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A Mixture Model for Filtering Firms' Profit Rates

Scharfenaker, Ellis; Semieniuk, Gregor

Authors

Ellis Scharfenaker

Gregor Semieniuk



Contributors

Sylvia Frühwirth-Schnatter
Editor

Angela Bitto
Editor

Gregor Kastner
Editor

Alexandra Posekany
Editor

Abstract

Existing methods for sample selection from noisy profit rate data in the industrial organization field of economics tend to be conditional on a covariate’s value that risks discarding valuable information. We condition sample selection on the profit rate data’s structure instead by means of a Bayesian mixture model. In a two component (signal and noise) mixture that reflects the prior belief of noisy data, each firm profit rate observation is assigned an indicator latent variable. Gibbs sampling determines the latent variables’ posterior densities, sorting profit rate observations to the signal or noise component. We apply two model specifications to empirical profit rate cross sections, one with a Normal and one with a Laplace signal component. We find the Laplace specification to have a superior fit based on the Bayes factor and the profit rate sample to be time stationary Laplace distributed, corroborating earlier estimates of cross section distributions. Our model retains 97%, as opposed to as little as 20%, of the raw data in a previous application

Citation

Scharfenaker, E., & Semieniuk, G. (2015). A Mixture Model for Filtering Firms' Profit Rates. In S. Frühwirth-Schnatter, A. Bitto, G. Kastner, & A. Posekany (Eds.), Bayesian Statistics from Methods to Models and Applications (153-164). Springer Nature. https://doi.org/10.1007/978-3-319-16238-6_14

Publication Date Jan 1, 2015
Deposit Date Oct 22, 2016
Publicly Available Date Jan 2, 2115
Pages 153-164
Series Title Springer Proceedings in Mathematics and Statistics
Series Number 126
Book Title Bayesian Statistics from Methods to Models and Applications
ISBN 9783319162379
DOI https://doi.org/10.1007/978-3-319-16238-6_14
Keywords mixture model, sample selection, Laplace distribution, profit rates, Gibbs sampler
Publisher URL http://dx.doi.org/10.1007/978-3-319-16238-6_14

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