论文标题
尾巴格兰杰因果关系以及在哪里找到它们:极端风险溢出与虚假联系
Tail Granger causalities and where to find them: extreme risk spillovers vs. spurious linkages
论文作者
论文摘要
确定金融市场中的风险溢出对于评估系统性风险和投资组合管理非常重要。尾巴(或处于风险)中的Granger因果关系测试了时间序列的过去极端事件是否有助于预测另一个时间序列的未来极端事件。用Granger因果关系在尾部建立的网络的拓扑和连接性可用于衡量系统性风险和识别风险发射机。在这里,我们介绍了尾巴中Granger因果关系的新测试,该测试采用了似然比统计量,并基于对二进制时间序列的离散自回归过程的多元概括,描述了基本价格动态的极端事件的顺序。所提出的测试在有限样本中具有非常好的尺寸和功率,尤其是对于大型样本量,可以推断出发生因果相互作用的正确时间尺度,并且在考虑两个以上时间序列的情况下,它足够灵活,足以使多变量扩展为多变量扩展。一项广泛的模拟研究表明,该方法具有各种数据生成过程的性能,并且还引入了与[Hong等,2009] Tail的Granger因果关系测试的比较。我们报告了不同方法的优势和缺点,指出了一些与Granger因果关系有关尾巴事件的错误发现有关的关键方面。美国股票投资组合的高频数据的经验应用突出了我们新方法的优点。
Identifying risk spillovers in financial markets is of great importance for assessing systemic risk and portfolio management. Granger causality in tail (or in risk) tests whether past extreme events of a time series help predicting future extreme events of another time series. The topology and connectedness of networks built with Granger causality in tail can be used to measure systemic risk and to identify risk transmitters. Here we introduce a novel test of Granger causality in tail which adopts the likelihood ratio statistic and is based on the multivariate generalization of a discrete autoregressive process for binary time series describing the sequence of extreme events of the underlying price dynamics. The proposed test has very good size and power in finite samples, especially for large sample size, allows inferring the correct time scale at which the causal interaction takes place, and it is flexible enough for multivariate extension when more than two time series are considered in order to decrease false detections as spurious effect of neglected variables. An extensive simulation study shows the performances of the proposed method with a large variety of data generating processes and it introduces also the comparison with the test of Granger causality in tail by [Hong et al., 2009]. We report both advantages and drawbacks of the different approaches, pointing out some crucial aspects related to the false detections of Granger causality for tail events. An empirical application to high frequency data of a portfolio of US stocks highlights the merits of our novel approach.