
 
 
Research Article Volume 3 Issue 6
     
 
	On modeling of lifetime data using akash, shanker, lindley and exponential distributions
 Rama Shanker,1 
   
    
 
   
    
    
  
    
    
   
      
      
        
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   Hagos Fesshaye2   
  
1Department of Statistics, Eritrea Institute of Technology, Eritrea
2Department of Economics, College of Business and Economics, Eritrea
Correspondence: Rama Shanker, Department of Statistics, Eritrea Institute of Technology, Asmara, Eritrea
Received: May 03, 2016 | Published: June 24, 2016
Citation: Shanker R, Fesshaye H. On modeling of lifetime data using akash, shanker, lindley and exponential distributions. Biom Biostat Int J. 2016;3(6):214-224. DOI: 10.15406/bbij.2016.03.00084
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Abstract
  
  
The statistical analysis and modeling of lifetime data are crucial for statisticians and research workers in almost all applied sciences including engineering, biomedical science, insurance, and finance, amongst others. The two important and popular one parameter distributions for modeling lifetime data are exponential and Lindley distributions. Shanker et al.1 observed that there are many lifetime data where these distributions are not suitable from theoretical and applied point of view. Recently Shanker2,3 has introduced two one parameter Lifetime distribution namely “Akash distribution” and “Shanker distribution” for modeling lifetime data. 
In the present paper the relationships and comparative studies of Akash, Shanker, Lindley and exponential distributions, their distributional properties and estimation of parameter have been discussed. The applications, goodness of fit and theoretical justifications of these distributions for modeling life time data through various examples from engineering, medical science and other fields have been discussed and explained.
Keywords: akash distribution, shanker distribution, lindley distribution, exponential  distribution, statistical properties, estimation of parameter, goodness of fit
 
  
Introduction
  
In reliability analysis the time to the occurrence of event of interest is known as lifetime or survival time or failure time. The event may be failure of a piece of equipment, death of a person, development (or remission) of symptoms of disease, health code violation (or compliance). The modeling and statistical analysis of lifetime data are crucial for statisticians, research workers and policy makers in almost all applied sciences including engineering, medical science/biological science, insurance and finance, amongst others. 
In statistics literature a number of lifetime distributions for modeling lifetime data-sets have been proposed. In this paper, the main objective is to have a critical and comparative study on one parameter lifetime distributions namely, Akash, Shanker, Lindley and exponential and their applications for modeling lifetime dats-sets from engineering, medical sciences, and other fields of knowledge. 
 
  
Akash, shanker, lindley and exponential  distributions
  Akash  distribution introduced by Shanker2 for  modeling lifetime data from engineering and medical science is a two-component  mixture of an exponential 
 distribution  and a gamma 
 distribution with their mixing proportions 
 and 
 respectively. Shanker2  has discussed its various mathematical and statistical properties including its  shape, moment generating function, moments, skewness, kurtosis, hazard rate  function, mean residual life function, stochastic orderings, mean deviations,  distribution of order statistics, Bonferroni and Lorenz curves, Renyi entropy  measure, stress-strength reliability , amongst others. Shanker  et al.3 has detailed study about modeling of various lifetime data  from different fields using Akash, Lindley and exponential distributions and  concluded that Akash distribution gives better fit in most of the lifetime  data. Shanker5 has also obtained a Poisson  mixture of Akash distribution named, “Poisson-Akash (PAD)” for modeling count  data.
  Shanker  distribution introduced by Shanker2 for  modeling lifetime data from engineering and medical science is a two- component  mixture of an exponential 
 distribution  and a gamma 
 distribution with their mixing proportions 
  and 
 respectively. Shanker3  has discussed its various mathematical and statistical properties including its  shape, moment generating function, moments, skewness, kurtosis, hazard rate  function, mean residual life function, stochastic orderings, mean deviations,  distribution of order statistics, Bonferroni and Lorenz curves, Renyi entropy  measure, stress-strength reliability , amongst others. Shanker6 has also obtained a Poisson mixture of Shanker distribution named,  “Poisson-Shanker (PSD)” for modeling count data.
    Lindley7 distribution is a two-component mixture of an  exponential 
  distribution  and a gamma 
 distribution with their mixing proportions 
  and 
 respectively. A detailed study about its various  mathematical properties, estimation of parameter and application showing the  superiority of Lindley distribution over exponential distribution for the  waiting times before service of the bank customers has been done by Ghitany et al.8 A number of researchers have  studied in detail the generalized, extended, mixtures and modified forms of Lindley  distribution including Sankaran,9 Zakerzadeh & Dolat,10 Nadarajah  et al.,11 Bakouch et al.,12 Shanker & Mishra,13,14 Shanker  & Amanuel,15 Shanker et al.,16,17  Ghitany et al.,18 are some among others.
  In  statistical literature, exponential distribution was the first widely used  lifetime model in areas ranging from studies on the lifetimes of manufactured  to research involving survival or remission times in chronic diseases. The main  reason for its wide usefulness and applicability as lifetime model is partly  because of the availability of simple statistical methods for it and partly  because it appeared to be suitable for representing the lifetimes of many  things such as various types of manufactured items. 
  Let 
 be a continuous random variable representing the  lifetimes of individuals in some population The expressions for probability  density function, 
 , cumulative distribution function,
 ,  hazard rate  function, 
, mean residual life function, 
, mean 
, variance 
, coefficient of variation (C.V.), coefficient of  Skewness 
, coefficient of Kurtosis 
, and index of dispersion 
 of Akash and  Shanker distributions introduced by Shanker2,3  are summarized in Table 1 and that of Lindley  and exponential distributions are in Table 2.
  A table  of values for coefficient of variation (C.V.), coefficient of Skewness 
 , coefficient of Kurtosis 
, and index of dispersion 
  for Akash ,  Shanker and Lindley distributions for varying values of their parameter are  summarized in the Table 3.
  The  conditions under which Akash, Shanker and Lindley distributions are  over-dispersed 
 , equi-dispersed 
  , and  under-dispersed 
 are  summarized in Table 4.
  The  graphs of C.V,
, 
and 
 of Akash,  Shanker and Lindley distributions for varying values of the parameter 
 are shown in Figure 1. 
 
