Research Article Volume 8 Issue 4
1Department of Statistics, Deva Matha College, India
2Department of Statistics, St.Thomas College, India
Correspondence: Lishamol Tomy, Department of Statistics, Deva Matha College, Kuravilangad, Kerala-686633, India
Received: May 31, 2019 | Published: July 8, 2019
Citation: Tomy L, Gillariose J. A generalized Rayleigh distribution and its application. Biom Biostat Int J. 2019;8(4):139-143. DOI: 10.15406/bbij.2019.08.00282
This paper studies properties and applications of the generalized Rayleigh-truncated negative binomial distribution established by Jiju & Lishamol.1 For the concerned objective, we applied the model to a real life data set and its performance is compared with that of other four-parameter generalized Rayleigh distributions which are derived using different generators.
Keywords: hazard rate function, marshall-olkin family, maximum likelihood estimation, rayleigh-truncated negative binomial distribution
(1)
where is the scale parameter, is the shape parameter and is the complete gamma function. Its survival function is(2)
where is the incomplete gamma function, hence statistical software"s can be used for various values of and . In literature, there are many studies based on extensions of this generalized Rayleigh (GR) distribution using different generators. Cordeiro et al.,5 derived four-parameter beta-GR distribution, Gomes et al.,6 proposed the four-parameter Kumaraswamy-GR distribution, and MirMostafaee et al.,7 introduced Marshall-Olkin extended GR distribution respectively.
In modern era, the literature has suggested several ways of extending well-known distributions to generate a more flexible of distributions. Recently new generator approach introduced by Nadarajah et al.,8 as a generalization of the family of Marshall-Olkin extended (MOE) distributions by Marshall & Olkin.9 This approach deals with the shape parameter induction in parent (or baseline) distribution to explore tail properties and to improve goodness-of-fits. Let be a sequence of independent and identically distributed random variables with survival function and N be a truncated negative binomial random variable, independent of "s, with parameters and , such that
(3)
If ), then the survival function of is(4)
Similarly, if and N is a truncated negative binomial random variable with parameters and , then ) also has the same survival function given in (4). If in (4), then . If , then this family reduces to the Marshall-Olkin family of distributions. The pdf of survival function given in equation (4) is
(5)
Recently, several authors have used this approach to introduce new distributions. Jayakumar & Sankaran10 defined a generalized uniform distribution using the approach of Nadarajah et al.,8 Babu11 introduced Weibull truncated negative binomial distribution. Further, Jayakumar & Sankaran12 introduced generalized exponential truncated negative binomial distribution and studied its properties. Also, Jose & Sivadas13 used the family given by equation (4) to introduce the negative binomial Marshall-Olkin Rayleigh distribution.
The contents of this paper are organized as follows. Section 2 deals with a generalized Rayleigh-truncated negative binomial distribution and its properties. Section 3 gives a real-life application. The concluding remarks are given in Section 4.
In this section, we are focused on generalized Rayleigh truncated negative binomial (GR-TNB) distribution introduced by Jiju & Lishamol.1 The distribution is derived by using generator approach of Nadarajah et al.,8 They have examined various statistical properties of this distribution including estimation of parameters and have showed that this distribution is more flexible comparing to other generalizations of the rayleigh distribution. The survival function of the GR-TNB distribution is given by
(6)
corresponding pdf is(7)
and the hazard rate function (hrf) of the GR-TNB distribution becomes(8)
The GR-TNB distribution enfolds some sub models such as MOE GR distribution, MOE half normal distribution and MOE Reyleigh distribution. Figure 1 shows the plots for pdf and hrf for GR-TNB distribution with various parameter values. As seen in Figure 1, the pdf and the hrf of the GR-TNB distribution have several different shapes according to the values of the parameters. This shows that GR-TNB distribution is more flexible than Rayleigh distribution. The quantile function of X follows GR-TNB distribution, it can be expressed as
where u is generated from the uniform (0, 1) distribution and is the (standardized) gamma quantile function with shape parameter and unit scale parameter (Figure 1).
