首页> 外文期刊>Communications in Nonlinear Science and Numerical Simulation >Could network analysis of horizontal visibility graphs be faithfully used to infer long-term memory properties in real-world time series?
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Could network analysis of horizontal visibility graphs be faithfully used to infer long-term memory properties in real-world time series?

机译:是否可以如实地使用水平能见度图的网络分析来推断现实世界时间序列中的长期存储属性?

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Mapping time series to complex networks has great potential to investigate their temporal structures. Some previous studies have been carried on time series generated from idealized stochastic models and found that there are inherent associations between long-term memory (LTM) of pure long-range correlated time series and topological parameters (TPs) of their networks, which is thought as a new prospective to extract information from time series. However, output time series from natural systems seldom take so idealized structures as those from idealized stochastic models, and there is usually some unconsidered information inherited in them, which makes these derived associations questionable. To check and generalize these conclusions acquired from idealized stochastic models, horizontal visibility graph (HVG) algorithm is employed to map time series to their horizontal visibility networks. Firstly synthetic time series with known mixed correlations (apart from LTM) have been analyzed and results indicate that topological parameters (TPs) of HVG networks are not solely dominated by the strength of LTM, other factors such as white noise, short-term correlation (STC) and nonlinear correlations are also playing crucial roles. Taking this fact into account, after some preprocessing treatments have been carried out, the LTM of daily mean air temperature series can indeed be inferred by means of the inherent associations between LTM of pure long-range correlated time series and TPs of their networks. (C) 2019 Elsevier B.V. All rights reserved.
机译:将时间序列映射到复杂网络具有研究其时间结构的巨大潜力。一些先前的研究已经对理想化的随机模型产生的时间序列进行了研究,发现纯远程相关时间序列的长期记忆(LTM)和其网络的拓扑参数(TP)之间存在内在的联系,这被认为是作为从时间序列中提取信息的新方法。但是,自然系统的输出时间序列很少像理想化的随机模型那样采用理想化的结构,并且通常会继承一些未经考虑的信息,这使得这些派生的关联性值得怀疑。为了检查和归纳从理想化随机模型获得的这些结论,采用水平可见性图(HVG)算法将时间序列映射到其水平可见性网络。首先分析了具有已知混合相关性的合成时间序列(除了LTM之外),结果表明HVG网络的拓扑参数(TPs)不仅由LTM的强度以及其他因素(如白噪声,短期相关性( STC)和非线性相关性也起着至关重要的作用。考虑到这一事实,在进行了一些预处理之后,确实可以通过纯远程相关时间序列的LTM与它们网络的TP之间的内在联系来推断每日平均气温序列的LTM。 (C)2019 Elsevier B.V.保留所有权利。

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