  
Parameter estimation
  Estimation  of the parameter of akash distribution 
  Assuming 
 be a  random sample of size 
 from  Akash distribution, the maximum likelihood estimate (MLE)
 and the  method moment estimate (MOME) 
 of 
 is the  solution of following cubic equation. 
    
, where 
 is the sample mean                                                        
  Estimation  of the parameter of shanker distribution                               
  Let 
 be a random  sample of size 
 from Shanker  distribution. The maximum likelihood estimate (MLE) 
 of 
 is the solution  of the following non-linear equation. 
    
                                        
  The  method of moment estimate (MOME) 
 of 
 is the solution  of the following cubic equation
    
, where 
 is the sample mean.                   
  
  Estimation  of the parameter of lindley distribution
  Assuming  
 be a random  sample of size 
  from Lindley  distribution, the maximum likelihood estimate (MLE) 
 and the method  moment estimate (MOME) 
 of 
 is given by
    
, where 
 is the sample mean. 
  Estimation  of the parameter of exponential distribution
  Assuming 
  be a random  sample of size n from exponential distribution, the maximum likelihood estimate  (MLE) 
 and the method  moment estimate (MOME) 
 of 
 is is given by 
, where 
 is the sample mean.
 
 
 
 
  
Applications and goodness of fit
  
 
  In this  section the goodness of fit test of Akash, Shanker, Lindley and exponential  distributions for following sixteen real lifetime data- sets using maximum  likelihood estimate have been discussed.
  In  order to compare the goodness of fit of Akash, Shanker, Lindley and exponential  distributions,
, AIC (Akaike Information Criterion), AICC (Akaike  Information Criterion Corrected), BIC (Bayesian Information Criterion), K-S  Statistics ( Kolmogorov-Smirnov Statistics)   for all sixteen real lifetime data- sets have been computed and presented  in Table 5.   The formulae for computing AIC, AICC, BIC, and K-S Statistics are as  follows: 
    
, 
, 
and 
, where 
= the number of parameters, 
= the sample size and 
 is the empirical distribution function. The best  distribution is the distribution which corresponds to lower values of 
, AIC, AICC, BIC, and K-S statistics.
  The  best fitting has been shown by making -2ln L, AIC, AICC, BIC, and K-S  Statistics in bold.
 
  
Conclusions
  In this  paper an attempt has been made to find the suitability of Akash, Shanker,  Lindley and exponential distributions for modeling real lifetime data from  engineering, medical science and other fields of knowledge. A table for values  of the various characteristics of Akash, Shanker, and Lindley distributions has  been presented for varying values of their parameter which reflects their  nature and behavior. The conditions under which Akash, shanker, Lindley and  exponential distributions are over-dispersed, equi-dispersed, and  under-dispersed have been given. The goodness of fit test of Akash, Shanker,  Lindley and exponential distributions for sixteen real lifetime data-sets have  been presented using Kolmogorov-Smirnov test to test their suitability for  modeling lifetime data.
  
  
  
  
  
    
      Akash Distribution  | 
      Shanker Distribution  | 
    
    
      
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      <
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  Table 1 Characteristics of Akash and Shanker Distributions
 
 
 
    
      Lindley Distribution  | 
      Exponential Distribution  | 
    
    
      
  | 
      
  | 
    
    
      
  | 
      
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  | 
      
  | 
    
    
      
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  Table 2 Characteristics of Lindley and  Exponential Distributions
 
 
 
    
      Values    of 
for    Akash Distribution   | 
    
    
       | 
      0.01   | 
      0.05  | 
      0.1   | 
      0.3  | 
      0.5  | 
      1   | 
      1.5   | 
      2   | 
    
    
      
  | 
      299.990   | 
      59.950  | 
      29.900   | 
      9.713  | 
      5.556  | 
      2.333   | 
      1.294   | 
      0.833   | 
    
    
      
  | 
      30001.000   | 
      1200.996  | 
      300.985   | 
      34.208  | 
      12.691  | 
      3.222   | 
      1.306   | 
      0.639   | 
    
    
      CV   | 
      0.577   | 
      0.578  | 
      0.580   | 
      0.602  | 
      0.641  | 
      0.769   | 
      0.883   | 
      0.959   | 
    
    
      
  | 
      1.155   | 
      1.153  | 
      1.149   | 
      1.115  | 
      1.084  | 
      1.165   | 
      1.388   | 
      1.614   | 
    
    
      
  | 
      5.000   | 
      4.997  | 
      4.987   | 
      4.897  | 
      4.785  | 
      4.834   | 
      5.473   | 
      6.391   | 
    
    
      
  | 
      100.007   | 
      20.033  | 
      10.066   | 
      3.522  | 
      2.284  | 
      1.381   | 
      1.009   | 
      0.767   | 
    
    
      Values    of 
 for    Shanker Distribution   | 
    
    
       | 
      0.01   | 
      0.05   | 
      0.1  | 
      0.3   | 
      0.5   | 
      1  | 
      1.5  | 
      2  | 
    
    
      
  | 
      199.990   | 
      39.950   | 
      19.901  | 
      6.391   | 
      3.600   | 
      1.500  | 
      0.872  | 
      0.600  | 
    
