Research Article Volume 11 Issue 3
The Poisson-Adya distribution
Rama Shanker,1
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Kamlesh Kumar Shukla2
1Department of Statistics, Assam University, Silchar, Assam, India
2Department of Mathematics, Noida International University, Gautam Buddh Nagar, India
Correspondence: Rama Shanker, Department of Statistics, Assam University, Silchar, Assam, India
Received: July 20, 2022 | Published: August 17, 2022
Citation: Shanker R, Shukla KK. The Poisson-Adya distribution. Biom Biostat Int J. 2022;11(3):100-103. DOI: 10.15406/bbij.2022.11.00361
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Abstract
In this paper a Poisson mixture of Adya distribution called Poisson-Adya distribution has been suggested. The expressions of statistical constants including coefficients of variation, skewness, kurtosis and index of dispersion have been obtained and their behavior for varying values of parameter has been studied. It is observed that the obtained distribution is unimodal, has increasing hazard rate and over-dispersed. Maximum likelihood estimation and method of moment have been discussed for estimating parameter. Finally, the goodness of fit of the proposed distribution and its comparison with Poisson and Poisson-Lindley distributions has been given.
Keywords: Adya distribution, compounding, unimodality, over-dispersion, estimation, goodness of fit
Introduction
The Poisson distribution is a suitable distribution for data having equi-dispersion (mean equal to variance). But in real life situation, it has been observed that most of the datasets being stochastic in nature are either over-dispersed (variance greater than mean) or under-dispersed (variance less than mean). During recent decades an attempt has been made by different researchers to derive over-dispersed one parameter discrete distribution by compounding Poisson distribution with one parameter continuous lifetime distributions. A popular one parameter discrete distribution for over-dispersed (variance greater than the mean) is the Poisson-Lindley distribution (PLD) proposed by Sankaran1. PLD is a Poisson mixture of Lindley distribution introduced by Lindley2. Further, it has been observed that these one parameter discrete distributions are not suitable for some over-dispersed datasets from biological sciences due to their levels of over-dispersion. Shanker & Hagos3 have detailed discussion on applications of PLD for data arising from biological sciences, as the data from biological sciences are, in general, over-dispersed. It has been observed by Shanker & Hagos3 that in some biological science data PLD does not give better fit and hence there is a need for another over-dispersed discrete distribution is required.
Shanker, et al4 proposed a one parameter continuous lifetime distribution named Adya distribution, defined by its probability density function (pdf) and cumulative density function (cdf) given by
(1.1)
(1.2)
Shanker, et al4 derived Adya distribution as a convex combination of exponential
, gamma
and gamma
distributions with respective proportions
,
and
respectively. Its various statistical properties including moments and moments-based measures, hazard rate function, mean residual life function, stochastic ordering, deviations from the mean and the median, Bonferroni and Lorenz curves, and stress-strength reliability, estimation of parameter and applications are available in Shanker et al4.
In the present paper a Poisson mixture of Adya distribution has been derived and its statistical constants including coefficients of variation, skewess, kurtosis and index of dispersion have been studied. The Unimodality, increasing hazard rate and over-dispersion of the distribution have been explained. Estimation of parameter using method of moment and maximum likelihood has been discussed. Applications, goodness of fit and its comparison with other one parameter discrete distributions are presented.
Poisson-Adya distribution
Let
follows Poisson distribution with parameter
having pmf
Now suppose the parameter
follows Adya distribution with parameter
having pdf
Thus, the marginal pmf of
can be obtained as
(2.1)
(2.2)
We name this distribution as Poisson-Adya distribution. In the subsequent sections it has been shown that the pmf of Poisson-Adya distribution (PAD) is unimodal, has increasing hazard rate and over-dispersed. The nature of the pmf of PAD for varying values of parameter has been shown in the following figure1. As the value of parameter increases, the distribution becomes positively skewed and also it is becoming more over-dispersed (Figure 1).
Figure 1 pmf of PAD for varying values of parameter.
Statistical constants
Using (2.1),
the th factorial moment about origin,
, of PAD can be obtained as
.
Substituting
the first four factorial moment about origin, of PAD can be obtained as
,
,
.
The relationship between moments about origin and factorial moments about origin gives the following four moments about origin
Using the relationship between moments about mean and the moments about origin, moments about the mean are obtained as
.
Now, the descriptive measures of PAD including coefficient of variation (C.V), skewness, kurtosis and index of dispersion are obtained as
The nature of coefficients of variation, skewness, kurtosis and index of dispersion of PAD for varying values of parameter are shown in the following Figure 2. It is obvious that the coefficient of variation, skewness, kurtosis and index of dispersion are all increasing for increasing values of parameter (Figure 2).
Figure 2 Coefficients of variation, skewness, kurtosis and index of dispersion for varying values of parameter.
Statistical properties
Over-dispersion
We have
This shows that
and thus PAD is always over-dispersed distribution. Therefore, PAD can be used for discrete data sets which are over-dispersed in nature.
