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An evaluation of bootstrap methods for outlier detection in least squares regression
Authors:Michael A Martin  Steven Roberts
Institution:  a Australian National University, Canberra, Australia
Abstract:Outlier detection is a critical part of data analysis, and the use of Studentized residuals from regression models fit using least squares is a very common approach to identifying discordant observations in linear regression problems. In this paper we propose a bootstrap approach to constructing critical points for use in outlier detection in the context of least-squares Studentized residuals, and find that this approach allows naturally for mild departures in model assumptions such as non-Normal error distributions. We illustrate our methodology through both a real data example and simulated data.
Keywords:Case-based resampling  error distribution  externally Studentized residuals  internally Studentized residuals  jackknife-after-bootstrap  residual-based resampling  RSTUDENT
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