自回归模型
数学
估计员
异方差
收敛速度
力矩(物理)
系列(地层学)
截断(统计)
极小极大
ARCH模型
趋同(经济学)
一致性(知识库)
应用数学
数学优化
计量经济学
统计
计算机科学
波动性(金融)
经济增长
频道(广播)
古生物学
计算机网络
经济
物理
几何学
经典力学
生物
摘要
High-dimensional time series data appear in many scientific areas in the current data-rich environment. Analysis of such data poses new challenges to data analysts because of not only the complicated dynamic dependence between the series, but also the existence of aberrant observations, such as missing values, contaminated observations, and heavy-tailed distributions. For high-dimensional vector autoregressive (VAR) models, we introduce a unified estimation procedure that is robust to model misspecification, heavy-tailed noise contamination, and conditional heteroscedasticity. The proposed methodology enjoys both statistical optimality and computational efficiency, and can handle many popular high-dimensional models, such as sparse, reduced-rank, banded, and network-structured VAR models. With proper regularization and data truncation, the estimation convergence rates are shown to be almost optimal in the minimax sense under a bounded (2+2ϵ)th moment condition. When ϵ≥1, the rates of convergence match those obtained under the sub-Gaussian assumption. Consistency of the proposed estimators is also established for some ϵ∈(0,1), with minimax optimal convergence rates associated with ϵ. The efficacy of the proposed estimation methods is demonstrated by simulation and a U.S. macroeconomic example.
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