Research Article Volume 8 Issue 1
Department of Statistics, College of Science, Eritrea Institute of Technology, Eritrea
Correspondence: Rama Shanker, College of Science, Eritrea Institute of Technology, Asmara, Eritrea
Received: December 29, 2018 | Published: January 21, 2019
Citation: Abebe B, Tesfay M, Eyob T, et al. A two-parameter power Rama distribution with properties and applications. Biom Biostat Int J. 2019;8(1):6-11. DOI: 10.15406/bbij.2019.08.00262
In this paper a two-parameter Power Rama distribution, which includes one parameter Rama distribution as a particular case, has been proposed. Its statistical and reliability properties including shapes of density for varying values of parameters, the moments about origin, the mean and variance, survival function, hazard rate function, mean residual life function have been discussed. The maximum likelihood estimation for estimating the parameters has been discussed. Finally, the goodness of fit of the proposed distribution has been discussed with two real lifetime dataset.
Keywords: Rama distribution, Hazard rate function, moments, maximum likelihood estimation, goodness of fit
(1.1)
(1.2)
The pdf (1.1) is a convex combination of exponential and gamma distribution with mixing proportion . We havewhere
The statistical properties, estimation of parameter using maximum likelihood estimation and applications for modeling lifetime data of Rama distribution are available in Shanker.1
The pdf and the cdf of Power Lindley distribution (PLD) introduced by Ghitany et al.,2 are given by
(1.3)
(1.4)
Obviously at , PLD reduces to Lindley distribution, introduced by Lindley3 having pdf and cdf(1.5)
(1.6)
The statistical properties, estimation of parameter and application of Lindley distribution are discussed in Ghitany et al.,4 Shanker et al.,5 have detailed study on applications of Lindley distribution and exponential distribution to model real lifetime datasets from engineering and biomedical sciences. Since Rama distribution has only one parameter, it has less flexibility to model data of varying natures. In the present paper an attempt has been made to derive two-parameter power Rama distribution which includes one parameter Rama distribution as particular cases as power transformation of Rama distribution. The shapes of the density, moments, hazard rate function, and mean residual life function of the distribution have been discussed. The maximum likelihood estimation has been explained. The goodness of fit of the proposed distribution has been discussed with two real lifetime dataset and fit shows quite satisfactory fit over other one parameter and two-parameter lifetime distributions.
A two-parameter power Rama distribution
Taking the power transformation in (1.1), the pdf of the random variable can be obtained as(2.1)
(2.2)
where,
and
We would call the pdf in (2.1) power Rama distribution (PRD). At , (2.1) reduces to one Rama distribution. Like Rama distribution, the PRD is also a convex combination of Weibull distribution (with shape parameter and scale parameter ) and a generalized gamma distribution (with shape parameter 4 and and scale parameter ) with mixing proportion .
The corresponding cdf of PRD can be obtained as(2.3)
Various graphs of the pdf of PRD for varying values of parameters have been drawn and presented in Figure 1. As the value of the shape parameter alpha increases the graph of PRD approaches normal distribution. Various graphs of the cdf of PRD for varying values of its parameters have been drawn and shown in Figure 2.
(3.1)
At , the above expression reduces to the rth moment about origin of Rama distribution given byThus the first four moments about origin of the PRD are obtained as
The variance of the PRD thus can be expressed as
The hazard rate function, and the mean residual function, of PRD are obtained as
and
Obviously for , the mean of PRD .
The behaviors of hazard rate function of PRD for varying values of parameters have been shown graphically in Figure 3. The graphs of hazard rate function of PRD are monotonically increasing for varying values of parameters. The behaviors of mean residual life function of PRD for varying values of parameters are shown in Figure 4. The graphs of mean residual life function of PRD are monotonically deceasing for varying values of parameters.
Thus, the maximum likelihood estimates, of parameters of PRD is the solution of the following log-likelihood equations
Since these two natural log likelihood equations cannot be expressed in closed form, these two log-likelihood equations are not directly solvable. The of parameters can be obtained directly from the natural log likelihood equation using Newton-Raphson iteration using R-software till sufficiently close values of and are obtained.
The application and the goodness of fit of PRD based on maximum likelihood estimates of parameters have been explained with two real datasets from engineering and biomedical Sciences. The fit given by one parameter exponential, Lindley and Rama distributions and two-parameter power Lindley distribution (PLD) and Weibull distribution, introduced by Weibull,6 have also given for ready comparison. The following two real lifetime datasets have been considered for showing the superiority of PRD over other lifetime distributions.
Data set 1: The data set is from Smith & Naylor7 relating to the strength of 1.5cm glass fibers measured at the National Physical Laboratory, England.
