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Using a latent variable model with non-constant factor loadings to examine PM2.5 constituents related to secondary inorganic aerosols

机译:使用具有非恒定因子负荷的潜变量模型来检查与二次无机气溶胶相关的PM2.5成分

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摘要

Factor analysis is a commonly used method of modelling correlated multivariate exposure data. Typically, the measurement model is assumed to have constant factor loadings. However, from our preliminary analyses of the Environmental Protection Agency's (EPA's) PM2.5 fine speciation data, we have observed that the factor loadings for four constituents change considerably in stratified analyses. Since invariance of factor loadings is a prerequisite for valid comparison of the underlying latent variables, we propose a factor model that includes non-constant factor loadings that change over time and space using P-spline penalized with the generalized cross-validation (GCV) criterion. The model is implemented using the Expectation-Maximization (EM) algorithm and we select the multiple spline smoothing parameters by minimizing the GCV criterion with Newton's method during each iteration of the EM algorithm. The algorithm is applied to a one-factor model that includes four constituents. Through bootstrap confidence bands, we find that the factor loading for total nitrate changes across seasons and geographic regions.
机译:因子分析是对相关的多元暴露数据建模的常用方法。通常,假设测量模型具有恒定的因子负载。但是,根据我们对环境保护署(EPA)PM2.5精细形态数据的初步分析,我们发现,在分层分析中,四种成分的因子负荷变化很大。由于因子负载的不变性是对潜在隐变量进行有效比较的先决条件,因此我们提出了一个因子模型,该模型包括使用随广义交叉验证(GCV)准则惩罚的P样条随时间和空间变化的非恒定因子负载。 。该模型是使用Expectation-Maximization(EM)算法实现的,并且在EM算法的每次迭代过程中,我们通过使用Newton方法将GCV准则最小化来选择多个样条平滑参数。该算法应用于包含四个成分的单因素模型。通过自举置信带,我们发现总硝酸盐的因子负荷随季节和地理区域而变化。

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