Research Article Volume 6 Issue 4
A simulation study on ishita distribution
Kamlesh Kumar Shukla, Rama Shanker
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Department of Statistics, Eritrea Institute of Technology, Eritrea
Correspondence: Rama Shanker, Department of Statistics, Eritrea Institute of Technology, Asmara, Eritrea
Received: October 06, 2017 | Published: October 23, 2017
Citation: Shukla KK, Shanker R. A simulation study on ishita distribution. Biom Biostat Int J. 2017;6(4):381-386. DOI: 10.15406/bbij.2017.06.00173
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Abstract
In this paper, a simulation study on Ishita distribution proposed by Shanker and Shukla1 has been carried out and presented. Average bias, mean square error and confidence interval of the parameter have been given for simulated data. Profile of likelihood estimator for the parameter has been illustrated graphically along with goodness of fit on real life time data. the goodness of fit has been established with an example from engineering and the fit has been compared with other one parameter lifetime distributions.
Introducton
A Simulation study is a computer programming which represent the real world based model. The accuracy of the simulation depends on the precision of the model. For example, suppose that the probability of head in a tossing a coin is unknown. The experiment of tossing a coin be perfomed
times repetitively to approximate the probability of head. That is
P(H)= Number of times head observed/ Number of times the experiment performed.
There are many situations where it is not possible to determine the probabilities by executing experiments a large number of times. Now a day using high level programming language R such problems are solved by generating random numbers to deal with problem.
It is crucial to generate random number for mathematical model especially probabilistic model. To use simulation, it is necessary to generate the sample random events that make up the model with the help of a computer to reproduce the process through which chance is generated in the actual situation. Thus, a problem that involves many interrelationships among random variables can evaluate as a function of given parameters.
During a short span of time a number of lifetime distributions have been introduced in statistical literature. The important one parameter classical lifetime distributions which are popular in statistics are exponential distribution and Lindley distribution introduced by Lindley.2 Ghitany et al.3 have detailed discussion about various properties of Lindley distribution along with the estimation of parameter and application. Shanker et al.4 have done extensive study on comparative study on modeling of lifetime data from biomedical science and engineering using exponential and Lindley distributions and concluded that there are several lifetime data where these classical distributions are not suitable due to their theoretical nature or application point of view. In search for new lifetime distributions which gives better fit than both exponential and Lindley distributions, Shanker5-7 has introduced four one parameter lifetime distributions namely, Shanker, Akash, Aradhana and Sujatha and showed that these lifetime distributions gives better fit than both exponential and Lindley distributions., In fact, it has been established by Shanker5-7 that these distributions have advantage over each other. The probability density function (pdf) and the cumulative distribution function (cdf) of exponential, Lindley, Shanker, Akash, Aradhana and Sujatha distributions are presented in table 1.
Distributions |
Probability density function(cdf) |
Cumulative distribution function (cdf) |
Ishita |
|
|
Sujatha |
|
|
Aradhana |
|
|
Akash |
|
|
Shanker |
|
|
Lindley |
|
|
Exponential |
|
|
Table 1 pdf and cdf of exponential, Lindley, Shanker, Akash, Aradhana, Sujatha and Ishita distributions (
)
Recently, Shanker and Shukla1 have proposed a new lifetime distribution named Ishita distribution for modeling lifetime distribution and showed that it gives better fit than exponential, Lindley, Shanker, Akash, Aradhana and Sujatha distributions. Detailed study about various mathematical and Statistical properties, estimation of parameter and applications of Ishita distribution are available in Shanker and Shukla.1
It seems that Ishita distribution has not been fully studied by Shanker and Shukla.1 In this paper firstly some graphs of pdf and cdf of Ishita distribution has been drawn for varying values of parameters to know its nature. Its coefficients of variation, skewness, kurtosis and index of dispersion have been studied graphically. A simulation study has been conducted and its average bias, mean square error and confidence interval have been presented for simulated data. Profile of the likelihood estimator for parameter along with its goodness of fit has been illustrated graphically. Finally an example has been discussed for testing goodness of fit of Ishita distribution along with other one parameter lifetime distributions.