    
      
  | 
      20000.000   | 
      799.998   | 
      199.990  | 
      22.146   | 
      7.840   | 
      1.750  | 
      0.676  | 
      0.340  | 
    
    
      CV   | 
      0.707   | 
      0.708   | 
      0.711  | 
      0.736   | 
      0.778   | 
      0.882  | 
      0.943  | 
      0.972  | 
    
    
      
  | 
      1.414   | 
      1.414   | 
      1.414  | 
      1.421   | 
      1.452   | 
      1.620  | 
      1.779  | 
      1.876  | 
    
    
      
  | 
      6.000   | 
      6.000   | 
      6.000  | 
      6.020   | 
      6.121   | 
      6.796  | 
      7.593  | 
      8.159  | 
    
    
      
  | 
      100.005   | 
      20.025   | 
      10.049  | 
      3.465   | 
      2.178   | 
      1.167  | 
      0.775  | 
      0.567  | 
    
    
      Values    of
 for Lindley Distribution   | 
    
    
       | 
      0.01   | 
      0.05   | 
      0.1  | 
      0.3   | 
      0.5   | 
      1  | 
      1.5  | 
      2  | 
    
    
      
  | 
      199.010   | 
      39.048   | 
      19.091  | 
      5.897   | 
      3.333   | 
      1.500  | 
      0.933  | 
      0.667  | 
    
    
      
  | 
      19999.020   | 
      799.093   | 
      199.174  | 
      21.631   | 
      7.556   | 
      1.750  | 
      0.729  | 
      0.389  | 
    
    
      CV   | 
      0.711   | 
      0.724   | 
      0.739  | 
      0.789   | 
      0.825   | 
      0.882  | 
      0.915  | 
      0.935  | 
    
    
      
  | 
      1.414   | 
      1.417   | 
      1.422  | 
      1.464   | 
      1.512   | 
      1.620  | 
      1.699  | 
      1.756  | 
    
    
      
  | 
      6.000   | 
      6.007   | 
      6.025  | 
      6.162   | 
      6.343   | 
      6.796  | 
      7.173  | 
      7.469  | 
    
    
      
  | 
      100.493   | 
      20.465   | 
      10.433  | 
      3.668   | 
      2.267   | 
      1.167  | 
      0.781  | 
      0.583  | 
    
  
  Table 3 Values of 
    
, 
 , CV, 
 , 
 and 
 of Akash, Shanker and Lindley distributions for  varying values of the parameter 
 
 
 
    
      Distribution  | 
      Over-Dispersion 
        
   | 
      Equi-Dispersion 
        
   | 
      Under-Dispersion 
        
   | 
    
     
    
      Akash  | 
      
  | 
      
  | 
      
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      Shanker  | 
      
  | 
      
  | 
      
  | 
    
    
      Lindley  | 
      
  | 
      
  | 
      
  | 
    
    
      Exponential  | 
      
  | 
      
  | 
      
  | 
    
  
  Table 4 Over-dispersion,  equi-dispersion and under-dispersion of Akash, Shanker , Lindley and  exponential distributions for varying values of their parameter 
    
 
 
 
  Figure 1 Graphs  of C.V,
, 
 and 
 of Akash,  Shanker and Lindley distributions for varying values of the parameter 
. 
 
 
 
    
       | 
      Model  | 
      Parameter Estimate  | 
      -2ln L  | 
      AIC  | 
      AICC  | 
      BIC  | 
      K-S Statistic  | 
    
    
      Data 1  | 
      Akash  | 
      1.355445  | 
      163.73  | 
      165.73  | 
      165.79  | 
      169.93  | 
      0.355  | 
    
    
      Shanker  | 
      0.956264  | 
      162.28  | 
      164.28  | 
      164.34  | 
      166.42  | 
      0.346  | 
    
    
      Lindley  | 
      0.996116  | 
      162.56  | 
      164.56  | 
      164.62  | 
      166.70  | 
      0.371  | 
    
    
      Exponential  | 
      0.663647  | 
      177.66  | 
      179.66  | 
      179.73  | 
      181.80  | 
      0.402  | 
    
    
      Data 2  | 
      Akash  | 
      0.043876  | 
      950.97  | 
      952.97  | 
      953.01  | 
      955.58  | 
      0.184  | 
    
    
      Shanker  | 
      0.029252  | 
      980.97  | 
      982.97  | 
      983.01  | 
      985.57  | 
      0.238  | 
    
    
      Lindley  | 
      0.028859  | 
      983.11  | 
      985.11  | 
      985.15  | 
      987.71  | 
      0.242  | 
    
    
      Exponential  | 
      0.014635  | 
      1044.87  | 
      1046.87  | 
      1046.91  | 
      1049.48  | 
      0.357  | 
    
    
      Data 3  | 
      Akash  | 
      0.041510  | 
      227.06  | 
      229.06  | 
      229.25  | 
      230.20  | 
      0.107  | 
    
    
      Shanker  | 
      0.027675  | 
      231.06  | 
      233.06  | 
      233.25  | 
      234.19  | 
      0.145  | 
    
    
      Lindley  | 
      0.027321  | 
      231.47  | 
      233.47  | 
      233.66  | 
      234.61  | 
      0.149  | 
    
    
      Exponential  | 
      0.013845  | 
      242.87  | 
      244.87  | 
      245.06  | 
      246.01  | 
      0.263  | 
    
    
      Data 4  | 
      Akash  | 
      0.013514  | 
      1255.83  | 
      1257.83  | 
      1257.87  | 
      1260.43  | 
      0.110  | 
    
    
      Shanker  | 
      0.009009  | 
      1251.19  | 
      1253.34  | 
      1253.38  | 
      1255.60  | 
      0.097  | 
    
