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Preliminary Analysis of AASHO Road Test Rigid Pavement Data Using Modern Regression Techniques

机译:Aasho Road测试刚性路面数据的初步分析现代回归技术

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摘要

The normality assumptions with random errors and constant variance were often violated while analyzing multilevel pavement performance data using conventional regression techniques. Because of its hierarchical data structure, multilevel data are often analyzed using Linear Mixed-Effects (LME) models. The exploratory analysis, statistical modeling, and the examination of model-fit of LME models are more complicated than those of standard multiple regressions. A systematic modeling approach using visual-graphical techniques and LME models was proposed and demonstrated using the original AASHO road test rigid pavement data. The basic modeling approach includes: selecting a preliminary mean structure, selecting a random structure, selecting a residual covariance structure, model reduction, and examining the model fit. A goodness of fit plot indicates that the preliminary LME model provides better explanation to the data.
机译:使用常规回归技术分析多级路面性能数据,通常违反随机误差和恒定方差的正常假设。由于其分层数据结构,通常使用线性混合效应(LME)模型来分析多级数据。探索性分析,统计建模和LME模型模型适合的检查比标准多元回归更复杂。使用原始Aasho Road测试刚性路面数据提出和演示了使用视觉图形技术和LME模型的系统建模方法。基本建模方法包括:选择初步均值结构,选择随机结构,选择残余协方差结构,模型减少和检查模型配合。 FIT绘图的良好表明初步LME模型为数据提供了更好的解释。

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