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Factor Extraction In Dynamic Factor Models: Kalman Filter Versus Principal Components (Foundations And Trends(R) In Econometrics)

Now Publishers
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9781638280965
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ISBN13:
9781638280965
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Factor Extraction in Dynamic Factor Models: Kalman Filter Versus Principal Components surveys the literature on factor extraction in the context of Dynamic Factor Models (DFMs) fitted to multivariate systems of economic and financial variables. Many of the most popular factor extraction procedures often used in empirical applications are based on either Principal Components (PC) or Kalman filter and smoothing (KFS) techniques. First, the authors show that the KFS factors are a weighted average of the contemporaneous information (PC factors) and the past information and that the weights of the latter are negligible unless the factors are closed to the non-stationarity boundary and/or their loadings are pretty small when compared with the variance-covariance matrix of the idiosyncratic components. Second, the authors survey how PC and KFS deal with several issues often faced in the context of extracting factors from real data systems. In particular, they describe PC and KFS procedures to deal with mixed frequencies and missing observations, structural breaks, non-stationarity, Markov-switching parameters or multi-level factor structures. In general, KFS is very flexible to deal with these issues.


  • | Author: Esther Ruiz, Pilar Poncela
  • | Publisher: Now Publishers
  • | Publication Date: Nov 30, 2022
  • | Number of Pages: 124 pages
  • | Language: English
  • | Binding: Paperback
  • | ISBN-10: 1638280967
  • | ISBN-13: 9781638280965
Author:
Esther Ruiz, Pilar Poncela
Publisher:
Now Publishers
Publication Date:
Nov 30, 2022
Number of pages:
124 pages
Language:
English
Binding:
Paperback
ISBN-10:
1638280967
ISBN-13:
9781638280965