    
      Lindley  | 
      0.008970  | 
      1251.34  | 
      1253.34  | 
      1253.38  | 
      1255.95  | 
      0.098  | 
    
    
      Exponential  | 
      0.004505  | 
      1280.52  | 
      1282.52  | 
      1282.56  | 
      1285.12  | 
      0.190  | 
    
    
      Data 5  | 
      Akash  | 
      0.030045  | 
      794.70  | 
      796.70  | 
      796.76  | 
      798.98  | 
      0.184  | 
    
    
      Shanker  | 
      0.020031  | 
      788.57  | 
      790.57  | 
      790.63  | 
      792.28  | 
      0.133  | 
    
    
      Lindley  | 
      0.019841  | 
      789.04  | 
      791.04  | 
      791.10  | 
      793.32  | 
      0.134  | 
    
    
      Exponential  | 
      0.010018  | 
      806.88  | 
      808.88  | 
      808.94  | 
      811.16  | 
      0.198  | 
    
    
      Data 6  | 
      Akash  | 
      0.119610  | 
      981.28  | 
      983.28  | 
      983.31  | 
      986.18  | 
      0.393  | 
    
    
      Shanker  | 
      0.079746  | 
      1033.10  | 
      1035.10  | 
      1035.13  | 
      1037.99  | 
      0.442  | 
    
    
      Lindley  | 
      0.077247  | 
      1041.64  | 
      1043.64  | 
      1043.68  | 
      1046.54  | 
      0.448  | 
    
    
      Exponential  | 
      0.040060  | 
      1130.26  | 
      1132.26  | 
      1132.29  | 
      1135.16  | 
      0.525  | 
    
    
      Data 7  | 
      Akash  | 
      0.013263  | 
      803.96  | 
      805.96  | 
      806.02  | 
      810.01  | 
      0.298  | 
    
    
      Shanker  | 
      0.008843  | 
      764.62  | 
      766.62  | 
      766.69  | 
      768.06  | 
      0.246  | 
    
    
      Lindley  | 
      0.008804  | 
      763.75  | 
      765.75  | 
      765.82  | 
      767.81  | 
      0.245  | 
    
    
      Exponential  | 
      0.004421  | 
      744.87  | 
      746.87  | 
      746.94  | 
      748.93  | 
      0.166  | 
    
    
      Data 8  | 
      Akash  | 
      0.013423  | 
      609.93  | 
      611.93  | 
      612.02  | 
      613.71  | 
      0.280  | 
    
    
      Shanker  | 
      0.008949  | 
      579.51  | 
      581.51  | 
      581.60  | 
      583.29  | 
      0.220  | 
    
    
      Lindley  | 
      0.008910  | 
      579.16  | 
      581.16  | 
      581.26  | 
      582.95  | 
      0.219  | 
    
    
      Exponential  | 
      0.004475  | 
      564.02  | 
      566.02  | 
      566.11  | 
      567.80  | 
      0.145  | 
    
    
      Data 9  | 
      Akash  | 
      0.310500  | 
      887.89  | 
      889.89  | 
      889.92  | 
      892.74  | 
      0.198  | 
    
    
      Shanker  | 
      0.210732  | 
      847.37  | 
      849.37  | 
      849.40  | 
      852.22  | 
      0.132  | 
    
    
      Lindley  | 
      0.196045  | 
      839.06  | 
      841.06  | 
      841.09  | 
      843.91  | 
      0.116  | 
    
    
      Exponential  | 
      0.106773  | 
      828.68  | 
      830.68  | 
      830.72  | 
      833.54  | 
      0.077  | 
    
    
      Data 10  | 
      Akash  | 
      0.050293  | 
      354.88  | 
      356.88  | 
      357.02  | 
      358.28  | 
      0.421  | 
    
    
      Shanker  | 
      0.033569  | 
      325.74  | 
      327.74  | 
      327.88  | 
      329.14  | 
      0.351  | 
    
    
      Lindley  | 
      0.033021  | 
      323.27  | 
      325.27  | 
      325.42  | 
      326.67  | 
      0.345  | 
    
    
      Exponential  | 
      0.016779  | 
      305.26  | 
      307.26  | 
      307.40  | 
      308.66  | 
      0.213  | 
    
    
      Data 11  | 
      Akash  | 
      1.165719  | 
      115.15  | 
      117.15  | 
      117.28  | 
      118.68  | 
      0.156  | 
    
    
      Shanker  | 
      0.853374  | 
      112.91  | 
      114.91  | 
      115.03  | 
      116.44  | 
      0.131  | 
    
    
      Lindley  | 
      0.823821  | 
      112.61  | 
      114.61  | 
      114.73  | 
      116.13  | 
      0.133  | 
    
    
      Exponential  | 
      0.532081  | 
      110.91  | 
      112.91  | 
      113.03  | 
      114.43  | 
      0.089  | 
    
    
      Data 12  | 
      Akash  | 
      0.295277  | 
      641.93  | 
      643.93  | 
      643.95  | 
      646.51  | 
      0.100  | 
    
    
      Shanker  | 
      0.198317  | 
      635.26  | 
      637.26  | 
      637.30  | 
      639.86  | 
      0.042  | 
    
    
      Lindley  | 
      0.186571  | 
      638.07  | 
      640.07  | 
      640.12  | 
      642.68  | 
      0.058  | 
    
    
      Exponential  | 
      0.101245  | 
      658.04  | 
      660.04  | 
      660.08  | 
      662.65  | 
      0.163  | 
    
    
      Data 13  | 
      Akash  | 
      0.024734  | 
      194.30  | 
      196.30  | 
      196.61  | 
      197.01  | 
      0.456  | 
    
