research article
Accurate parametric inference for small samples
2008
We outline how modern likelihood theory, which provides essentially exact inferences in a variety of parametric statistical problems, may routinely be applied in practice. Although the likelihood procedures are based on analytical asymptotic approximations, the focus of this paper is not on theory but on implementation and applications. Numerical illustrations are given for logistic regression, nonlinear models, and linear non-normal models, and we describe a sampling approach for the third of these classes. In the case of logistic regression, we argue that approximations are often more appropriate than ‘exact’ procedures, even when these exist.
Type
research article
Web of Science ID
WOS:000267079300002
Author(s)
Brazzale, A. R.
Date Issued
2008
Published in
Volume
23
Issue
4
Start page
465
End page
484
URL
Editorial or Peer reviewed
REVIEWED
Written at
EPFL
EPFL units
Available on Infoscience
May 21, 2009
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