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基于共同主成分的多元时间序列降维方法
引用本文:李正欣,郭建胜,惠晓滨,宋飞飞. 基于共同主成分的多元时间序列降维方法[J]. 控制与决策, 2013, 28(4): 531-536
作者姓名:李正欣  郭建胜  惠晓滨  宋飞飞
作者单位:空军工程大学装备管理与安全工程学院,西安710051
摘    要:针对常见的降维方法难以有效保留多元时间序列主要特征的问题,分析了传统主成分分析(PCA)方法在多元时间序列降维中的局限性,提出一种基于共同主成分分析的多元时间序列降维方法,并通过仿真实验比较了两种方法的降维有效性和计算复杂度.实验结果表明,所提出的降维方法能够以相对较小的计算代价,更有效地对多元时间序列进行降维.

关 键 词:降维  多元时间序列  主成分分析  共同主成分分析  计算复杂度
收稿时间:2011-06-27
修稿时间:2012-04-12

Dimension reduction method for multivariate time series based on common principal component
LI Zheng-xin,GUO Jian-sheng,HUI Xiao-bin,SONG Fei-fei. Dimension reduction method for multivariate time series based on common principal component[J]. Control and Decision, 2013, 28(4): 531-536
Authors:LI Zheng-xin  GUO Jian-sheng  HUI Xiao-bin  SONG Fei-fei
Abstract:

Existing dimension reduction method for multivariate time series can’t preserve their feature effectively.
Therefore, the drawback of PCA method is analyzed, when it is used in MTS dimension reduction, and based on common
principal component analysis, a dimension reduction method for multivariate time series is proposed. The computational
complexity and the validity of dimension reduction are compared between different methods. The results of experiments
show that the proposed method can reduce dimension effectively at comparatively low computational cost, and at the same
time preserve most feature of multivariate time series.

Keywords:dimension reduction  multivariate time series  principal component analysis  common principal component analysis  computational complexity
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