Title of article :
Accurate Inference for the Mean of the Poisson-Exponential Distribution
Author/Authors :
Lin, Wei Department of Mathematics and Statistics - Thompson Rivers University - 805 TRU Way - Kamloops - British Columbia - Canada , Li, Xiang Department of Mathematics and Statistics - York University - 4700 Keele Street - Toronto - Ontario, Canada , Wong, Augustine Department of Mathematics and Statistics - York University - 4700 Keele Street - Toronto - Ontario, Canada
Abstract :
Although the random sum distribution has been well-studied in probability
theory, inference for the mean of such distribution is very limited in the literature.
In this paper, two approaches are proposed to obtain inference for the mean of the
Poisson-Exponential distribution. Both proposed approaches require the log-likelihood
function of the Poisson-Exponential distribution, but the exact form of the log-likelihood
function is not available. An approximate form of the log-likelihood function is then
derived by the saddlepoint method. Inference for the mean of the Poisson-Exponential
distribution can either be obtained from the modified signed likelihood root statistic or
from the Bartlett corrected likelihood ratio statistic. The explicit form of the modified
signed likelihood root statistic is derived in this paper, and a systematic method to
numerically approximate the Bartlett correction factor, hence the Bartlett corrected
likelihood ratio statistic is proposed. Simulation studies show that both methods are
extremely accurate even when the sample size is small.
Keywords :
Saddlepoint Approximation , Bartlett Correction p-value Function , Signed
Journal title :
Journal of the Iranian Statistical Society (JIRSS)