High Dimensional Factor Analysis with Weak Factors
Jungjun Choi, Ming Yuan

TL;DR
This paper demonstrates that the principal components estimator remains consistent and asymptotically normal for high-dimensional factor models with weak factors, extending understanding beyond the strong factor case.
Contribution
It establishes the statistical properties of the PC estimator for weak factors with sublinear loadings, filling a gap in the existing literature.
Findings
PC estimator is consistent for any $oldsymbol{ ext{alpha}} ext{ in }(0,1)$.
Asymptotic normality holds under suitable dependence conditions.
Results extend the theory to weaker factors than previously analyzed.
Abstract
This paper studies the principal components (PC) estimator for high dimensional approximate factor models with weak factors in that the factor loading () scales sublinearly in the number of cross-section units, i.e., is positive definite in the limit for some . While the consistency and asymptotic normality of these estimates are by now well known when the factors are strong, i.e., , the statistical properties for weak factors remain less explored. Here, we show that the PC estimator maintains consistency and asymptotical normality for any , provided suitable conditions regarding the dependence structure in the noise are met. This complements earlier result by Onatski (2012) that the PC estimator is inconsistent when , and the more recent…
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Taxonomy
TopicsFace and Expression Recognition
