The PIT-trap-A "model-free" bootstrap procedure for inference about regression models with discrete, multivariate responses.

PLoS One

Institute of Computational and Theoretical Studies, Department of Computer Science, Hong Kong Baptist University, Hong Kong SAR, China.

Published: September 2017

AI Article Synopsis

  • Bootstrapping of residuals in regression can face challenges when residuals are not identically distributed, especially in logistic or Poisson regression settings.
  • A new method called the PIT-trap has been proposed, using probability integral transform (PIT) residuals, which assume a known parametric form for the data's marginal distribution.
  • This method maintains correlation in multivariate data without requiring a model and shows improved performance in simulations compared to traditional resampling techniques.

Article Abstract

Bootstrap methods are widely used in statistics, and bootstrapping of residuals can be especially useful in the regression context. However, difficulties are encountered extending residual resampling to regression settings where residuals are not identically distributed (thus not amenable to bootstrapping)-common examples including logistic or Poisson regression and generalizations to handle clustered or multivariate data, such as generalised estimating equations. We propose a bootstrap method based on probability integral transform (PIT-) residuals, which we call the PIT-trap, which assumes data come from some marginal distribution F of known parametric form. This method can be understood as a type of "model-free bootstrap", adapted to the problem of discrete and highly multivariate data. PIT-residuals have the key property that they are (asymptotically) pivotal. The PIT-trap thus inherits the key property, not afforded by any other residual resampling approach, that the marginal distribution of data can be preserved under PIT-trapping. This in turn enables the derivation of some standard bootstrap properties, including second-order correctness of pivotal PIT-trap test statistics. In multivariate data, bootstrapping rows of PIT-residuals affords the property that it preserves correlation in data without the need for it to be modelled, a key point of difference as compared to a parametric bootstrap. The proposed method is illustrated on an example involving multivariate abundance data in ecology, and demonstrated via simulation to have improved properties as compared to competing resampling methods.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC5524334PMC
http://journals.plos.org/plosone/article?id=10.1371/journal.pone.0181790PLOS

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