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Fuzzy time series prediction using hierarchical clustering algorithms

机译:使用层次聚类算法的模糊时间序列预测

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In many cases, the k-means clustering algorithm has been most frequently used to the field of data mining, fuzzy control systems and prediction since it was designed in simple procedures and excellent ability of classification. However, it sometimes brought about the failed results for non-linear data by classification behavior caused by just considering the statistical characteristics of non-linear data such as distances between data. To overcome the problems above, this paper proposes a new clustering algorithm of which the structure hierarchically classifies non-linear data. The proposed hierarchical classification technique consists of two levels, called upper clusters and lower fuzzy sets, using the cross-correlation clustering algorithm combined with the k-means clustering algorithm (HCKA), and it was able to improve classification accuracy. In addition, this paper constructs multiple model fuzzy predictors (MMFPs) corresponding to difference data of original time series, which was able to reflect the various characteristics of the time series to the proposed system. Simulation results show that the proposed system was effective and useful for modeling and predicting non-linear time series.
机译:在许多情况下,k-means聚类算法设计简单,分类能力强,因此最常用于数据挖掘,模糊控制系统和预测领域。然而,有时由于仅考虑非线性数据的统计特性(例如数据之间的距离)而引起的分类行为,就可能导致非线性数据失败。为克服上述问题,本文提出了一种新的聚类算法,该算法对结构进行非线性分类。提出的分层分类技术采用互相关聚类算法和k-means聚类算法(HCKA)相结合,由上层聚类和下层模糊集两个层次组成,能够提高分类的准确性。此外,本文构造了对应于原始时间序列差异数据的多个模型模糊预测器(MMFP),从而能够将时间序列的各种特征反映到所提出的系统中。仿真结果表明,该系统对非线性时间序列的建模和预测是有效的。

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