The size– biased version of Poisson–Lindley distribution (SBPLD) proposed by Sankaran1 has been introduced by Ghitany and Mutairi2 and is defined by its probability mass function (pmf)
Shanker et al.3 have proposed a simple method of deriving moments of SBPLD and the applications of SBPLD to model thunderstorms events. The Poisson –Lindley distribution (PLD), a Poisson mixture of Lindley distribution of Lindley,4 is defined by its pmf
The Lindley distribution is defined by its probability density function (pdf)
; x > 0,
> 0
The size–biased quasi Poisson–Lindley distribution (SBQPLD), size–biased version of quasi Poisson–Lindley distribution (QPLD) of Shanker and Mishra,5 suggested by Shanker and Mishra6 with parameters
and
is defined by its pmf
The QPLD, a Poisson mixture of quasi Lindley distribution proposed by Shanker and Mishra,7 is defined by its pmf
The QLD is defined by its pdf
Shanker and Amanuel8 proposed a new quasi Lindley distribution (NQLD) having pdf
where
for
. Lindley distribution is a particular case of NQLD at
. A new quasi Poisson–Lindley distribution (NQPLD), a Poisson mixture of NQLD, has been suggested by Shanker and Tekie9 and defined by its pmf
where
for
.
It can be seen that the PLD is a particular case of it at
. Shanker et al.10 derived the pmf of size biased new quasi Poisson–Lindley distribution (SBNQPLD) having pmf
Shanker et al.10 discussed various statistical properties, parameters estimation and applications of SBNQPLD. Shanker et al.10 have shown that SBNQPLD can also be obtained from the size–biased Poisson distribution when its parameter
follows a SBNQLD with pdf
where
for
. That is
The
th factorial moment about origin
of SBNQPLD obtained by Shanker et al.10 as
Thus, the first four moments about origin obtained by Shanker et al.10 are
.
It has been observed that the central moments (moments about the mean) has not been given by et al.10 and hence many important characteristics including coefficient of variation, skewness, kurtosis and index of dispersion of SBNQPLD has not been studied by Shanker et al.10
The main purpose of this paper is to derive expressions for coefficients of variation, skewness, kurtosis and index of dispersion of SBNQPLD and study their behaviour graphically. The goodness of fit of the distribution has been presented with a number of count datasets using maximum likelihood estimates from various fields of knowledge.
Using the relationship between moments about the mean and the moments about the origin, the moments about mean of SBNQPLD can be obtained as
.
The coefficient of variation (C.V), coefficient of Skewness
, coefficient of Kurtosis
and Index of dispersion
of SBNQPLD are obtained as
.
Shapes of coefficient of variation, skewness, kurtosis and index of dispersion of SBNQPLD for varying values of parameters have been shown in figure 1.
Suppose
as random samples of size n from the SBNQPLD and
, the observed frequency in the sample corresponding to
such that
, where
being the largest observed value having non–zero frequency. The log likelihood function of SBNQPLD can be presented as
The two log likelihood equations are thus obtained as
.
These two log likelihood equations seems difficult to solve directly as these cannot be expressed in closed forms. The (MLE’s)
of parameters
can be computed directly by solving the log likelihood equation using Newton–Raphson iteration available in R–software till sufficiently close values of
are obtained. The initial values of parameters θ and α are the MOME
of the parameters
, given in Shanker et al.10