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A Proposal for Robust Curve Clustering

机译:鲁棒曲线聚类的建议

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摘要

Functional data sets appear in many areas of science. Although each data point may be seen as a large finite-dimensional vector it is preferable to think of them as functions, and many classical multivariate techniques have been generalized for this kind of data. A widely used technique for dealing with functional data is to choose a finite-dimensional basis and find the best projection of each curve onto this basis. Therefore, given a functional basis, an approach for doing curve clustering relies on applying the k-means methodology to the fitted basis coefficients corresponding to all the curves in the data set. Unfortunately, a serious drawback follows from the lack of robustness of k-means. Trimmed k-means clustering (Cuesta-Albertos, Gordaliza, and Matran 1997) provides a robust alternative to the use of k-means and, consequently, it may be successfully used in this functional framework. The proposed approach will be exemplified by considering cubic B-splines bases, but other bases can be applied analogously depending on the application at hand.
机译:功能数据集出现在许多科学领域。尽管每个数据点都可以看作是一个较大的有限维向量,但最好将它们视为函数,并且许多经典的多元技术已针对此类数据进行了概括。处理功能数据的一种广泛使用的技术是选择有限维基础,并在此基础上找到每条曲线的最佳投影。因此,在给定功能基础的情况下,进行曲线聚类的方法取决于将k均值方法应用于与数据集中所有曲线相对应的拟合基础系数。不幸的是,由于缺乏k均值的鲁棒性,导致了严重的缺陷。修整的k均值聚类(Cuesta-Albertos,Gordaliza和Matran 1997)为使用k均值提供了可靠的替代方法,因此,可以成功地在此功能框架中使用。拟议的方法将以立方B样条曲线为基础进行举例说明,但根据当前的应用情况,可以类似地应用其他基础。

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