Working Paper

The Directional Identification Problem in Bayesian Factor Analysis: An Ex-Post Approach

Kiel Working Papers, 1799

Due to their well-known indeterminacies, factor models require identifying assumptions to guarantee unique parameter estimates. For Bayesian estimation, these identifying assumptions are usually implemented by imposing constraints on certain model parameters. This strategy, however, may result in posterior distributions with shapes that depend on the ordering of cross-sections in the data set. We propose an alternative approach, which relies on a sampler without the usual identifying constraints. Identification is reached ex-post based on a Procrustes transformation. Resulting posterior estimates are ordering invariant and show favorable properties with respect to convergence and statistical as well as numerical accuracy.

Authors

Christian Aßmann
Markus Pape

Info

Publication Date
JEL Classification
C11, C31, C38, C51, C52