变化共享:基于pls的扫描电镜路径偏差低估问题的一种新的数值解

N. Kock, S. Sexton
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引用次数: 7

摘要

目前与采用偏最小二乘法的结构方程建模相关的最根本的问题是,它没有适当地考虑测量误差,这往往导致路径系数估计逐渐收敛到比真实值更小的值。这种衰减现象影响了商业数据分析领域的应用;事实上,这是基于复合模型的一个普遍特征,其中潜在变量被建模为其指标的精确线性组合。在满足普遍接受的测量质量评估标准的模型中,每条路径的低估通常在10%左右。作者提出了一种数值解决方案,他们称之为基于因子的偏最小二乘回归(FPLSR)算法,根据该算法,复合材料中损失的变化与测量误差和衰减量成比例地恢复。基于不同的可靠性度量,开发了六种不同的解决方案,并在蒙特卡罗仿真中进行了对比。作者的解决方案是非参数的,似乎在小样本和严重非正态数据中表现良好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Variation Sharing: A Novel Numeric Solution to the Path Bias Underestimation Problem of PLS-Based SEM
The most fundamental problem currently associated with structural equation modeling employing the partial least squares method is that it does not properly account for measurement error, which often leads to path coefficient estimates that asymptotically converge to values of lower magnitude than the true values. This attenuation phenomenon affects applications in the field of business data analytics; and is in fact a characteristic of composite-based models in general, where latent variables are modeled as exact linear combinations of their indicators. The underestimation is often of around 10% per path in models that meet generally accepted measurement quality assessment criteria. The authors propose a numeric solution to this problem, which they call the factor-based partial least squares regression (FPLSR) algorithm, whereby variation lost in composites is restored in proportion to measurement error and amount of attenuation. Six variations of the solution are developed based on different reliability measures, and contrasted in Monte Carlo simulations. The authors' solution is nonparametric and seems to perform generally well with small samples and severely non-normal data.
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