Dynamic Large Spatial Covariance Matrix Estimation in Application to Semiparametric Model Construction via Variable Clustering: the SCE approach
Song Song

TL;DR
This paper introduces the SCE approach for estimating large spatial covariance matrices and constructing semiparametric models using variable clustering, with applications to economic and financial time series analysis.
Contribution
It develops a novel method combining covariance estimation, variable screening, clustering, and semiparametric modeling for high-dimensional spatial data.
Findings
Effective covariance matrix estimation under dependence conditions
Successful variable clustering and model construction in financial data
Demonstrated superiority over linear models in CPI estimation
Abstract
To better understand the spatial structure of large panels of economic and financial time series and provide a guideline for constructing semiparametric models, this paper first considers estimating a large spatial covariance matrix of the generalized -dependent and -mixing time series (with variables and observations) by hard thresholding regularization as long as (the former scheme with some time dependence measure ) or (the latter scheme with some upper bounded mixing coefficient). We quantify the interplay between the estimators' consistency rate and the time dependence level, discuss an intuitive resampling scheme for threshold selection, and also prove a general cross-validation result justifying this. Given a consistently estimated covariance (correlation) matrix, by utilizing its natural…
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Taxonomy
TopicsSpatial and Panel Data Analysis · Statistical Methods and Inference · Statistical Methods and Bayesian Inference
