English

Limit Theorems for Factor Models

Econometrics 2023-06-22 v3 Statistics Theory Statistics Theory

Abstract

The paper establishes the central limit theorems and proposes how to perform valid inference in factor models. We consider a setting where many counties/regions/assets are observed for many time periods, and when estimation of a global parameter includes aggregation of a cross-section of heterogeneous micro-parameters estimated separately for each entity. The central limit theorem applies for quantities involving both cross-sectional and time series aggregation, as well as for quadratic forms in time-aggregated errors. The paper studies the conditions when one can consistently estimate the asymptotic variance, and proposes a bootstrap scheme for cases when one cannot. A small simulation study illustrates performance of the asymptotic and bootstrap procedures. The results are useful for making inferences in two-step estimation procedures related to factor models, as well as in other related contexts. Our treatment avoids structural modeling of cross-sectional dependence but imposes time-series independence.

Keywords

Cite

@article{arxiv.1807.06338,
  title  = {Limit Theorems for Factor Models},
  author = {Stanislav Anatolyev and Anna Mikusheva},
  journal= {arXiv preprint arXiv:1807.06338},
  year   = {2023}
}