Analysis of multivariate time series is a common problem in areas like finance and economics. The classical tool for this purpose are vector autoregressive models. These however are limited to the modeling of linear and symmetric dependence. We propose a novel copula-based model which allows for non-linear and asymmetric modeling of serial as well as between-series dependencies. The model exploits the flexibility of vine copulas which are built up by bivariate copulas only. We describe statistical inference techniques for the new model and demonstrate its usefulness in three relevant applications: We analyze time series of macroeconomic indicators, of electricity load demands and of bond portfolio returns.
翻译:多变时间序列分析是金融和经济学等领域的一个常见问题。这方面的典型工具是矢量自递模型,但仅限于线性和对称依赖性模型。我们提议采用新的千叶基模型,允许对序列以及系列依赖性进行非线性和不对称的模型。该模型利用了仅由双变相组合组成的藤条的弹性。我们描述了新模型的统计推论技术,并在三个相关应用中证明了其有用性:我们分析了宏观经济指标、电力负荷需求和债券组合回报的时间序列。