SlideShare ist ein Scribd-Unternehmen logo
1 von 27
Presented By
Iqra Sardar†
Syed Masroor Anwar
Prof. Dr. Muhammad Aslam
DEPARTMENT OF MATHEMATICS AND STATISTICS
RIPHAH INTERNATIONAL UNIVERSITY,
ISLAMABAD, PAKISTAN
Email: iqrahusan@gmail.com†
16th International Conference on Statistical Sciences:
At Department of Statistics
Islamia College, Peshawar Khyber Pakhtunkhwa, Pakistan
Comparison of Bayesian and non-Bayesian estimations for
Type-II censored Generalized Rayleigh distribution
ABSTRACT
In this paper, we compare Bayesian and non-Bayesian estimations for the unknown parameters of
Generalized Rayleigh distribution under Type-II censoring schemes. First we deal with non-Bayesian
method namely maximum likelihood estimation along with their asymptotic confidence intervals with a
given coverage probability. Further we consider the Bayesian estimates of unknown parameters under
different loss functions. As Bayes estimators cannot be obtained in nice closed form. We use Lindley’s
approximation. Monte Carlo simulation study is carried out to compare different methods and the
performance of the estimates is judged by the mean squared error values. All the numerically
computations are performed in R software. Finally, a real life data set analysis is performed for the
illustration purpose.
KEYWORDS
Generalized Rayleigh distribution; Type-II censoring; Bayesian and non-Bayesian estimations;
Symmetric and asymmetric loss functions; Lindley’s approximation.
Burr (1942) introduced twelve different forms of cumulative distributions
functions for modeling life time data.
Many researchers examined the single parameter Burr type X model by putting
scale parameter λ=1. Recently, the single parameter distribution of the
extended Burr type X by
Surles and Padgett (2001) introduce two parameters Burr type X
distribution and correctly named as the Generalized Rayleigh
distribution.
Applications of the Generalized Rayleigh distribution
The Generalized Rayleigh distribution can be used to:
 Life testing.
 Failure time of machines
 Communication Engineering.
 Speed of Gas Molecules
Kundu and Raqab (2005,2007) have discussed the different techniques of
estimation of the parameters and further properties of GR distribution.
(1.1)
Generalized Rayleigh distribution
1.1 Model Analysis Probability density function (pdf):
12 2( ) ( )2( ; , ) 2 1 ; , , 0
x xf xe e x

     

      
 
x
Fig. 1 The pdf of GR Distribution For
different values of α and λ
(1.2)
The Survival /Reliability function (sf):
(1.3)
Cumulative distribution function (cdf):
2( )( ; , ) 1 ; , , 0xF e x

   
     
 
x
2( )
1 1( ; , ) ; , , 0x
eS x

   
 
 
   
 
x
(1.4)
The hazard rate function (hrf):
2 2( ) ( )22 1
( ; , ) ; , , 0
2( )1 1
x xxe e
h x
xe

 
   


    
  
    
 
x
Fig. 2 The hrf of GR Distribution For
different values of α and λ
 Aims of Papers
Derive the non-Bayesian method namely maximum likelihood
estimation
Bayes estimates under different loss functions; squared error (SE)
loss function and LINEX loss function based on Type-II censoring
scheme
The comparison of the different estimators have been obtained.
The informative and non-informative priors in different Loss
functions to compute the Bayes estimators of GR parameters.
One real data set has been presented.
Let denotes type-II censored observations from a sample
of r failure units under consideration and the other (n-r) items are
functioning till the end of experiment and they are censored.
The Likelihood function is
Methods of Estimation
Maximum Likelihood Estimation
The log likelihood function is
 2
( )
2( )
1 1
2 2( ; , ) ln ! ln( )! ln 2 ln 2 ln ln
1 1
( 1) ln 1 ( )ln
1
ix x
e
r r
L n n r r r r x xi i
i i
r
re n r
i



    
  
 
        
 
               
x
 To obtain the MLE’s
Approximate Confidence Intervals
2 2
ˆ ˆˆ ˆvar( ) & var( )z z     
Loss
Function
Expression of Loss
Function
Bayes Estimator
SELF 𝜃 − 𝜃∗ 2
𝐸 𝜃|𝐱(𝜃
LLF 𝑒 𝑐(𝜃∗−𝜃
− 𝑐(𝜃∗
− 𝜃 − 1
−
1
𝑐
ln 𝐸 𝜃|𝑥 𝑒−𝑐𝜃
Types of loss functions are given in the table.
Mean Square Errors
𝑀𝑆𝐸 𝜃 = 𝜃𝑖 − 𝜃
2
𝑘
𝑖=1
𝑘
We assumed the following joint density of proposed gamma
priors for α and λ
are the hyper-parameters.
(Berger and Sun, 1993; Kundu, 2008;
Wahed, 2006; Kundu and Pradhan, 2009;
Shrestha and Kumar, 2014).
Prior Distribution
1 2 1 2, , ,a a b b
1 2 2 11 1
( , ) a a b b
g e  
      

. For all the censoring schemes, we have used 𝛂 = 0.5 and 𝛌 = 1. First we considered the non-informative
prior for both  and, i.e 1 2 1 2 0a a b b   
.
In this case the priors becomes improper. We call this
prior as Prior-I. We have taken one informative priors, namely Prior-II: 1 2 1 21, 2.a a b b   
Bayesian Method of Estimation
The joint posterior density function of α and λ can be written as;
Bayes estimator using Lindley’s Approximation
the posterior expectation is expressible in the form of
ratio of integral as follow:
𝑢(𝛼, 𝜆 = is a function of α and λ only
𝐿(𝛼, 𝜆 = Log-Likelihood function and
𝐺(𝛼, 𝜆 = Log of joint prior density
1 2
1 2
0 0
( | , ) ( ) ( )
( , | )
( | , ) ( ) ( )
L g g
p
L g g d d
   
