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.
翻译:在金融市场中查明风险外溢对于评估系统性风险和投资组合管理非常重要。尾部(或风险中)的致因性在尾部(尾部或风险中)测试一个时间序列中过去的极端事件是否有助于预测另一个时间序列中的未来极端事件。与尾部中Garger因果关系建立的网络的地形和关联性可用于测量系统性风险和识别风险发源人。这里我们推出一个新颖的尾部致因因果因果性测试,采用可能性比率统计,并以描述基本价格动态极端事件序列的二进制自动递减性流程的多变性一般化为基础。提议的测试在定点样本中具有非常好的规模和力量,特别是大样本,可以推断因果关系相互作用发生的正确时间尺度,在考虑两个以上时间序列减少错觉性组合因果性,作为被忽略变量的刺激效应时,这种测试将具有巨大的数据生成流程,并且还介绍了对美国尾部致果性因果性因果性因果关系测试的对比,我们用一些新的、高频度测算方法得出了2009年高额。