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引用次数: 52

摘要

介绍了一种为高维数据簇结构的显示分配颜色的方法,使颜色的感知差异尽可能忠实地反映原始数据空间中的距离。首先利用自组织映射(SOM)发现聚类结构,然后采用一种新的非线性投影方法将聚类结构映射到CIELab颜色空间中。投影方法最好地保留了最重要的局部数据距离,同时仍然可以从颜色中看出全局顺序。这使得该方法能够灵活地适应可用的色彩空间。然而,投影的输出空间不一定是色彩空间。比如说,二维的投影也可以可视化。
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Coloring that reveals high-dimensional structures in data
Introduces a method for assigning colors to displays of cluster structures of high-dimensional data, such that the perceptual differences of the colors reflect the distances in the original data space as faithfully as possible. The cluster structure is first discovered with a self-organizing map (SOM), and then a new nonlinear projection method is applied to map the cluster structure into the CIELab color space. The projection method preserves best the local data distances that are the most important ones, while the global order is still discernible from the colors, too. This allows the method to conform flexibly to the available color space. The output space of the projection need not necessarily be the color space, however. Projections onto, say, two dimensions can be visualized as well.
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