FNETS: Factor-Adjusted Network Estimation and Forecasting for High-Dimensional Time Series

被引:5
|
作者
Barigozzi, Matteo [1 ]
Cho, Haeran [2 ]
Owens, Dom [2 ]
机构
[1] Univ Bologna, Dept Econ, Bologna, Italy
[2] Univ Bristol, Sch Math, Bristol, England
关键词
Dynamic factor model; Forecasting; Network estimation; Vector autoregression; DYNAMIC-FACTOR MODEL; PRINCIPAL COMPONENTS; NUMBER; LASSO; CONNECTEDNESS; COVARIANCE; GUARANTEES; SELECTION;
D O I
10.1080/07350015.2023.2257270
中图分类号
F [经济];
学科分类号
02 ;
摘要
We propose FNETS, a methodology for network estimation and forecasting of high-dimensional time series exhibiting strong serial- and cross-sectional correlations. We operate under a factor-adjusted vector autoregressive (VAR) model which, after accounting for pervasive co-movements of the variables by common factors, models the remaining idiosyncratic dynamic dependence between the variables as a sparse VAR process. Network estimation of FNETS consists of three steps: (i) factor-adjustment via dynamic principal component analysis, (ii) estimation of the latent VAR process via l1-regularized Yule-Walker estimator, and (iii) estimation of partial correlation and long-run partial correlation matrices. In doing so, we learn three networks underpinning the VAR process, namely a directed network representing the Granger causal linkages between the variables, an undirected one embedding their contemporaneous relationships and finally, an undirected network that summarizes both lead-lag and contemporaneous linkages. In addition, FNETS provides a suite of methods for forecasting the factor-driven and the idiosyncratic VAR processes. Under general conditions permitting tails heavier than the Gaussian one, we derive uniform consistency rates for the estimators in both network estimation and forecasting, which hold as the dimension of the panel and the sample size diverge. Simulation studies and real data application confirm the good performance of FNETS.
引用
收藏
页码:890 / 902
页数:13
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