Ignoring cross-correlated idiosyncratic components when extracting factors in dynamic factor models Articles uri icon

publication date

  • September 2023

volume

  • 230

International Standard Serial Number (ISSN)

  • 0165-1765

Electronic International Standard Serial Number (EISSN)

  • 1873-7374

abstract

  • In economics, Principal Components, its generalized version that takes into account heteroscedasticity, and Kalman filter and smoothing procedures are among the most popular procedures for factor extraction in the context of Dynamic Factor Models. This paper analyzes the consequences on point and interval factor estimation of using these procedures when the idiosyncratic components are wrongly assumed to be cross-sectionally uncorrelated. We show that not taking into account the presence of cross-sectional dependence increases the uncertainty of point estimates of the factors. Furthermore, the Mean Square Errors computed using the usual expressions based on asymptotic approximations, are underestimated and may lead to prediction intervals with extremely low coverages.

subjects

  • Statistics

keywords

  • em algorithm; kalman filter; principal components; state-space model