High dimensional Vector Autoregressions (VAR) have received a lot of interest recently due to novel applications in health, engineering, finance and the social sciences. Three issues arise when analyzing VAR's: (a) The high dimensional nature of the model in the presence of many time series that poses challenges for consistent estimation of its parameters; (b) the presence of temporal dependence introduces additional challenges for theoretical analysis of various estimation procedures; (b) the presence of heavy tails in a number of applications. Recent work, e.g. [Basu and Michailidis, 2015],[Kock and Callot,2015], has addressed consistent estimation of sparse high dimensional, stable Gaussian VAR models based on an $\ell_1$ LASSO procedure. Further, the rates obtained are optimal, in the sense that they match those for iid data, plus a multiplicative factor (which is the "price" paid) for temporal dependence. However, the third issue remains unaddressed in extant literature. This paper extends existing results in the following important direction: it considers consistent estimation of the parameters of sparse high dimensional VAR models driven by heavy tailed homoscedastic or heteroskedastic noise processes (that do not possess all moments). A robust penalized approach (e.g., LASSO) is adopted for which optimal consistency rates and corresponding finite sample bounds for the underlying model parameters are obtain that match those for iid data, albeit paying a price for temporal dependence. The theoretical results are illustrated on VAR models and also on other popular time series models. Notably, the key technical tool used, is a single concentration bound for heavy tailed dependent processes.
翻译:由于在健康、工程、金融和社会科学方面的新应用,高维矢量自动递增(VAR)最近引起了许多兴趣。分析VAR的参数时,出现了三个问题:(a) 模型的高度性质,在许多时间序列中,对一致估计参数构成挑战;(b) 时间依赖性的存在给对各种估算程序的理论分析带来了额外的挑战;(b) 在许多应用中存在重尾部。最近的工作,例如[Basu和Michailidis,2015年],[Kock和Callot,2015年]已经解决了持续估算稀释的高维度、稳定的Gaussian VAR模型。此外,获得的费率是最佳的,因为它与各种估算数据相匹配,加上一个对时间依赖性的多复制因素(即“价格”)。然而,在现有的文献中,第三个问题仍未解决。本文还扩展了以下重要方向:它认为对高维维维值的深度、稳定的VAR模型的不断估算参数,对于使用的所有高维度的SOrental 直径直径可理解性数据,对于这些高维值的精确度的精确度直径直径直径直径。