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A Bidirectional Between-Set Statistical Analysis Method and Its Applications

机译:双向组间统计分析方法及其应用

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摘要

In this work, a bidirectional statistical modeling and analysis approach is developed to relate two data tables (X1 and X2) under the supervision of each other. Different from quality prediction where the interest was to interpret one set of variables by another set, the current task lies in modeling simultaneously both data spaces in bidirectional fashion (X1 <-> X2) responding to different between-set relationships. It is performed in two steps. The first step aims at a bidirectional latent variable (Bi-LV) extraction and preparation, by which the between-set covarying relationship is preliminarily set up. In the second step, where a joint postprocessing is performed on the Bi-LV modeling result (here termed Bi-JPLV algorithm), different types of systematic variations are decomposed in each space. Correlated and unique variations are discriminated and evaluated in specific model parameters separately revealing between-set similarity and dissimilarity, respectively. The proposed method gives a good interpretation of the underlying information within each data space from a bidirectional viewpoint, revealing practical application potential. The feasibility and performance of the proposed method are illustrated with both numerical and real industrial cases.
机译:在这项工作中,开发了一种双向统计建模和分析方法,以将两个数据表(X1和X2)相互关联。与质量预测(兴趣是用另一组解释一组变量)不同,当前任务在于以双向方式同时对两个数据空间建模(X1 <-> X2),以响应不同的组间关系。它分两个步骤执行。第一步针对双向潜在变量(Bi-LV)的提取和准备,由此初步建立了组间共变关系。在第二步中,对Bi-LV建模结果执行联合后处理(此处称为Bi-JPLV算法),在每个空间中分解不同类型的系统变量。在特定的模型参数中区分和评估相关的和唯一的变化,分别揭示集合之间的相似性和不相似性。所提出的方法从双向角度很好地解释了每个数据空间中的基础信息,从而揭示了实际的应用潜力。数值算例和实际案例说明了该方法的可行性和性能。

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