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Cross-sectional Learning of Extremal Dependence among Financial Assets

机译:金融资产极值依赖的横断面学习

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We propose a novel probabilistic model to facilitate the learning of multivariate tail dependence of multiple financial assets. Our method allows one to construct from known random vectors, e.g., standard normal, sophisticated joint heavy-tailed random vectors featuring not only distinct marginal tail heaviness, but also flexible tail dependence structure. The novelty lies in that pairwise tail dependence between any two dimensions is modeled separately from their correlation, and can vary respectively according to its own parameter rather than the correlation parameter, which is an essential advantage over many commonly used methods such as multivariate t or elliptical distribution. It is also intuitive to interpret, easy to track, and simple to sample comparing to the copula approach. We show its flexible tail dependence structure through simulation. Coupled with a GARCH model to eliminate serial dependence of each individual asset return series, we use this novel method to model and forecast multivariate conditional distribution of stock returns, and obtain notable performance improvements in multi-dimensional coverage tests. Besides, our empirical finding about the asymmetry of tails of the idiosyncratic component as well as the market component is interesting and worth to be well studied in the future.
机译:我们提出了一种新颖的概率模型,以促进多元金融资产的多元尾依赖性的学习。我们的方法允许人们从已知的随机载体构建,例如,标准正常,复杂的关节重尾随机载体,不仅具有不同的边际尾部沉重,而且具有柔性尾依赖性结构。新颖性在于任何两个维度之间的成对尾部依赖性与它们的相关性分开建模,并且可以根据其自己的参数而不是相关参数来改变,这是许多常用方法(例如多变量T或椭圆形)的基本优势分配。解释,易于追踪,简单地进行样本也是直观的,与Copula方法相比。我们通过仿真显示其灵活的尾依赖性结构。再加上GARCH模型来消除每个各自的资产返回系列的串行依赖性,我们使用这种新方法来模拟和预测多元条件分布的库存回报,并获得多维覆盖测试中的显着性能改进。此外,我们对未来的特质部件尾部的不对称的实证发现,并在未来很有趣,值得进度。

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