Recently, high dimensional vector auto-regressive models (VAR), have attracted a lot of interest, due to novel applications in the health, engineering and social sciences. The presence of temporal dependence poses additional challenges to the theory of penalized estimation techniques widely used in the analysis of their iid counterparts. However, recent work (e.g., [Basu and Michailidis, 2015, Kock and Callot, 2015]) has established optimal consistency of $\ell_1$-LASSO regularized estimates applied to models involving high dimensional stable, Gaussian processes. The only price paid for temporal dependence is an extra multiplicative factor that equals 1 for independent and identically distributed (iid) data. Further, [Wong et al., 2020] extended these results to heavy tailed VARs that exhibit "$\beta$-mixing" dependence, but the rates rates are sub-optimal, while the extra factor is intractable. This paper improves these results in two important directions: (i) We establish optimal consistency rates and corresponding finite sample bounds for the underlying model parameters that match those for iid data, modulo a price for temporal dependence, that is easy to interpret and equals 1 for iid data. (ii) We incorporate more general penalties in estimation (which are not decomposable unlike the $\ell_1$ norm) to induce general sparsity patterns. The key technical tool employed is a novel, easy-to-use concentration bound for heavy tailed linear processes, that do not rely on "mixing" notions and give tighter bounds.
翻译:最近,高维矢量自动递减模型(VAR)由于在卫生、工程和社会科学领域的新应用,吸引了许多人的兴趣。时间依赖性的存在给在分析其iid对应方时广泛使用的受罚估算技术理论带来了额外的挑战。然而,最近的工作(例如,[Basu和Michailidis,2015年,Kock和Callot,2015年])建立了适用于高维稳定、高斯进程等模型的美元-LASSO常规估算的最佳一致性。时间依赖性的唯一价格是一个额外倍增系数,对于独立和同样分布的(iid)数据来说,它等于1。此外,[Wong 等人,2020年]将这些结果扩大到显示“$\beta$-miladid mix,2015年]依赖性的重尾随尾的VARs,但税率是次最佳的,而额外因素则难以解决。本文在两个重要方向上改进了这些结果:(i)我们为最优化的一致的一致率和相应的有限样本框框框框框框,对于最容易的模型参数比(Idealalalalalalalalalal) 数据更难。