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Multidimensional Exploratory Analysis of a Structural Model Using a Class of Generalized Covariance Criteria

机译:一类广义协方差标准结构模型的多维探索性分析

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Our aim is to explore a structural model: several variable groups describing the same observations are assumed to be structured around latent dimensions that are linked through a linear model that may have several equations. This type of model is commonly dealt with by methods assuming that the latent dimension in each group is unique. However, conceptual models generally link concepts which are multidimensional. We propose a general class of criteria suitable to measure the quality of a Structural Equation Model (SEM). This class contains the covariance criteria used in PLS Regression and the Multiple Covariance criterion of the SEER method. It also contains quartimax-related criteria. All criteria in the class must be maximized under a unit norm constraint. We give an equivalent unconstrained maximization program, and algorithms to solve it. This maximization is used within a general algorithm named THEME (Thematic Equation Model Exploration), which allows to search the structures of groups for all dimensions useful to the model. THEME extracts locally nested structural component models.
机译:我们的目的是探索结构模型:假设描述相同观察的几个可变组围绕可以具有可能具有若干方程的线性模型链接的潜在尺寸。通过假设每个组中的潜在维度是唯一的,这种类型的模型通常通过方法处理。然而,概念模型通常链接多维概念。我们提出了一般的一般标准,适合测量结构方程模型(SEM)的质量。此类包含PLS回归和SEER方法的多个协方差标准中使用的协方差标准。它还包含与Quartimax相关的标准。类中的所有标准必须在单位规范约束下最大化。我们给出了一个等效的不受约束的最大化程序和算法来解决它。此最大化在命名主题(主题公式模型探索)的一般算法中使用,这允许搜索对模型有用的所有维度的组结构。主题提取局部嵌套的结构组件模型。

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