时变一般动态因子模型与金融连通性测度

M. Barigozzi, M. Hallin, Stefano Soccorsi, R. von Sachs
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引用次数: 34

摘要

与崩溃、系统性风险和传染相关的金融市场的连锁反应具有重要的领先-滞后动态特征,这对于理解危机如何传播至关重要,因此是风险管理的核心。本着Diebold和Yilmaz(2014)的精神,我们通过分析涉及网络理论方法的调整后的日内对数范围对市场冲击的脉冲响应函数来研究金融公司之间的连通性。有大量证据表明,金融市场的相互依赖结构随着时间的推移而变化,因此我们基于Eichler等人(2011)提出的所谓的时变通用动态因素模型进行分析,该模型将Forni等人(2000)在平稳性假设下开发的框架扩展到局部平稳的背景下。然而,Eichler等人(2011)的估计方法存在涉及双面滤波器的主要缺点,这使得无法恢复脉冲响应函数。因此,我们引入了一种新的方法,将其扩展到时变背景下,即Forni等人(2017)的片面方法。结果表明,时变脉冲响应函数的估计量是一致的,因此可以用于(时变)连通性的分析。我们对美国股票日内价格区间的一个大型且变动剧烈的面板进行的实证分析表明,中长期连通性的大幅增加与主要的金融动荡有关。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Time-Varying General Dynamic Factor Models and the Measurement of Financial Connectedness
Ripple effects in financial markets associated with crashes, systemic risk and contagion are characterized by non-trivial lead-lag dynamics which is crucial for understanding how crises spread and, therefore, central in risk management. In the spirit of Diebold and Yilmaz (2014), we investigate connectedness among financial firms via an analysis of impulse response functions of adjusted intraday log-ranges to market shocks involving network theory methods. Motivated by overwhelming evidence that the interdependence structure of financial markets is varying over time, we are basing that analysis on the so-called time-varying General Dynamic Factor Model proposed by Eichler et al. (2011), which extends to the locally stationary context the framework developed by Forni et al. (2000) under stationarity assumptions. The estimation methods in Eichler et al. (2011), however, present the major drawback of involving two-sided filters which make it impossible to recover impulse response functions. We therefore introduce a novel approach extending to the time-varying context the one-sided method of Forni et al. (2017). The resulting estimators of time-varying impulse response functions are shown to be consistent, hence can be used in the analysis of (time-varying) connectedness. Our empirical analysis on a large and strongly comoving panel of intraday price ranges of US stocks indicates that large increases in mid to long-run connectedness are associated with the main financial turmoils.
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