    
      Shanker  | 
      0.016492  | 
      181.58  | 
      183.58  | 
      183.89  | 
      184.29  | 
      0.388  | 
    
    
      Lindley  | 
      0.016360  | 
      181.34  | 
      183.34  | 
      183.65  | 
      184.05  | 
      0.386  | 
    
    
      Exponential  | 
      0.008246  | 
      173.94  | 
      175.94  | 
      176.25  | 
      176.65  | 
      0.277  | 
    
    
      Data 14  | 
      Akash  | 
      1.156923  | 
      59.52  | 
      61.52  | 
      61.74  | 
      62.51  | 
      0.320  | 
    
    
      Shanker  | 
      0.803867  | 
      59.78  | 
      61.78  | 
      61.22  | 
      62.77  | 
      0.325  | 
    
    
      Lindley  | 
      0.816118  | 
      60.50  | 
      62.50  | 
      62.72  | 
      63.49  | 
      0.341  | 
    
    
      Exponential  | 
      0.526316  | 
      65.67  | 
      67.67  | 
      67.90  | 
      68.67  | 
      0.389  | 
    
    
      Data 15  | 
      Akash  | 
      0.097062  | 
      240.68  | 
      242.68  | 
      242.82  | 
      244.11  | 
      0.266  | 
    
    
      Shanker  | 
      0.064712  | 
      252.35  | 
      254.35  | 
      254.49  | 
      255.78  | 
      0.326  | 
    
    
      Lindley  | 
      0.062988  | 
      253.99  | 
      255.99  | 
      256.13  | 
      257.42  | 
      0.333  | 
    
    
      Exponential  | 
      0.032455  | 
      274.53  | 
      276.53  | 
      276.67  | 
      277.96  | 
      0.426  | 
    
    
      Data 16  | 
      Akash  | 
      0.964726  | 
      224.28  | 
      226.28  | 
      226.34  | 
      228.51  | 
      0.348  | 
    
    
      Shanker  | 
      0.658029  | 
      233.01  | 
      235.01  | 
      235.06  | 
      237.24  | 
      0.355  | 
    
    
      Lindley  | 
      0.659000  | 
      238.38  | 
      240.38  | 
      240.44  | 
      242.61  | 
      0.390  | 
    
    
      Exponential  | 
      0.407941  | 
      261.74  | 
      263.74  | 
      263.80  | 
      265.97  | 
      0.434  | 
    
  
  Table 5 MLE’s, -2ln L, AIC, AICC, BIC,  K-S Statistics of the fitted distributions of data-sets  1-16
 
 
 
  
    
      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  | 
      1.89  | 
       | 
       | 
    
  
  Data Set 1 The data set represents the strength of  1.5cm glass fibers measured at the  National Physical Laboratory, England. Unfortunately, the units of measurements  are not given in the paper, and they are taken from Smith  & Naylor19
 
 
 
  
    
      5  | 
      25  | 
      31  | 
      32  | 
      34  | 
      35  | 
      38  | 
      39  | 
      39  | 
      40  | 
      42  | 
      43  | 
      43  | 
    
    
      43  | 
      44  | 
      44  | 
      47  | 
      48  | 
      48  | 
      49  | 
      49  | 
      49  | 
      51  | 
      54  | 
      55  | 
      55  | 
    
    
      55  | 
      56  | 
      56  | 
      56  | 
      58  | 
      59  | 
      59  | 
      59  | 
      59  | 
      59  | 
      63  | 
      63  | 
      64  | 
    
    
      64  | 
      65  | 
      65  | 
      65  | 
      66  | 
      66  | 
      66  | 
      66  | 
      66  | 
      67  | 
      67  | 
      67  | 
      68  | 
    
    
      69  | 
      69  | 
      69  | 
      69  | 
      71  | 
      71  | 
      72  | 
      73  | 
      73  | 
      73  | 
      74  | 
      74  | 
      76  | 
    
    
      76  | 
      77  | 
      77  | 
      77  | 
      77  | 
      77  | 
      77  | 
      79  | 
      79  | 
      80  | 
      81  | 
      83  | 
      83  | 
    
    
      84  | 
      86  | 
      86  | 
      87  | 
      90  | 
      91  | 
      92  | 
      92  | 
      92  | 
      92  | 
      93  | 
      94  | 
      97  | 
    
    
      98  | 
      98  | 
      99  | 
      101  | 
      103  | 
      105  | 
      109  | 
      136  | 
      147  | 
       | 
       | 
       | 
       | 
    
  
  Data Set 2 The data is given by Birnbaum & Saunders20 on the fatigue life of  6061 – T6 aluminum coupons cut parallel to the direction of rolling and  oscillated at 18 cycles per second. The data set consists of 101 observations  with maximum stress per cycle 31,000 psi. The data (x10-3 ) are presented below (after subtracting 65)
 
 
 
  
    
      17.88  | 
      28.92  | 
      33.00  | 
      41.52  | 
      42.12  | 
      45.60  | 
      48.80  | 
      51.84  | 
      51.96  | 
      54.12  | 
      55.56  | 
      67.80  | 
    
    
      68.44  | 
      68.64  | 
      68.88  | 
      84.12  | 
      93.12  | 
      98.64  | 
      105.12  | 
      105.84  | 
      127.92  | 
      128.04  | 
      173.40  | 
       | 
    
  
  Data Set 3 The  data set is from Lawless (1982, p-228). The data given arose in tests on  endurance of deep groove ball bearings. The data are the number of million  revolutions before failure for each of the 23 ball bearings in the life tests
 
 
 
  
    
      86  | 
      146  | 
      251  | 
      653  | 
      98  | 
      249  | 
      400  | 
      292  | 
      131  | 
      169  | 
      175  | 
      176  | 
      76  | 
    
