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首页> 外文期刊>Journal of Chemometrics >THEME: THEmatic model exploration through multiple co-structure maximization
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THEME: THEmatic model exploration through multiple co-structure maximization

机译:主题:通过多重协同结构最大化进行主题模型探索

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摘要

After showing that plain covariance or correlation-based criteria are generally not suitable to deal with multiple-block component models in an exploratory framework, we propose an extended criterion: multiple co-structure (MCS). MCS combines the goodness-of-fit indicator of the component model to a flexible measure of structural relevance of the components. Thus, it allows to track various kinds of interpretable structures within the data, on top of variance maximizing components: variable-bundles, components close to satisfying relevant structural constraints, and so on. MCS is to be maximised under unit-norm constraints on coefficient-vectors. We provide a dedicated ascent algorithm for it. This algorithm is nested into a more general one, named THEME (thematic equation model explorator), which calculates several components per data-array and extracts nested structural component models. The method is tested on simulated data and applied to physicochemical data. Copyright (C) 2015 John Wiley & Sons, Ltd.
机译:在显示出简单的协方差或基于相关性的标准通常不适合在探索性框架中处理多块组件模型之后,我们提出了一个扩展的标准:多重协同结构(MCS)。 MCS将组件模型的拟合优度指标与组件的结构相关性的灵活度量结合在一起。因此,它允许在方差最大化组件(可变束,接近满足相关结构约束的组件)之上跟踪数据内的各种可解释结构。 MCS将在系数向量的单位范数约束下最大化。我们为其提供了专用的上升算法。此算法嵌套在一个更通用的算法中,称为THEME(主题方程模型解释器),该算法可为每个数据数组计算多个组件,并提取嵌套的结构组件模型。该方法在模拟数据上进行了测试,并应用于理化数据。版权所有(C)2015 John Wiley&Sons,Ltd.

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