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Multidimensional scaling method for complex time series feature classification based on generalized complexity-invariant distance

机译:基于广义复杂性距离的复杂时间序列特征分类的多维缩放方法

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摘要

In this paper, we propose a multidimensional scaling (MDS) method based on complexity-invariant distance (CID) and generalized complexity-invariant distance (GCID) to analyze and classify complex time series like traffic signals and financial stock indexes. Three types of simulation time series from the -map model, the 2D Henon map model and the Lozi map model as well as two real-world time series are used to illustrate the practicability of the proposed MDS method. Results from two traditional MDS and the MDS based on the mutual information are compared with the MDS based on CID and GCID, which demonstrate the proposed method is more effective and reasonable.
机译:在本文中,我们提出了一种基于复杂性不变距离(CID)和广义复杂性 - 不变距离(GCID)的多维缩放(MDS)方法,以分析和分类复杂的时间序列,如交通信号和金融股指数。 来自-map模型的三种仿真时间序列,2D HENON地图模型和LOZI地图模型以及两个实际时间序列用于说明所提出的MDS方法的实用性。 与基于CID和GCID的MDS比较了两个传统MDS和MDS的结果,展示了所提出的方法更有效和合理。

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