    
      264  | 
      15  | 
      364  | 
      195  | 
      262  | 
      88  | 
      264  | 
      157  | 
      220  | 
      42  | 
      321  | 
      180  | 
      198  | 
    
    
      38  | 
      20  | 
      61  | 
      121  | 
      282  | 
      224  | 
      149  | 
      180  | 
      325  | 
      250  | 
      196  | 
      90  | 
      229  | 
    
    
      166  | 
      38  | 
      337  | 
      65  | 
      151  | 
      341  | 
      40  | 
      40  | 
      135  | 
      597  | 
      246  | 
      211  | 
      180  | 
    
    
      93  | 
      315  | 
      353  | 
      571  | 
      124  | 
      279  | 
      81  | 
      186  | 
      497  | 
      182  | 
      423  | 
      185  | 
      229  | 
    
    
      400  | 
      338  | 
      290  | 
      398  | 
      71  | 
      246  | 
      185  | 
      188  | 
      568  | 
      55  | 
      55  | 
      61  | 
      244  | 
    
    
      20  | 
      284  | 
      393  | 
      396  | 
      203  | 
      829  | 
      239  | 
      236  | 
      286  | 
      194  | 
      277  | 
      143  | 
      198  | 
    
    
      264  | 
      105  | 
      203  | 
      124  | 
      137  | 
      135  | 
      350  | 
      193  | 
      188  | 
       | 
       | 
       | 
       | 
    
  
  Data Set 4 The data is from Picciotto 21 and arose in test on the cycle at which the Yarn failed. The data  are the number of cycles until failure of the yarn
 
 
 
  
    
      12  | 
      15  | 
      22  | 
      24  | 
      24  | 
      32  | 
      32  | 
      33  | 
      34  | 
      38  | 
      38  | 
      43  | 
      44  | 
    
    
      48  | 
      52  | 
      53  | 
      54  | 
      54  | 
      55  | 
      56  | 
      57  | 
      58  | 
      58  | 
      59  | 
      60  | 
      60  | 
    
    
      60  | 
      60  | 
      61  | 
      62  | 
      63  | 
      65  | 
      65  | 
      67  | 
      68  | 
      70  | 
      70  | 
      72  | 
      73  | 
    
    
      75  | 
      76  | 
      76  | 
      81  | 
      83  | 
      84  | 
      85  | 
      87  | 
      91  | 
      95  | 
      96  | 
      98  | 
      99  | 
    
    
      109  | 
      110  | 
      121  | 
      127  | 
      129  | 
      131  | 
      143  | 
      146  | 
      146  | 
      175  | 
      175  | 
      211  | 
      233  | 
    
    
      258  | 
      258  | 
      263  | 
      297  | 
      341  | 
      341  | 
      376  | 
       | 
       | 
       | 
       | 
       | 
       | 
    
  
  Data Set 5 This data represents the survival times  (in days) of 72 guinna pigs infected with virulent tubercle bacilli, observed  and reported by Bjerkedal22
 
 
 
  
    
      19(16)  | 
      20(15)  | 
      21(14)  | 
      22(9)  | 
      23(12)  | 
      24(10)  | 
      25(6)  | 
      26(9)  | 
       | 
       | 
       | 
    
    
      27(8)  | 
      28(5)  | 
      29(6)  | 
      30(4)  | 
      31(3)  | 
      32(4)  | 
      33  | 
      34  | 
      35(4)  | 
      36(2)  | 
      37(2)  | 
    
    
      39  | 
      42  | 
      44  | 
       | 
       | 
       | 
       | 
       | 
       | 
       | 
       | 
    
  
  Data Set 6 This data is related with behavioral sciences, collected by  Balakrishnan N et al.23 The scale “General  Rating of Affective Symptoms for Preschoolers (GRASP)” measures behavioral and  emotional problems of children, which can be classified with depressive  condition or not according to this scale. A study conducted by the  authors in a city  located at the south part of Chile has allowed collecting real data  corresponding to the scores of the GRASP scale of children with frequency in  parenthesis
 
 
 
  
    
      6.53  | 
      7  | 
      10.42  | 
      14.48  | 
      16.10  | 
      22.70  | 
      34  | 
      41.55  | 
      42  | 
      45.28  | 
      49.40  | 
      53.62  | 
      63  | 
    
    
      64  | 
      83  | 
      84  | 
      91  | 
      108  | 
      112  | 
      129  | 
      133  | 
      133  | 
      139  | 
      140  | 
      140  | 
      146  | 
    
    
      149  | 
      154  | 
      157  | 
      160  | 
      160  | 
      165  | 
      146  | 
      149  | 
      154  | 
      157  | 
      160  | 
      160  | 
      165  | 
    
    
      173  | 
      176  | 
      218  | 
      225  | 
      241  | 
      248  | 
      273  | 
      277  | 
      297  | 
      405  | 
      417  | 
      420  | 
      440  | 
    
    
      523  | 
      583  | 
      594  | 
      1101  | 
      1146  | 
      1417  | 
       | 
       | 
       | 
       | 
       | 
       | 
       | 
    
  
  Data Set 7 The data set reported by Efron24  represent the survival times of a group of patients suffering from Head and  Neck cancer disease and treated using radiotherapy (RT)
 
 
 
  
    
      12.20  | 
      23.56  | 
      23.7  | 
      25.9  | 
      31.98  | 
      37  | 
      41.35  | 
      47.38  | 
      55.46  | 
      58.36  | 
      63.47  | 
      68.46  | 
      78.3  | 
    
    
      74.5  | 
      81.43  | 
      84  | 
      92  | 
      94  | 
      110  | 
      112  | 
      119  | 
      127  | 
      130  | 
      133  | 
      140  | 
      146  | 
    