Descriptive properties of ishita distribution
The graphs of pdf and cdf of Ishita distribution are shown in figure 1 and 2. From the graphs of pdf it is obvious that Ishita distribution is monotonically decreasing. As the value of parameter
increases, the graphs start upward but for increasing values of
it start decreasing at faster rate. Similarly the graphs of cdf shows that for increasing values of the parameter
, it becomes concave downward.
The coefficient of variation (C.V.), coefficient of skewness
, coefficient of kurtosis
and index of dispersion
of Ishita distribution obtained by Shanker and Shukla1 are given by
Figure 1 Graph of pdf of the Ishita distribution for different values of the parameter
.
Figure 2 Graphs cdf of Ishita distribution for different values of the parameter
.
Graphs of coefficient of variation, coefficient of skewness, coefficient of kurtosis and the index of dispersion of Ishita distribution are shown in figure 3. From the graphs it is obvious that coefficient of variation, coefficient of skewness and coefficient of kurtosis are initially increasing for increasing values of parameter
but later on start decreasing slowly for increasing values of parameter
. The graph of index of dispersion is decreasing for increasing values of parameter
.
Figure 3a Graphs of Coefficient of Variation, coefficient of Skewness, coefficient of Kurtosis and Index of dispersion of Ishita distribution for varying values of parameter
.
Figure 3b Estimated mean squared error of the MLEs for different values of
and
.
The plots between simulated and estimated values of parameter
are shown in figure 4.
A simulation study
In this section, we seek to evaluate the numerous properties of the proposed technique by performing a simulation study. This process consists in generating N=10,000 pseudo-random samples of sizes 20, 40, 60, 80, 100 from Ishita distribution. Acceptance and rejection method has been used for the simulation of data. Average bias and mean square error of the MLEs of the parameter
are estimated using the following formulae
The following algorithm can be used to generate random sample from Ishita distribution. The process to generate a random sample consists of running the algorithm as often as necessary, say
times.
Algorithm
Rejection method: To simulate from the density
, it is assumed that we have envelope density h from which it can simulate, and that we have some
such that
Simulate X from h.
- Generate
, where
- If
then return X, otherwise go back to step 1.
The average bias (mean square error) of simulated estimate of parameter
is presented in table 2.
|
Parameter
|
0.5 |
1 |
2 |
3 |
20 |
0.12529(0.1252) |
0.04534 (0.04113) |
-0.03517 (0.0247) |
-0.0987(0.19485) |
40 |
0.054755(0.11992) |
0.01868 (0.01396) |
-0.02022 (0.0163) |
-0.0515(0.10648) |
60 |
0.038151(0.08732) |
0.013337(0.01067) |
-0.0129 (0.00999) |
-0.0339(0.069003) |
80 |
0.028079(0.06307 |
0.00975 (0.00761) |
-0.0098(0.00773) |
-0.0255(0.05236) |
100 |
0.021859(0.047783) |
0.00748(0.00560) |
-0.0080(0.00653) |
-0.0206(0.04268) |
Table 2 Average bias (mean square error) of the simulated estimates of parameter
Values of the estimate of parameter, standard error, -2logL, AIC and Confidence Interval (C.I) for simulated data on N=10,000 for different values of parameter are presented in table 3.