Increasing Hazard Rate and Unimodality
It can be easily shown that PAD has increasing hazard rate (IHR) and is unimodal. Since
is a decreasing function of
for a given
,
is log-concave. This implies that PAD has an increasing hazard rate and is unimodal. Grandell5 has detailed discussion about relationship between log-concavity, IHR and Unimodality of discrete distributions.
Parameter estimation
Method of moment estimate
Let
be a random sample of size
from PAD. Equating the first moment about origin to the corresponding sample moment, the MOME
of
is the solution of the following fifth degree polynomial equation
, where
is the sample mean.
This equation can be solved using Newton-Raphson method to get the estimate of the parameter.
Maximum Likelihood Estimate
Let be a random sample of size
from PAD and let
be the observed frequency in the sample corresponding to
such that
, where
is the largest observed value having non-zero frequency. The likelihood function
of PAD is given by
The log likelihood function is obtained as
The first derivative of the log likelihood function is given by
,
where
is the sample mean.
The maximum likelihood estimate (MLE),
of
is the solution of the equation
and is given by the solution of the non-linear equation
Since this log-likelihood equation cannot be expressed in closed form, it may be difficult to solve it by direct method. Therefore, the MLE of the parameter
can be computed iteratively by solving log-likelihood equation using Newton-Raphson iteration available in R-software, until sufficiently close values of the parameter
is obtained. The initial value of the parameter
can be taken as the value given by method of moment estimate.
Applications
In this section, the applications of PAD have been discussed for three count datasets which are over-dispersed. The goodness of fit of PAD has been compared with Poisson and PLD. The pmf of PLD is given by
The expected values given by Poisson, PLD and PAD are given in the table for ready comparison. It is very clear from the goodness of fit presented in tables 1, 2, and 3 that PAD provides a better fit over Poisson and PLD (Tables 1-3).
No. of errors per group |
Observed frequency |
Expected frequency |
|
|
PD |
PLD |
PAD |
0 |
35 |
27.4 |
33 |
33.1 |
1 |
11 |
21.5 |
15.3 |
15.2 |
2 |
8 |
8.4 |
6.8 |
6.7 |
3 |
4 |
2.2 |
2.9 |
2.8 |
4 |
2 |
0.5 |
2.0 |
2.9 |
Total |
60 |
60 |
60 |
60 |
ML estimate |
|
|
|
|
|
|
7.98 |
2.20 |
1.72 |
d.f. |
|
1 |
1 |
2 |
p-value |
|
0.0047 |
0.1380 |
0.4232 |
Table 1 Distribution of mistakes in copying groups of random digits, available in Kemp and Kemp6
No. of chromatid aberrations |
Observed frequency |
Expected frequency |
|
|
PD |
PLD |
PAD |
0 |
268 |
231.3 |
257 |
258.1 |
1 |
87 |
126.7 |
93.4 |
92.5 |
2 |
26 |
34.7 |
32.8 |
32.4 |
3 |
9 |
6.3 |
11.2 |
11.2 |
4 |
4 |
0.8 |
3.8 |
3.8 |
5 |
2 |
0.1 |
1.2 |
1.3 |
6 |
1 |
0.1 |
0.4 |
0.4 |
7+ |
3 |
0.1 |
0.2 |
0.4 |
Total |
400 |
400 |
400 |
400 |
ML estimate |
|
|
|
|
|
|
38.21 |
6.21 |
5.21 |
d.f. |
|
2 |
3 |
3 |
p-value |
|
0.0000 |
0.1018 |
0.1577 |
Table 2 Distribution of number of chromatid aberrations (0.2 g chinon 1, 24 hours), available in Loeschke & Kohler7 and Janardan & Schaeffer8
No. of accidents |
Observed frequency |
Expected frequency |
|
|
PD |
PLD |
PAD |
0 |
447 |
406 |
439.5 |
440.5 |
1 |
132 |
189 |
142.8 |
141.5 |
2 |
42 |
45 |
45 |
44.7 |
3 |
21 |
7 |
13.9 |
14 |
4 |
3 |
1 |
4.2 |
4.3 |
|
2 |
0.1 |
1.2 |
2.0 |
Total |
647 |
647 |
647 |
647 |
ML estimate |
|
|
|
|
|
|
61.08 |
4.82 |
4.66 |
d.f. |
|
1 |
3 |
2 |
p-value |
|
0.0273 |
0.1855 |
0.1985 |
Table 3 Accidents to 647 women working on high explosive shells in 5 weeks, available in Sankaran1
Concluding remarks
In this paper a Poisson mixture of Adya distribution called Poisson-Adya distribution (PAD) has been suggested. The expressions of statistical constants including coefficients of variation, skewness, kurtosis and index of dispersion have been obtained and their behavior for varying values of parameter has been studied. It is observed that the obtained distribution is unimodal, has increasing hazard rate and over-dispersed. Maximum likelihood estimation and method of moment have been discussed for estimating parameter. Finally, the goodness of fit of the proposed distribution and its comparison with other one parameter discrete distributions including Poisson and PLD on three datasets from biological science has been presented.
Acknowledgments
Conflicts of interest
The authors declare no conflicts of interest.
References
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