    
      155  | 
      159  | 
      173  | 
      179  | 
      194  | 
      195  | 
      209  | 
      249  | 
      281  | 
      319  | 
      339  | 
      432  | 
      469  | 
    
    
      519  | 
      633  | 
      725  | 
      817  | 
      1776  | 
       | 
       | 
       | 
       | 
       | 
       | 
       | 
       | 
    
  
  Data Set 8 The data set reported by Efron24  represent the survival times of a group of patients suffering from Head and  Neck cancer disease and treated using a combination of radiotherapy and  chemotherapy (RT+CT)
 
 
 
  
    
      0.08  | 
      2.09  | 
      3.48  | 
      4.87  | 
      6.94  | 
      8.66  | 
      13.11  | 
      23.63  | 
      0.20  | 
      2.23  | 
      3.52  | 
      4.98  | 
      6.97  | 
    
    
      9.02  | 
      13.29  | 
      0.40  | 
      2.26  | 
      3.57  | 
      5.06  | 
      7.09  | 
      9.22  | 
      13.80  | 
      25.74  | 
      0.50  | 
      2.46  | 
      3.64  | 
    
    
      5.09  | 
      7.26  | 
      9.47  | 
      14.24  | 
      25.82  | 
      0.51  | 
      2.54  | 
      3.70  | 
      5.17  | 
      7.28  | 
      9.74  | 
      14.76  | 
      6.31  | 
    
    
      0.81  | 
      2.62  | 
      3.82  | 
      5.32  | 
      7.32  | 
      10.06  | 
      14.77  | 
      32.15  | 
      2.64  | 
      3.88  | 
      5.32  | 
      7.39  | 
      10.34  | 
    
    
      14.83  | 
      34.26  | 
      0.90  | 
      2.69  | 
      4.18  | 
      5.34  | 
      7.59  | 
      10.66  | 
      15.96  | 
      36.66  | 
      1.05  | 
      2.69  | 
      4.23  | 
    
    
      5.41  | 
      7.62  | 
      10.75  | 
      16.62  | 
      43.01  | 
      1.19  | 
      2.75  | 
      4.26  | 
      5.41  | 
      7.63  | 
      17.12  | 
      46.12  | 
      1.26  | 
    
    
      2.83  | 
      4.33  | 
      5.49  | 
      7.66  | 
      11.25  | 
      17.14  | 
      79.05  | 
      1.35  | 
      2.87  | 
      5.62  | 
      7.87  | 
      11.64  | 
      17.36  | 
    
    
      1.40  | 
      3.02  | 
      4.34  | 
      5.71  | 
      7.93  | 
      11.79  | 
      18.10  | 
      1.46  | 
      4.40  | 
      5.85  | 
      8.26  | 
      11.98  | 
      19.13  | 
    
    
      1.76  | 
      3.25  | 
      4.50  | 
      6.25  | 
      8.37  | 
      12.02  | 
      2.02  | 
      3.31  | 
      4.51  | 
      6.54  | 
      8.53  | 
      12.03  | 
       | 
    
    
      20.28  | 
      2.02  | 
      3.36  | 
      6.76  | 
      12.07  | 
      21.73  | 
      2.07  | 
      3.36  | 
      6.93  | 
      8.65  | 
      12.63  | 
      22.69  | 
       | 
    
  
  Data set 9 This  data set represents remission times (in months) of a random sample of 128  bladder cancer patients reported in Lee & Wang25
 
 
 
  
  
  
    
      23  | 
      261  | 
      87  | 
      7  | 
      120  | 
      14  | 
      62  | 
      47  | 
      225  | 
      71  | 
      246  | 
      21  | 
      42  | 
      20  | 
    
    
       | 
      5  | 
      12  | 
      120  | 
      11  | 
      3  | 
      14  | 
      71  | 
      11  | 
      14  | 
      11  | 
      16  | 
      90  | 
      1  | 
    
    
       | 
      16  | 
      52  | 
      95  | 
       | 
       | 
       | 
       | 
       | 
       | 
       | 
       | 
       | 
       | 
    
  
  Data Set 10 This data set is given by Linhart & Zucchini,26 which represents the  failure times of the air conditioning system of an airplane
 
 
 
  
  
  
  
  
  
  
    
      5.1  | 
      1.2  | 
      1.3  | 
      0.6  | 
      0.5  | 
      2.4  | 
      0.5  | 
      1.1  | 
      8  | 
      0.8  | 
      0.4  | 
      0.6  | 
      0.9  | 
      0.4  | 
    
    
       | 
      2  | 
      0.5  | 
      5.3  | 
      3.2  | 
      2.7  | 
      2.9  | 
      2.5  | 
      2.3  | 
      1  | 
      0.2  | 
      0.1  | 
      0.1  | 
      1.8  | 
    
    
       | 
      0.9  | 
      2  | 
      4  | 
      6.8  | 
      1.2  | 
      0.4  | 
      0.2  | 
       | 
       | 
       | 
       | 
       | 
       | 
    
  
  Data Set 11 This data set used by Bhaumik et al.,27 is vinyl chloride data obtained  from clean up gradient monitoring wells in mg/l
 
 
 
  
  
  
  
  
    
      0.8  | 
      0.8  | 
      1.3  | 
      1.5  | 
      1.8  | 
      1.9  | 
      1.9  | 
      2.1  | 
      2.6  | 
      2.7  | 
      2.9  | 
      3.1  | 
      3.2  | 
    
    
      3.3  | 
      3.5  | 
      3.6  | 
      4.0  | 
      4.1  | 
      4.2  | 
      4.2  | 
      4.3  | 
      4.3  | 
      4.4  | 
      4.4  | 
      4.6  | 
      4.7  | 
    
