Title of article :
Profile likelihood-based confidence interval for the dispersion parameter in count data
Author/Authors :
Krishna K. Saha، نويسنده , , Debaraj Sen&Chun Jin، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2012
Abstract :
The importance of the dispersion parameter in counts occurring in toxicology, biology, clinical medicine,
epidemiology, and other similar studies is well known. A couple of procedures for the construction of
confidence intervals (CIs) of the dispersion parameter have been investigated, but little attention has been
paid to the accuracy of its CIs. In this paper, we introduce the profile likelihood (PL) approach and the
hybrid profile variance (HPV) approach for constructing the CIs of the dispersion parameter for counts based
on the negative binomial model. The non-parametric bootstrap (NPB) approach based on the maximum
likelihood (ML) estimates of the dispersion parameter is also considered.We then compare our proposed
approaches with an asymptotic approach based on the ML and the restricted ML (REML) estimates of the
dispersion parameter as well as the parametric bootstrap (PB) approach based on the ML estimates of the
dispersion parameter.As assessed by Monte Carlo simulations, the PL approach has the best small-sample
performance, followed by the REML, HPV, NPB, and PB approaches. Three examples to biological count
data are presented.
Keywords :
asymptotic confidence interval , Dispersion parameter , hybrid profile variance approach , profile likelihood approach , non-parametric bootstrap approach
Journal title :
JOURNAL OF APPLIED STATISTICS
Journal title :
JOURNAL OF APPLIED STATISTICS