利用高频交易数据学习金融网络

Data science in science Pub Date : 2023-01-01 Epub Date: 2023-02-28 DOI:10.1080/26941899.2023.2166624
Kara Karpman, Sumanta Basu, David Easley, Sanghee Kim
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引用次数: 0

摘要

金融网络通常是通过将标准时间序列分析应用于以低频率收集的基于价格的经济变量来估计的(例如,每日或每月的股票回报率或已实现的波动率)。这些网络用于风险监测和研究金融市场中的信息流动。高频日内贸易数据集可以通过利用高分辨率信息,为网络联系提供更多见解。然而,由于其异步性、非线性动力学和非平稳性,此类数据集带来了重大的建模挑战。为了应对这些挑战,我们使用随机森林来估计金融网络。我们网络中的边缘是通过使用一家公司的微观结构指标来预测另一家公司市场指标(已实现波动率或回报峰度)变化的迹象来确定的。我们首先调查了2007-09年美国金融危机之前网络连接的演变。我们发现,2007年的网络密度最高,与2006年的雷曼兄弟有着高度的连通性。对企业之间联系性质的第二次分析表明,大企业往往比小企业提供更好的预测能力,这一发现与市场微观结构文献中先前的工作在质量上一致。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning Financial Networks with High-frequency Trade Data.

Financial networks are typically estimated by applying standard time series analyses to price-based economic variables collected at low-frequency (e.g., daily or monthly stock returns or realized volatility). These networks are used for risk monitoring and for studying information flows in financial markets. High-frequency intraday trade data sets may provide additional insights into network linkages by leveraging high-resolution information. However, such data sets pose significant modeling challenges due to their asynchronous nature, complex dynamics, and nonstationarity. To tackle these challenges, we estimate financial networks using random forests, a state-of-the-art machine learning algorithm which offers excellent prediction accuracy without expensive hyperparameter optimization. The edges in our network are determined by using microstructure measures of one firm to forecast the sign of the change in a market measure such as the realized volatility of another firm. We first investigate the evolution of network connectivity in the period leading up to the U.S. financial crisis of 2007-09. We find that the networks have the highest density in 2007, with high degree connectivity associated with Lehman Brothers in 2006. A second analysis into the nature of linkages among firms suggests that larger firms tend to offer better predictive power than smaller firms, a finding qualitatively consistent with prior works in the market microstructure literature.

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