Estimating the Number of Components in Panel Data Finite Mixture Regression Models with an Application to Production Function Heterogeneity
Yu Hao, Hiroyuki Kasahara

TL;DR
This paper introduces new statistical methods for accurately determining the number of components in panel data finite mixture regression models, addressing unique challenges posed by panel data structures and applying these methods to reveal heterogeneity in production functions.
Contribution
It develops a sequential testing procedure for consistent component number selection and analyzes the asymptotic properties of model selection criteria in panel data contexts.
Findings
Panel data structures eliminate higher-order degeneracy problems.
BIC is consistent for model selection, AIC is not.
Empirical analysis shows significant heterogeneity in production functions.
Abstract
This paper develops statistical methods for determining the number of components in panel data finite mixture regression models with regression errors independently distributed as normal or more flexible normal mixtures. We analyze the asymptotic properties of the likelihood ratio test (LRT) and information criteria (AIC and BIC) for model selection in both conditionally independent and dynamic panel settings. Unlike cross-sectional normal mixture models, we show that panel data structures eliminate higher-order degeneracy problems while retaining issues of unbounded likelihood and infinite Fisher information. Addressing these challenges, we derive the asymptotic null distribution of the LRT statistic as the maximum of random variables and develop a sequential testing procedure for consistent selection of the number of components. Our theoretical analysis also establishes the…
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Taxonomy
TopicsSpatial and Panel Data Analysis · Global trade and economics · Firm Innovation and Growth
