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Detecting Clusters in the Data from Variance Decompositions of Its Projections

机译:从投影的方差分解中检测数据中的聚类

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摘要

A new projection-pursuit index is used to identify clusters and other structures in multivariate data. It is obtained from the variance decompositions of the data's one-dimensional projections, without assuming a model for the data or that the number of clusters is known. The index is affine invariant and successful with real and simulated data. A general result is obtained indicating that clusters' separation increases with the data's dimension. In simulations it is thus confirmed, as expected, that the performance of the index either improves or does not deteriorate when the data's dimension increases, making it especially useful for "large dimension-small sample size" data. The efficiency of this index will increase with the continuously improved computer technology. Several applications are presented.
机译:一种新的投影追踪指数用于识别多元数据中的聚类和其他结构。它是从数据的一维投影的方差分解中获得的,而无需假设数据的模型或已知簇数。该索引是仿射不变的,并且对真实和模拟数据均成功。得到的一般结果表明,聚类的分离随着数据的维数增加而增加。因此,在仿真中,可以预期的是,当数据维数增加时,索引的性能会提高或不会降低,这使其特别适用于“大维数-小样本量”数据。随着计算机技术的不断改进,该索引的效率将提高。介绍了几种应用。

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