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Generalized biplots for stress-based multidimensionally scaled projections

机译:基于应力的多基线缩放预测的广义双尺寸

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Dimension reduction and visualization are staples of data analytics. Methods such as Principal Component Analysis (PCA) and Multidimensional Scaling (MDS) provide low dimensional (LD) projections of high dimensional (HD) data while preserving an HD relationship between observations. Traditional biplots assign meaning to the LD space of a PCA projection by displaying LD axes for the attributes. These axes, however, are specific to the linear projection used in PCA. Stress-based MDS (s-MDS) projections, which allow for arbitrary stress and dissimilarity functions, require special care when labeling the LD space. An iterative scheme is developed to plot an LD axis for each attribute based on the user-specified stress and dissimilarity metrics. The resulting plot, which contains both the LD projection of observations and attributes, is referred to as the Generalized s-MDS Biplot. The details of the Generalized s-MDS Biplot methodology, its relationship with PCA-derived biplots, and an application to a real dataset are provided. (C) 2018 Elsevier B.V. All rights reserved.
机译:减少和可视化是数据分析的钉。如主成分分析(PCA)和多维缩放(MDS)等方法提供了高维(HD)数据的低维(LD)投影,同时保留了观测之间的HD关系。传统的双本身通过为属性显示LD轴来分配给PCA投影的LD空间的含义。然而,这些轴特定于PCA中使用的线性投影。基于应力的MDS(S-MDS)投影,其允许任意应力和异化功能,在标记LD空间时需要特殊小心。开发了一种迭代方案,用于基于用户指定的应力和不相似度量绘制每个属性的LD轴。包含观察和属性的LD投影的所得到的图称为广义的S-MDS Biplot。提供了通用的S-MDS双批方法,其与PCA派生的双素的关系,以及应用于实时数据集的关系。 (c)2018 Elsevier B.v.保留所有权利。

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