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Inferring Weighted Directed Association Networks from Multivariate Time Series with the Small-Shuffle Symbolic Transfer Entropy Spectrum Method

机译:小混洗符号传递熵谱法从多元时间序列推断加权有向关联网络

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Complex network methodology is very useful for complex system exploration. However, the relationships among variables in complex systems are usually not clear. Therefore, inferring association networks among variables from their observed data has been a popular research topic. We propose a method, named small-shuffle symbolic transfer entropy spectrum (SSSTES), for inferring association networks from multivariate time series. The method can solve four problems for inferring association networks, i.e., strong correlation identification, correlation quantification, direction identification and temporal relation identification. The method can be divided into four layers. The first layer is the so-called data layer. Data input and processing are the things to do in this layer. In the second layer, we symbolize the model data, original data and shuffled data, from the previous layer and calculate circularly transfer entropy with different time lags for each pair of time series variables. Thirdly, we compose transfer entropy spectrums for pairwise time series with the previous layer’s output, a list of transfer entropy matrix. We also identify the correlation level between variables in this layer. In the last layer, we build a weighted adjacency matrix, the value of each entry representing the correlation level between pairwise variables, and then get the weighted directed association network. Three sets of numerical simulated data from a linear system, a nonlinear system and a coupled Rossler system are used to show how the proposed approach works. Finally, we apply SSSTES to a real industrial system and get a better result than with two other methods.
机译:复杂的网络方法对于复杂的系统探索非常有用。但是,复杂系统中变量之间的关系通常不清楚。因此,从变量的观测数据中推断变量之间的关联网络已成为热门的研究主题。我们提出了一种名为小混洗符号传递熵谱(SSSTES)的方法,用于从多元时间序列中推断关联网络。该方法可以解决推断关联网络的四个问题,即强相关性识别,相关性量化,方向识别和时间关系识别。该方法可以分为四层。第一层是所谓的数据层。数据输入和处理是在此层中要做的事情。在第二层中,我们对上一层中的模型数据,原始数据和混洗数据进行符号化,并为每对时间序列变量计算具有不同时滞的循环传递熵。第三,我们将成对时间序列的传递熵谱与上一层的输出(传递熵矩阵的列表)组成。我们还在此层中确定变量之间的相关性级别。在最后一层,我们建立一个加权邻接矩阵,每个条目的值代表成对变量之间的相关程度,然后得到加权有向关联网络。来自线性系统,非线性系统和耦合Rossler系统的三组数值模拟数据用于说明所提出的方法如何工作。最后,我们将SSSTES应用于实际的工业系统,并获得比其他两种方法更好的结果。

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