0.55 0.93 1.25 1.36 1.49 1.52 1.58 1.61 1.64 1.68 1.73 1.81 2.00 0.74 1.04 1.27 1.39 1.49 1.53 1.59 1.61 1.66 1.68 1.76 1.82 2.01 0.77 1.11 1.28 1.42 1.50 1.54 1.60 1.62 1.66 1.69 1.76 1.84 2.24 0.81 1.13 1.29 1.48 1.50 1.55 1.61 1.62 1.66 1.70 1.77 1.84 0.84 1.24 1.30 1.48 1.51 1.55 1.61 1.63 1.67 1.70 1.78 1.89In order to compare considered distributions, values of along with their standard errors, -2ln L, AIC (Akaike Information Criterion), K-S statistic and p-value for the dataset have been computed and presented in Table 1. The best distribution is the distribution corresponding to lower values of -2ln L, AIC and K-S statistic.
Model |
ML estimate |
-2ln L |
AIC |
K-S |
p-value |
|
PRD |
|
0.0942 |
26.19 |
30.19 |
0.1297 |
0.2398 |
PLD |
|
0.0466 |
29.38 |
33.38 |
0.1442 |
0.1457 |
Weibull |
|
0.0205 |
30.41 |
34.31 |
0.1523 |
0.1075 |
Rama |
0.0991 |
169.72 |
171.72 |
0.3580 |
< 0.0001 |
|
Lindley |
0.0948 |
162.56 |
164.56 |
0.3864 |
< 0.0001 |
|
Exponential |
0.0836 |
177.66 |
179.66 |
0.4180 |
< 0.0001 |
Table 1 MLE"s, -2ln L, , AIC, K-S statistic, and p-value of the fitted distribution of dataset 1
The Variance-Covariance matrix and 95% confidence interval (CI"s) for the parameters and of PRD for the dataset 1 has been presented in Table 2.
Parameters |
Variance-covariance matrix |
95% CI |
||
|
|
Lower |
Upper |
|
|
0.0089 |
-0.0179 |
0.0668 |
1.0367 |
|
-0.0179 |
0.0504 |
2.8450 |
3.7278 |
Table 2 Variance-Covariance matrix and 95% confidence interval (CI"s) for the parameters and of PRD
In order to see the closeness of the fit given by one parameter exponential, Lindley and Rama distributions and two-parameter PLD and Weibull distribution, the fitted plot of pdfs of these distributions for the dataset 1 have been shown in Figure 5. Obviously the fitted plots of the distributions and the histogram of the original dataset shows that PRD gives much closer fit over the considered distributions.
Data set 2: The following dataset represents waiting time (in minutes) of 154 patients, waiting before OPD (Out Patient Diagnosis) from the 25th - 30th December, 2017(in the 4th week of December) at Halibet Hospital., available in the master thesis of Berhane Abebe,8 Department of Statistics, College of Science, Eritrea Institute of Technology, Eritrea.
2(13) |
3(29) |
4(32) |
5(29) |
6(18) |
7(15) |
8(6) |
9(6) |
10(2) |
11(2) |
12 |
17 |
The maximum likelihood estimates of parameters, standard error of estimates of parameters, AIC, K-S and p-values of the fitted distributions for dataset 2 are shown in Table 3. The Variance-Covariance matrix and 95% confidence interval (CI"s) for the parameters and of PRD for the given dataset 2 has been presented in Table 4.
Model |
ML Estimate |
|
-2ln L |
AIC |
K-S |
P-value |
PRD |
|
0.0555 |
659.57 |
663.57 |
0.1329 |
0.0087 |
PLD |
|
0.0173 |
665.69 |
669.69 |
0.1368 |
0.0062 |
Weibull |
|
0.0049 |
673.14 |
677.14 |
0.1402 |
0.0047 |
Rama |
0.0292 |
675.87 |
677.87 |
0.1581 |
0.0009 |
|
Lindley |
0.0201 |
746.74 |
748.74 |
0.2903 |
< 0.0001 |
|
Exponential |
0.0161 |
804.51 |
806.51 |
0.3659 |
< 0.0001 |
Table 3 MLE"s, -2ln L, , AIC, K-S statistic, and P-value of the fitted distribution of dataset 2
Parameters |
Variance-covariance matrix |
95% CI |
||
|
|
Lower |
Upper |
|
0.0031 |
-0.0030 |
0.4355 |
0.6526 |
|
|
-0.0030 |
0.0033 |
1.1080 |
1.3339 |
Table 4 Variance-Covariance matrix and 95% confidence interval (CI"s) for the parameters and of PRD for dataset 2
A two-parameter Power Rama distribution (PRD) has been proposed which includes Rama distribution, introduced by Shanker (2017), as a particular case. The statistical and reliability properties including moments, survival function, hazard rate function, mean residual function of PRD have been discussed. Maximum likelihood estimation has been explained for estimating the parameters. The goodness of fit of PRD has been discussed with two real lifetime datasets and the fit has been found quite satisfactory over one parameter Rama, Lindley and Exponential distributions and two-parameter Power Lindley distribution (PLD) and Weibull distribution. Hence, PRD can be considered an important two-parameter lifetime distribution.
None.
The author declares there is no conflicts of interest.
©2019 Abebe, et al. This is an open access article distributed under the terms of the, which permits unrestricted use, distribution, and build upon your work non-commercially.
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