|
Estimates of
|
S.E. |
-2logL |
AIC |
C. I. |
Lower |
Upper |
0.4 |
2.907545 |
0.0221610
|
1502.83
|
1504.83
|
2.86446
|
2.95133
|
0.5 |
2.486496
|
0.01728233 |
5975.21
|
5977.217
|
2.45288
|
2.52063 |
0.8 |
1.860619
|
0.010777 |
15372.96
|
15374.96 |
1.83963
|
1.88188 |
0.9 |
1.740233
|
0.0097021 |
17728.03
|
17730.03 |
1.721330
|
1.759362 |
1 |
1.641053
|
0.0088720 |
19840.31
|
19842.31 |
1.623761
|
1.65854 |
1.2 |
1.484858
|
0.00767496 |
23521.97
|
23523.97 |
1.469890
|
1.499976 |
1.5 |
1.314178
|
0.00652887 |
28113.48
|
28115.48 |
1.301434
|
1.327027 |
2.0 |
1.117259
|
0.00541481 |
34273.16
|
342735.16 |
1.106683
|
1.127909 |
2.5 |
0.9766439
|
0.00473939 |
39311.69
|
39313.69 |
0.9673826
|
0.9859608 |
3 |
0.8674364 |
0.004265468
|
43620.11
|
43622.11 |
0.8590990 |
0.8758194
|
Table 3 Values of estimate of parameter, standard error, -2logL, AIC and Confidence Interval for simulated data at N=10,000 on different values of
The graphs of estimated mean square error of the maximum likelihood estimate (MLE) for different values of parameter
and
have been shown in figure 3.
Data analysis
In this section Ishtita distribution has been used to model for data which is due to Birnbaum and Saunders8 on the fatique life of 6061-T6 aluminum coupons cut parallel to direction of rolling and oscillated at 18 cycles per second. The goodness of fit of the Ishita distribution has been compared with one parameter Akash, Sujatha, Shanker, Aradhana, Lindley and Exponential distributions.
Data Set: The data is given by Birnbaum and Saunders8 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 are presented below (after subtracting 65).
5 |
25 |
31 |
32 |
34 |
35 |
38 |
39 |
39 |
40 |
42 43 |
43 |
43 |
44 |
|
44 |
47 |
47 |
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 |
|
|
|
|
|
|
|
|
|
|
|
|
In order to compare the goodness of fit of Ishita with Akash, Shanker Sujatha, Aradhana, Lindley and exponential distributions,
, AIC (Akaike Information Criterion),) of distributions for real lifetime data set have been computed and presented in table 4. The formulae for computing AIC and K-S statistic as follows:
,
, where
the number of parameters,
= the sample size
, 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 and K-S statistics.
The fitted plot of one parameter lifetime distributions and profile of likelihood estimate of parameter plot for data set has been presented in figure 5.
Distributions |
Parameters estimates(
) |
S.E(
) |
-2logL |
AIC |
K-S |
Ishita |
0.04390977 |
0.002533 |
950.91 |
952.91 |
0.193 |
Akash |
0.0438789 |
0.002531 |
950.97 |
952.97 |
0.194 |
Sujatha |
0.0435654 |
0.002513 |
951.78 |
953.78 |
0.195 |
Aradhana |
0.0432677 |
0.002496 |
952.58 |
954.58 |
0.196 |
Shanker |
0.029263 |
0.002065 |
980.97 |
982.97 |
0.248 |
Lindley |
0.0288712 |
0.002039 |
983.10 |
985.10 |
0.252 |
Exponential |
0.014634 |
0.001456 |
1044.87 |
1046.87 |
0.367 |
Table 4 MLEs
,SE(
,-2logL,AIC and K-S statistic for one parameter lifetime distributions
Figure 4 Plot between simulated values of theta and estimated values of theta.
Figure 5 Fitted plot of distributions and profile of likelihood estimate of parameter plot for data set.
Conclusions
A simulation study on Ishita distribution proposed by Shanker and Shukla1 has been discussed and presented. Average bias, mean square error and confidence interval of the parameter have been studied for simulated data from Ishita distribution. Profile of likelihood estimator for the parameter has been illustrated graphically. The goodness of fit for Ishita distribution has been discussed with an example from engineering and the fit has been compared with some one parameter lifetime distributions. The goodness of fit of Ishita distribution shows that it can be considered an important lifetime distribution for modeling lifetime data from engineering.
Acknowledgments
Conflicts of interest
References
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