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股价趋势动态中相互激发结构的检测

Detection of Mutual Exciting Structure in Stock Price Trend Dynamics.

作者信息

Li Shangzhe, Jiang Xin, Wu Junran, Tong Lin, Xu Ke

机构信息

School of Mathematical Science and LMIB, Beihang University, Beijing 100191, China.

School of Computer Science and Engineering and NLSDE, Beihang University, Beijing 100191, China.

出版信息

Entropy (Basel). 2021 Oct 27;23(11):1411. doi: 10.3390/e23111411.

Abstract

We investigated a comprehensive analysis of the mutual exciting mechanism for the dynamic of stock price trends. A multi-dimensional Hawkes-model-based approach was proposed to capture the mutual exciting activities, which take the form of point processes induced by dual moving average crossovers. We first performed statistical measurements for the crossover event sequence, introducing the distribution of the inter-event times of dual moving average crossovers and the correlations of local variation (LV), which is often used in spike train analysis. It was demonstrated that the crossover dynamics in most stock sectors are generally more regular than a standard Poisson process, and the correlation between variations is ubiquitous. In this sense, the proposed model allowed us to identify some asymmetric cross-excitations, and a mutually exciting structure of stock sectors could be characterized by mutual excitation correlations obtained from the kernel matrix of our model. Using simulations, we were able to substantiate that a burst of the dual moving average crossovers in one sector increases the intensity of burst both in the same sector (self-excitation) as well as in other sectors (cross-excitation), generating episodes of highly clustered burst across the market. Furthermore, based on our finding, an algorithmic pair trading strategy was developed and backtesting results on real market data showed that the mutual excitation mechanism might be profitable for stock trading.

摘要

我们对股价趋势动态的相互激励机制进行了全面分析。提出了一种基于多维霍克斯模型的方法来捕捉相互激励活动,这些活动采取由双移动平均线交叉引发的点过程的形式。我们首先对交叉事件序列进行统计测量,引入双移动平均线交叉的事件间隔时间分布以及局部变化(LV)的相关性,LV常用于尖峰序列分析。结果表明,大多数股票板块中的交叉动态通常比标准泊松过程更具规律性,并且变化之间的相关性普遍存在。从这个意义上说,所提出的模型使我们能够识别一些不对称的交叉激励,并且股票板块的相互激励结构可以通过从我们模型的核矩阵中获得的相互激励相关性来表征。通过模拟,我们能够证实一个板块中双移动平均线交叉的爆发会增加同一板块(自激励)以及其他板块(交叉激励)的爆发强度,从而在整个市场产生高度聚集的爆发事件。此外,基于我们的发现,开发了一种算法配对交易策略,对真实市场数据的回测结果表明,相互激励机制可能对股票交易有利可图。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/cb29/8625259/4c20a69bf6e1/entropy-23-01411-g001.jpg

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