Ability of PLS, Covariance, and Regression Models

机译:比较PLS,协方差和回归模型的样本预测能力

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Partial Least Squares Path Modelling (PLSPM) is a popular technique for estimating structural equation models in the social sciences, and is frequently presented as an alternative to covariance-based analysis as being especially suited for predictive modeling. While existing research on PLSPM has focused on its use in causal-explanatory modeling, this paper follows two recent papers at ICIS 2012 and 2013 in examining how PLSPM performs when used for predictive purposes. Additionally, as a predictive technique, we compare PLSPM to traditional regression methods that are widely used for predictive modelling in other disciplines. Specifically, we employ out-of-sample k-fold cross-validation to compare PLSPM to covariance-SEM and a range of a-theoretical regression techniques in a simulation study. Our results show that PLSPM offers advantages over covariance-SEM and other prediction methods.
机译:局部最小二乘路径建模(PLSPM)是一种用于估计社会科学中结构方程模型的流行技术,并且经常被呈现为基于协方差的分析的替代方案,因为特别适用于预测建模。虽然对PLSPM的现有研究侧重于其在因果解释性建模中的使用,但本文在ICIS 2012和2013中遵循了两个近两篇论文在检查PLSPM如何在用于预测目的时执行。另外,作为预测技术,我们将PLSPM与传统回归方法进行比较,这些方法广泛用于其他学科预测性建模。具体地,我们采用超出样本k折叠交叉验证,以将PLSPM与调节研究中的一系列理论回归技术进行比较。我们的研究结果表明,PLSPM提供了优于协方差-SEM和其他预测方法的优势。

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