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Eigensolver Methods for Progressive Multidimensional Scaling of Large Data

机译:Eigensolver用于大数据逐行多维缩放的方法

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摘要

We present a novel sampling-based approximation technique for classical multidimensional scaling that yields an extremely fast layout algorithm suitable even for very large graphs. It produces layouts that compare favorably with other methods for drawing large graphs, and it is among the fastest methods available. In addition, our approach allows for progressive computation, i.e. a rough approximation of the layout can be produced even faster, and then be refined until satisfaction.
机译:我们提出了一种基于新的采样的近似技术,用于经典多维缩放,即使对于非常大的图形,也能产生极快的布局算法。它产生的布局与其他方法进行比较,用于绘制大图,是最快的方法。此外,我们的方法允许逐步计算,即,可以更快地产生布局的粗略近似,然后精制直到满足。

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