Citation
Hurairah, Ahmed Ali Omar
(2006)
Statistical Inference on the Modified Gumbel Distribution Parameters.
Doctoral thesis, Universiti Putra Malaysia.
Abstract
The work in this thesis is concerned with the progress and development of the
Gumbel distribution by the introduction of a new parameter namely, the shape
parameter. Generalization of the Gumbel distribution is established. The work is also
concerned with the investigation of the finite sample performance of asymptotic
inference procedures using the likelihood function based on the modified
distributions. The study includes investigating the adequacy of asymptotic inferential
procedures in small samples. The maximum likelihood estimator of the parameters of
modified distributions is not available in closed form. Thus a simulation study is
conducted to investigate the bias, asymptotic variance (ASV), finite sample variance
(FSV), and the mean square error (MSE) of the maximum likelihood estimator of the
parameters of the modified distribution. Exact testing hypothesis procedures for the
modified distribution are intractable. Therefore three standard large sample statistics
based on maximum likelihood estimator were considered, which are the likelihood
ratio, the Wald, and the Rao statistics. Their performances in finite samples in terms
of their sizes and powers are investigated and compared. Confidence intervals based on the likelihood ratio, the Wald, and the Rao statistics were studied. The
performances in terms of the attainment of the nominal error probability and
symmetry of lower and upper probabilities were investigated and compared.
The main findings of the simulation studies of the inference procedures for the
parameters of the modified Gumbel distribution indicate that the estimate of the
shape parameter is nearly unbiased, while estimates of the location and scale
parameters tend to be slightly biased for small sample size of the univariate
distribution, while for bivariate models, estimate of the scale and shape parameters
performance are satisfactory in terms of bias and variance in all the situations
considered.
In the hypothesis testing o f the m odified d istribution, the 1 ikelihood ratio statistic
appears to perform better than the Wald and the Rao statistics. Interval estimates for
the scale parameter based on Wald and Rao statistics are highly symmetric and tend
to be slightly anticonservative, while intervals based on the likelihood ratio statistics
are in general symmetric and attain the nominal error probability. For the shape
parameter, all intervals tend to be symmetric in the lower and upper error
probabilities.
Results of the simulations also indicate that the modified extreme value models can
contribute meaningfully in solving several problems of the environmental data,
particularly the air pollution data.
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