PLoS ONE (Jan 2013)

Boosted beta regression.

  • Matthias Schmid,
  • Florian Wickler,
  • Kelly O Maloney,
  • Richard Mitchell,
  • Nora Fenske,
  • Andreas Mayr

DOI
https://doi.org/10.1371/journal.pone.0061623
Journal volume & issue
Vol. 8, no. 4
p. e61623

Abstract

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Regression analysis with a bounded outcome is a common problem in applied statistics. Typical examples include regression models for percentage outcomes and the analysis of ratings that are measured on a bounded scale. In this paper, we consider beta regression, which is a generalization of logit models to situations where the response is continuous on the interval (0,1). Consequently, beta regression is a convenient tool for analyzing percentage responses. The classical approach to fit a beta regression model is to use maximum likelihood estimation with subsequent AIC-based variable selection. As an alternative to this established - yet unstable - approach, we propose a new estimation technique called boosted beta regression. With boosted beta regression estimation and variable selection can be carried out simultaneously in a highly efficient way. Additionally, both the mean and the variance of a percentage response can be modeled using flexible nonlinear covariate effects. As a consequence, the new method accounts for common problems such as overdispersion and non-binomial variance structures.