2018年中美贸易战期间的高频股市订单转换:离散时间马尔可夫链分析

Salam Rabindrajit Luwang, Anish Rai, Md. Nurujjaman, Om Prakash, Chittaranjan Hens
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摘要

我们对高频股票市场订单交易数据进行统计分析,以了解订单转换动态。我们采用一阶-时间-同构离散-时间马尔可夫链模型,对 2018 年中美贸易战期间六个不同行业的股票订单序列进行了分析。订单序列的马尔可夫特性通过 Chi-squaret 检验得到了验证。我们使用最大似然估计法估计了序列的过渡概率矩阵。从这些矩阵的热图中,我们发现不同类型的交易者在高波动率日积极参与。在这些日子里,这些交易者下限价订单的主要目的是删除大部分订单以影响市场。添加和删除订单的高静态分布和低平均重现值支持了这些发现。此外,我们还发现了类似的频谱缺口和熵率值,这表明在贸易战期间,高波动率日和低波动率日都采用了类似的交易策略。在本研究考虑的所有行业中,我们发现金融和银行业经常出现完全执行订单的模式。这表明,银行股在贸易战期间具有弹性。因此,本研究有助于了解股市订单动态,并在极端宏观经济事件期间的高波动率日和低波动率日制定相应的交易策略。
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High-Frequency Stock Market Order Transitions during the US-China Trade War 2018: A Discrete-Time Markov Chain Analysis
Statistical analysis of high-frequency stock market order transaction data is conducted to understand order transition dynamics. We employ a first-order time-homogeneous discrete-time Markov chain model to the sequence of orders of stocks belonging to six different sectors during the USA-China trade war of 2018. The Markov property of the order sequence is validated by the Chi-square test. We estimate the transition probability matrix of the sequence using maximum likelihood estimation. From the heat-map of these matrices, we found the presence of active participation by different types of traders during high volatility days. On such days, these traders place limit orders primarily with the intention of deleting the majority of them to influence the market. These findings are supported by high stationary distribution and low mean recurrence values of add and delete orders. Further, we found similar spectral gap and entropy rate values, which indicates that similar trading strategies are employed on both high and low volatility days during the trade war. Among all the sectors considered in this study, we observe that there is a recurring pattern of full execution orders in Finance & Banking sector. This shows that the banking stocks are resilient during the trade war. Hence, this study may be useful in understanding stock market order dynamics and devise trading strategies accordingly on high and low volatility days during extreme macroeconomic events.
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