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Characteristics of the transmission of autoregressive sub-patterns in financial time series

机译:金融时间序列中自回归子模式的传递特征

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摘要

There are many types of autoregressive patterns in financial time series, and they form a transmission process. Here, we define autoregressive patterns quantitatively through an econometrical regression model. We present a computational algorithm that sets the autoregressive patterns as nodes and transmissions between patterns as edges, and then converts the transmission process of autoregressive patterns in a time series into a network. We utilised daily Shanghai (securities) composite index time series to study the transmission characteristics of autoregressive patterns. We found statistically significant evidence that the financial market is not random and that there are similar characteristics between parts and whole time series. A few types of autoregressive sub-patterns and transmission patterns drive the oscillations of the financial market. A clustering effect on fluctuations appears in the transmission process, and certain non-major autoregressive sub-patterns have high media capabilities in the financial time series. Different stock indexes exhibit similar characteristics in the transmission of fluctuation information. This work not only proposes a distinctive perspective for analysing financial time series but also provides important information for investors.
机译:金融时间序列中有很多类型的自回归模式,它们构成了一个传递过程。在这里,我们通过计量经济学回归模型定量定义自回归模式。我们提出了一种计算算法,该算法将自回归模式设置为节点,并将模式之间的传输设置为边,然后将时间序列中的自回归模式的传输过程转换为网络。我们利用每日上海(证券)综合指数时间序列研究自回归模式的传递特征。我们发现具有统计学意义的证据表明金融市场不是随机的,并且部分时间序列和整个时间序列之间具有相似的特征。几种类型的自回归子模式和传输模式会驱动金融市场的振荡。在波动过程中会出现对波动的聚集效应,并且某些非主要自回归子模式在金融时间序列中具有较高的媒体功能。不同的股指在波动信息的传递中表现出相似的特征。这项工作不仅为分析财务时间序列提供了独特的视角,而且还为投资者提供了重要的信息。

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