English

A diagnostic criterion for approximate factor structure

Statistical Finance 2017-08-08 v2 Methodology

Abstract

We build a simple diagnostic criterion for approximate factor structure in large cross-sectional equity datasets. Given a model for asset returns with observable factors, the criterion checks whether the error terms are weakly cross-sectionally correlated or share at least one unobservable common factor. It only requires computing the largest eigenvalue of the empirical cross-sectional covariance matrix of the residuals of a large unbalanced panel. A general version of this criterion allows us to determine the number of omitted common factors. The panel data model accommodates both time-invariant and time-varying factor structures. The theory applies to random coefficient panel models with interactive fixed effects under large cross-section and time-series dimensions. The empirical analysis runs on monthly and quarterly returns for about ten thousand US stocks from January 1968 to December 2011 for several time-invariant and time-varying specifications. For monthly returns, we can choose either among time-invariant specifications with at least four financial factors, or a scaled three-factor specification. For quarterly returns, we cannot select macroeconomic models without the market factor.

Keywords

Cite

@article{arxiv.1612.04990,
  title  = {A diagnostic criterion for approximate factor structure},
  author = {Patrick Gagliardini and Elisa Ossola and Olivier Scaillet},
  journal= {arXiv preprint arXiv:1612.04990},
  year   = {2017}
}
R2 v1 2026-06-22T17:24:34.055Z