    
      4.7  | 
      4.8  | 
      4.9  | 
      4.9  | 
      5.0  | 
      5.3  | 
      5.5  | 
      5.7  | 
      5.7  | 
      6.1  | 
      6.2  | 
      6.2  | 
      6.2  | 
    
    
      6.3  | 
      6.7  | 
      6.9  | 
      7.1  | 
      7.1  | 
      7.1  | 
      7.1  | 
      7.4  | 
      7.6  | 
      7.7  | 
      8.0  | 
      8.2  | 
      8.6  | 
    
    
      8.6  | 
      8.6  | 
      8.8  | 
      8.8  | 
      8.9  | 
      8.9  | 
      9.5  | 
      9.6  | 
      9.7  | 
      9.8  | 
      10.7  | 
      10.9  | 
      11.0  | 
    
    
      11.0  | 
      11.1  | 
      11.2  | 
      11.2  | 
      11.5  | 
      11.9  | 
      12.4  | 
      12.5  | 
      12.9  | 
      13.0  | 
      13.1  | 
      13.3  | 
      13.6  | 
    
    
      13.7  | 
      13.9  | 
      14.1  | 
      15.4  | 
      15.4  | 
      17.3  | 
      17.3  | 
      18.1  | 
      18.2  | 
      18.4  | 
      18.9  | 
      19.0  | 
      19.9  | 
    
    
      20.6  | 
      21.3  | 
      21.4  | 
      21.9  | 
      23.0  | 
      27.0  | 
      31.6  | 
      33.1  | 
      38.5  | 
       | 
       | 
       | 
       | 
    
  
  Data set 12 This data set represents the waiting times  (in minutes) before service of 100 Bank customers and examined and analyzed by Ghitany et al.8 for fitting the Lindley7 distribution.
 
 
 
  
    
      74  | 
      57  | 
      48  | 
      29  | 
      502  | 
      12  | 
      70  | 
      21  | 
      29  | 
      386  | 
      59  | 
      27  | 
      153  | 
      26  | 
    
    
       | 
      326  | 
       | 
       | 
       | 
       | 
       | 
       | 
       | 
       | 
       | 
       | 
       | 
       | 
    
  
  Data Set 13 This data is for the times between  successive failures of air conditioning equipment in a Boeing 720 airplane, Proschan28
 
 
 
  
    
      1.1  | 
      1.4  | 
      1.3  | 
      1.7  | 
      1.9  | 
      1.8  | 
      1.6  | 
      2.2  | 
      1.7  | 
      2.7  | 
      4.1  | 
      1.8  | 
      1.5  | 
      1.2  | 
    
    
       | 
      1.4  | 
      3  | 
      1.7  | 
      2.3  | 
      1.6  | 
      2  | 
       | 
       | 
       | 
       | 
       | 
       | 
       | 
    
  
  Data Set 14 This data set represents the lifetime’s  data relating to relief times (in minutes) of 20 patients receiving an  analgesic and reported by Gross & Clark29
 
 
 
  
    
      18.83  | 
      20.8  | 
      21.657  | 
      23.03  | 
      23.23  | 
      24.05  | 
      24.321  | 
      25.5  | 
      25.52  | 
      25.8  | 
      26.69  | 
      26.77  | 
      26.78  | 
    
    
      27.05  | 
      27.67  | 
      29.9  | 
      31.11  | 
      33.2  | 
      33.73  | 
      33.76  | 
      33.89  | 
      34.76  | 
      35.75  | 
      35.91  | 
      36.98  | 
      37.08  | 
    
    
      37.09  | 
      39.58  | 
      44.045  | 
      45.29  | 
      45.381  | 
       | 
       | 
       | 
       | 
       | 
       | 
       | 
       | 
    
  
  Data Set 15 This data set is the strength data of  glass of the aircraft window reported by Fuller et al.30
 
 
 
  
    
      1.312  | 
      1.314  | 
      1.479  | 
      1.552  | 
      1.700  | 
      1.803  | 
      1.861  | 
      1.865  | 
      1.944  | 
      1.958  | 
      1.966  | 
      1.997  | 
      2.006  | 
    
    
      2.021  | 
      2.027  | 
      2.055  | 
      2.063  | 
      2.098  | 
      2.140  | 
      2.179  | 
      2.224  | 
      2.240  | 
      2.253  | 
      2.270  | 
      2.272  | 
      2.274  | 
    
    
      2.301  | 
      2.301  | 
      2.359  | 
      2.382  | 
      2.382  | 
      2.426  | 
      2.434  | 
      2.435  | 
      2.478  | 
      2.490  | 
      2.511  | 
      2.514  | 
      2.535  | 
    
    
      2.554  | 
      2.566  | 
      2.570  | 
      2.586  | 
      2.629  | 
      2.633  | 
      2.642  | 
      2.648  | 
      2.684  | 
      2.697  | 
      2.726  | 
      2.770  | 
      2.773  | 
    
    
      2.800  | 
      2.809  | 
      2.818  | 
      2.821  | 
      2.848  | 
      2.880  | 
      2.954  | 
      3.012  | 
      3.067  | 
      3.084  | 
      3.090  | 
      3.096  | 
      3.128  | 
    
    
      3.233  | 
      3.433  | 
      3.585  | 
      3.858  | 
       | 
       | 
       | 
       | 
       | 
       | 
       | 
       | 
       | 
    
  
  Data Set 16 The  following data represent the tensile strength, measured in GPa, of 69 carbon  fibers tested under tension at gauge lengths of 20mm Bader  & Priest.31,32
 
 
 
  
  
 
Acknowledgments
 Conflicts of interest
  Author declares that there are no conflicts of  interest.
 
  
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