Janczewski Aleksander, Anagnostou Ioannis, Kandhai Drona
Computational Science Lab, University of Amsterdam, Science Park 904, 1098 XH Amsterdam, The Netherlands.
Quantitative Analytics, Financial Markets, ING Bank, Foppingadreef 7, 1102 BD Amsterdam, The Netherlands.
Entropy (Basel). 2024 Aug 29;26(9):738. doi: 10.3390/e26090738.
The foreign exchange (FX) market has evolved into a complex system where locally generated information percolates through the dealer network via high-frequency interactions. Information related to major events, such as economic announcements, spreads rapidly through this network, potentially inducing volatility, liquidity disruptions, and contagion effects across financial markets. Yet, research on the mechanics of information flows in the FX market is limited. In this paper, we introduce a novel approach employing conditional transfer entropy to construct networks of information flows. Leveraging a unique, high-resolution dataset of bid and ask prices, we investigate the impact of an announcement by the European Central Bank on the information transfer within the market. During the announcement, we identify key dealers as information sources, conduits, and sinks, and, through comparison to a baseline, uncover shifts in the network topology.
外汇(FX)市场已演变成一个复杂的系统,本地生成的信息通过高频互动在交易商网络中渗透。与重大事件相关的信息,如经济数据公布,会在这个网络中迅速传播,可能引发金融市场的波动、流动性中断和传染效应。然而,对外汇市场信息流机制的研究却很有限。在本文中,我们引入了一种新颖的方法,利用条件转移熵来构建信息流网络。借助一个独特的、高分辨率的买卖报价数据集,我们研究了欧洲央行的一项公告对市场内信息传递的影响。在公告期间,我们将关键交易商识别为信息源、传导渠道和信息汇聚点,并通过与基线进行比较,揭示网络拓扑结构的变化。