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首页> 外文期刊>International Journal of Approximate Reasoning >Robust fuzzy clustering of time series based on B-splines
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Robust fuzzy clustering of time series based on B-splines

机译:基于B样条曲线的时间序列鲁棒模糊聚类

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摘要

Four different approaches to robust fuzzy clustering of time series are presented and compared with respect to other existent approaches. These approaches are useful to cluster time series when outlying values are found in these time series, which is often the rule in most real data applications. A representation of the time series by using B-splines is considered and, later, robust fuzzy clustering methods are applied on the B-splines fitted coefficients. Feasible algorithms for implementing these methodologies are presented. A simulation study shows how these methods are useful to deal with contaminating time series and also switching time series due to fuzziness. A real data analysis example on financial data is also presented. (C) 2021 Elsevier Inc. All rights reserved.
机译:呈现了四种不同的时间序列策略序列的不同方法,并与其他存在的方法相比。 当在这些时间序列中找到外围值时,这些方法对于群集时间序列是有用的,这通常是大多数真实数据应用中的规则。 考虑使用B样品的时间序列的表示,稍后,施加鲁棒的模糊聚类方法施加在B样曲线拟合系数上。 提供了用于实现这些方法的可行算法。 仿真研究表明,这些方法如何用于处理污染时间序列以及由于模糊性而切换时间序列。 还提出了关于财务数据的真实数据分析示例。 (c)2021 Elsevier Inc.保留所有权利。

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