I'm hungry for more.
With I(1) regression we have:
Q: When will regressions with I(1) variables not produce spurious results?
A: When the variables are not only integrated but also cointegrated.
What is the analog here, with PCA? That is:
Q: When will PCA with high-dim I(1) variables not produce spurious results?
A: ??? (I'm not yet sure. Maybe it's addressed in the paper, which I look forward to reading. Cointegration should again be part of the answer (maybe all of the answer?), as cointegration implies factor structure.)
By: | Onatski, A.; Wang, C. |
Abstract: | This paper draws parallels between the Principal Components Analysis of factorless high-dimensional nonstationary data and the classical spurious regression. We show that a few of the principal components of such data absorb nearly all the data variation. The corresponding scree plot suggests that the data contain a few factors, which is collaborated by the standard panel information criteria. Furthermore, the Dickey-Fuller tests of the unit root hypothesis applied to the estimated “idiosyncratic terms” often reject, creating an impression that a few factors are responsible for most of the non-stationarity in the data. We warn empirical researchers of these peculiar effects and suggest to always compare the analysis in levels with that in differences. |
Keywords: | Spurious regression, principal components, factor models, Karhunen-Loève expansion. |
Date: | 2020–01–13 |
URL: | http://d.repec.org/n?u=RePEc:cam:camdae:2003&r=ecm |
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