A new clustering accuracy measure is proposed to determine the unknown number of clusters and to assess the quality of clustering of a data set given in any dimensional space. Our validity index applies the classical nonparametric univariate kernel density estimation method to the interpoint distances computed between the members of data. Being based on interpoint distances, it is free of the curse of dimensionality and therefore efficiently computable for high-dimensional situations where the number of study variables can be larger than the sample size. The proposed measure is compatible with any clustering algorithm and with every kind of data set where the interpoint distance measure can be defined to have a density function. Simulation study proves its superiority over widely used cluster validity indices like the average silhouette width and the Dunn index, whereas its applicability is shown with respect to a high-dimensional Biostatistical study of Alon data set and a large Astrostatistical application of time series with light curves of new variable stars.
翻译:提议了新的集群精确度测量,以确定未知的组群数量,并评估在任何维空间提供的数据集组群的质量。 我们的有效性指数将传统的非参数单亚内核内核密度估计方法应用于数据成员之间计算之间的点距离。 基于点间距离,它不受维度的诅咒,因此可以有效地计算高维度情况,在这些高维情况下,研究变量的数量可能大于样本大小。 拟议的测量与任何组合算法和各种数据集相容,在其中,可以确定点间距离测量具有密度功能。 模拟研究证明它优于普通单流宽度和邓恩指数等广泛使用的群集有效性指数,而其适用性表现在对Alon数据集进行高维生物统计学研究,以及用新变量星的光曲线对时间序列进行大规模的天文学应用。