Simulation study
In this section, we carry out Monte Carlo simulation study to assess the performance of the maximum likelihood estimates (MLE). The results are obtained from generating 1000 samples from the GR-TNB distribution. For each replication, a random sample of size n = 50, 100 and 200 is drawn from the GR-TNB distribution. The GR-TNB random number generation was performed using the quantile function of GR-TNB distribution and the parameters are estimated by using the method of MLE by using package nlm in R, we get MLEs, , and for fixed ;or . The evaluation of the performance is based on the bias and the mean squared errors (MSE) defined as follows:
where is the true value of parameters , and and also N is the number of replications. The initial values of parameter are , and . The results of our simulation study are summarized. From this table, we can see that the bias and MSE of the MLEs converge to zero when the sample size is increased (Table 1).
|
|
|
|||
n |
Parameters |
Bias |
MSE |
Bias |
MSE |
n=50 |
0.047 |
0.2362 |
0.055 |
0.99 |
|
0.098 |
0.3756 |
0.098 |
0.009 |
||
0.018 |
0.0391 |
0.092 |
0.003 |
||
n=100 |
0.008 |
0.0001 |
0.004 |
0.099 |
|
0.081 |
0.0098 |
0.009 |
0.009 |
||
0.005 |
0.0005 |
0.039 |
0.0009 |
||
n=200 |
0.004 |
0.0003 |
0.001 |
0.002 |
|
0.018 |
0.009 |
0.005 |
0.0001 |
||
0.0007 |
0.00006 |
0.009 |
0.000083 |
Table 1 Simulation Study for GR-TNB(x;) with and
In this section, we consider a real data set on breaking stress of carbon fibres of 50 mm length (GPa) to assess the flexibility of the GR-TNB distribution over some well-known generalizations of Rayleigh distribution. The data have been previously used by Nichols & Padgettcit.14 The data are as follows:
0.39, 0.85, 1.08, 1.25, 1.47, 1.57, 1.61, 1.61, 1.69, 1.80, 1.84 ,1.87, 1.89, 2.03, 2.03, 2.05, 2.12, 2.35, 2.41, 2.43, 2.48, 2.50, 2.53, 2.55, 2.55, 2.56, 2.59, 2.67, 2.73, 2.74, 2.79, 2.81, 2.82, 2.85, 2.87, 2.88, 2.93, 2.95, 2.96, 2.97, 3.09, 3.11, 3.11, 3.15, 3.15, 3.19, 3.22, 3.22, 3.27, 3.28, 3.31, 3.31, 3.33, 3.39, 3.39, 3.56, 3.60, 3.65, 3.68, 3.70, 3.75, 4.20, 4.38, 4.42, 4.70, 4.90We compare the results of GR-TNB distribution with following four-parameter generalizations of Rayleigh distribution which are generalized by using different generators:
Distribution |
Estimates (standard error) |
-logL |
AIC |
BIC |
K-S |
p-value |
GR-TNB (,,) |
= 9.2904333 |
84.77286 |
177.5457 |
186.3043 |
0.06376 |
0.9513 |
(17.383550) |
||||||
= 1.2821518 |
||||||
(1.402232) |
||||||
= 1.8392590 |
||||||
(0.259968) |
||||||
= -0.1287885 |
||||||
(0.796702) |
||||||
BExpGR (,,) |
=2.3214738 |
88.25908 |
184.5182 |
193.2768 |
0.2121157 |
0.00526888 |
(0.411143989) |
||||||
= 1.4398055 |
||||||
(0.828164618) |
||||||
= 0.0980958 |
||||||
(0.047475514) |
||||||
= 1.4465704 |
||||||
(0.005754235) |
||||||
BEGR(,,) |
=2.410055279 |
88.47258 |
184.9452 |
193.7038 |
0.1154599 |
0.3424505 |
(0.405482144) |
||||||
= 6.3950288 |
||||||
(9.68416177) |
||||||
= 4.833964992 |
||||||
(6.914385767) |
||||||
= 0.008840908 |
||||||
(0.004205926) |
||||||
EKGR(,,) |
= 0.009924694 |
85.75583 |
179.5117 |
188.2703 |
0.08173829 |
0.7699466 |
(0.02485053) |
||||||
= 0.205804483 |
||||||
(0.02541743 ) |
||||||
= 9.787248978 |
||||||
(7.00657360 ) |
||||||
= 1.126722092 |
||||||
(0.04244422) |
||||||
EBGR (,,) |
= 0.45962398 |
188.5795 |
179.8209 |
188.5795 |
0.0810696 |
0.7785533 |
(0.47172504) |
||||||
= 11.07897095 |
||||||
(22.78252971) |
||||||
= 3.5728010 |
||||||
(3.7261659) |
||||||
= 0.05118239 |
||||||
(0.07335831) |
Table 2 Estimated values, logL, AIC, BIC, K-S statistics and-value for data set
In the last two decades, generalization approaches were adopted and practiced by many statisticians. In this study, we concentrated on such a generalization of Rayleigh distribution and presented a simulation study for verifying the validity of its estimates. A data set is used to prove the performance of GR-TNB distribution. The results present that the GR-TNB distribution provides better fits than existing distributions.
None.
The second author is grateful to the Department of Science and Technology (DST), Govt. of India for the financial support under the INSPIRE Fellowship.
©2019 Tomy, 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.
2 7