Ceiling-Martel Hall

Dynamic Clustering of Multivariate Panel Data

Igor Custodio João, Vrije Universiteit Amsterdam

Project Description/Abstract

We propose a dynamic clustering model for uncovering latent time-varying group structures in multivariate panel data. The model is dynamic in three ways. First, the cluster location and scale matrices are time-varying to track gradual changes in cluster characteristics over time. Second, all units can transition between clusters based on a Hidden Markov model (HMM). Finally, the HMM’s transition matrix can depend on lagged time-varying cluster distances as well as economic covariates. Monte Carlo experiments suggest that the units can be classified reliably in a variety of challenging settings. Incorporating dynamics in the cluster composition proves empirically important in a study of 299 European banks between 2008Q1 and 2018Q2. We find that approximately 3% of banks transition per quarter on average. Transition probabilities are in part explained by differences in bank profitability, suggesting that low-interest rates can lead to long-lasting changes in financial industry structure.

Co-authors

André Lucas, Vrije Universiteit Amsterdam
Julia Schaumburg, Vrije Universiteit Amsterdam
Bernd Schwaab, European Central Bank, Financial Research

Video Presentation

Poster/Presentation PDF