Time series mining based on multilayer piecewise aggregate approximation

Zhenghui Zhu, Renhan Cai, Xiaojian Cui, Lingyu Xu, Yunlan Xue, Gaowei Zhang, Lei Wang, Xiang Yu
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引用次数: 3

Abstract

Time series is a ubiquitous data existed in different domains including finance, medicine, business and other industrial fields. Recently, time series data mining attracts much attention. In this paper, we propose multilayer piecewise aggregate approximation (MPA) to measure the Similarity of time series. The proposed method is constituted of two parts: multi-level segment method based on extreme value is used to extract important identification sub-series of time series. And piecewise aggregate approximation is used to transform the data and to extract features from time series so as to reduce data dimension. After that, dynamic time warping is applied to measure the distance between two time series. The experimental results demonstrate that the proposed method can extract features and reduce data dimension efficiently, with improving the efficiency and the accuracy of time warping distance method significantly.
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基于多层分段聚合近似的时间序列挖掘
时间序列是一种无所不在的数据,存在于金融、医药、商业等工业领域。近年来,时间序列数据挖掘备受关注。本文提出了多层分段聚合近似(MPA)来度量时间序列的相似性。该方法由两部分组成:采用基于极值的多级分段方法提取时间序列的重要识别子序列;采用分段聚合近似法对数据进行变换,从时间序列中提取特征,降低数据维数。然后,利用动态时间规整测量两个时间序列之间的距离。实验结果表明,该方法能够有效地提取特征并降低数据维数,显著提高了时间翘曲距离方法的效率和精度。
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