Modeling High-Dimensional Time Series: A Factor Model with Dynamically Dependent Factors and Diverging Eigenvalues
Zhaoxing Gao, Ruey S. Tsay

TL;DR
This paper introduces a novel high-dimensional time series model with dynamically dependent factors and diverging eigenvalues, along with a PCA-based method for factor extraction and white noise testing.
Contribution
It proposes a new factor model capturing all non-trivial dynamics, accounting for diverging eigenvalues, and develops a white noise testing procedure and projected PCA for high-dimensional data.
Findings
The method accurately determines the number of factors in high-dimensional settings.
It effectively eliminates diverging effects of idiosyncratic noise.
The approach outperforms existing methods in forecasting and interpretability.
Abstract
This article proposes a new approach to modeling high-dimensional time series by treating a -dimensional time series as a nonsingular linear transformation of certain common factors and idiosyncratic components. Unlike the approximate factor models, we assume that the factors capture all the non-trivial dynamics of the data, but the cross-sectional dependence may be explained by both the factors and the idiosyncratic components. Under the proposed model, (a) the factor process is dynamically dependent and the idiosyncratic component is a white noise process, and (b) the largest eigenvalues of the covariance matrix of the idiosyncratic components may diverge to infinity as the dimension increases. We propose a white noise testing procedure for high-dimensional time series to determine the number of white noise components and, hence, the number of common factors, and introduce a…
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