协方差分析中主成分纳入协变量的模拟研究

A. S. G. Jayasinghe, S. Samita
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引用次数: 0

摘要

本研究检验了在不同实验设置下,主成分分析(PCA)方法在协方差分析(ANCOVA)中纳入协变量的使用。本研究采用模拟数据,并在R统计软件中开发统计程序,通过改变(i)协变量数量、(ii)协变量之间的相关程度、(iii)处理次数、(iv)处理手段之间的差异以及(v)重复次数,生成不同实验设置的数据集。每个实验设置进行了1000次模拟,并通过H0的拒绝比例通过测试的功率来评估PCA方法的影响:在1000次模拟中,调整后的处理方法之间没有差异。当有更多的相关协变量和有限的观测值时,pc的使用导致ANCOVA测试的能力显著增加。随着协变量数量的增加以及协变量之间的相关性的增加,影响越高。可以得出结论,通过pc容纳协变量,可以提高ANCOVA的效率,特别是如果有许多协变量要包含在有限数量的观测值的分析中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Incorporation of Covariates Through Principal Components in Analysis of Covariance: A Simulation Study
This study examined the use of the Principal Component Analysis (PCA) approach in incorporating covariates in the Analysis of Covariance (ANCOVA) under different experimental setups. Simulated data were used for the study, and the statistical programs were developed in R statistical software to generate the datasets for different experimental setups by varying (i) number of covariates, (ii) degree of correlation among covariates, (iii) number of treatments, (iv) difference between treatment means, and (v) number of replicates. Thousand simulations were performed for each experimental setup, and the impact of the PCA approach was assessed by means of power of the test through the proportion of rejections of H0: no difference between adjusted treatment means, in 1000 simulations. The use of PCs led to a significant gain in the power of the test in ANCOVA when there is a higher number of interrelated covariates with a limited number of observations. The impact was higher with the increase of number of covariates as well as the correlation between covariates. It can be concluded that by accommodating covariates by means of PCs, the efficiency in ANCOVA can be increased, especially if there are many covariates to be included in the analysis with a limited number of observations.
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