 
     
 


x
x
x
( , ) ( , )
( , ) ( , )
( , ) ( , )
( , )
( ) ( , | )
L G
L G
u e d
e d
I X E
   
   
   
 
 


  

x
 According to D.V Lindley (1980), if ML estimates of the parameters
are available and n is sufficiently large then the above ratio
integral can be approximated as:
 
   
   
  
 
ˆˆ ˆ2
ˆ ˆˆ ˆ ˆ ˆ ˆ ˆ2 2
ˆˆ( ) , 0.5
ˆˆ ˆ ˆ ˆ2
ˆ ˆ ˆ ˆˆ ˆ ˆ ˆ ˆ ˆ ˆ ˆ
0.5
ˆ ˆ ˆ ˆˆ ˆ ˆ ˆ ˆ ˆ ˆ
u u
u u u u
I X u
u u
u u L L L L
u u L L L L
  
      
   
          
         

   
 
  
     
    
 
 
  

  
 
  
   

    ˆ
 
 
 
 
 
 The Bayes estimator of under SELF is given by
The Bayes estimator of under SELF is given by
 Bayesian Estimation under Squared Error Loss Function

* 1
1
ˆ
1 ˆ ˆˆ ˆ ˆ ˆ ˆ( ) 0.5( ))]
ˆcSELF cMLE
a
b L L           



   

* 2
2
1ˆ ˆ ˆˆ ˆ ˆ ˆ ˆ( ) 0.5( ))]
ˆcSELF cMLE
a
b L L            


    
Bayesian Estimation under LINEX Loss Function
 Bayesian Estimation 0f under LINEX Loss Function
 The Bayes estimator of under LLF is given by
 
*
2
2
ˆ
1
ˆ ˆ
ˆ1 2ˆ ln 1
1 ˆ ˆˆ ˆ ˆ
2
cLINEX MLE
a c
b
c
c
L L 
 
   


 

  
   
         
  
    

 
  
 
 
*
1
1
2
1
ˆ ˆ
ˆ1 2ˆ ln 1
1 ˆ ˆˆ ˆ ˆ
2
cLINEX MLE
a c
b
c
c
L L
 
   
 
 
  
   
         
  
    

 
  
 
Table.1 Average Estimates and the associated MSEs of the MLE and the
Bayes estimates of 𝛂 = 0.5 and 𝛌=1 (Prior-I)
Scheme MLE SELF LLF
20
10% ˆ
ˆ
0.65301 (0.03878)
1.39513 (0.12710)
0.64567 (0.03653)
1.38793 (0.12353)
0.63486 (0.03302)
1.37127 (0.11519)
20% 0.71793 (0.06550)
1.70383 (0.33302)
0.71101 (0.06427)
1.69512 (0.32576)
0.69384 (0.05509)
1.66787 (0.30276)
40
10% ˆ
ˆ
0.60527 (0.01720)
1.35927 (0.08579)
0.60246 (0.01666)
1.35564 (0.08430)
0.59803 (0.01583)
1.34767 (0.08109)
20% 0.65247 (0.02872)
1.65889 (0.25491)
0.64907 (0.02782)
1.65407 (0.25142)
0.64302 (0.02622)
1.64092 (0.24196)
80
10% ˆ
ˆ
0.58227 (0.00733)
1.33685 (0.06659)
0.58106 (0.00719)
1.33503 (0.06594)
0.57905 (0.00697)
1.33117 (0.06455)
20% 0.61971 (0.01261)
1.62560 (0.21309)
0.61822 (0.01238)
1.62311 (0.21146)
0.61561 (0.01197)
1.61674 (0.20728)
ˆ
ˆ
ˆ
ˆ
ˆ
ˆ
Note: For each scheme, first entry represents average estimates and MSE within Brackets
Table .2 Average Estimates and the associated MSEs of the MLE and the
Bayes estimates of 𝛂 = 0.5 and 𝛌=1 (Prior-II)
Scheme SELF LLF
20
10% ˆ
ˆ
0.61829 (0.02801)
1.34881 (0.10441)
0.61785 (0.02815)
1.34680 (0.10373)
20% 0.67057 (0.04516)
1.63244 (0.27397)
0.66975 (0.04523)
1.63003 (0.27283)
40
10% ˆ
ˆ
0.59163 (0.01467)
1.33706 (0.07692)
0.59095 (0.01457)
1.33564 (0.07639)
20% 0.63453 (0.02405)
1.62403 (0.23006)
0.63359 (0.02386)
1.62178 (0.22857)
80
10% ˆ
ˆ
0.57622 (0.00667)
1.32604 (0.06273)
0.57585 (0.00663)
1.32525 (0.06246)
20% 0.61198 (0.01142)
1.60859 (0.20200)
0.61150 (0.01135)
1.60726 (0.20115)
ˆ
ˆ
ˆ
ˆ
ˆ
ˆ
The Findings of the Simulation Study
 The Lindley Bayes estimates under different loss functions
performance better than non-Bayesian estimates.
 The estimated values of the parameters converge to the
true values by increasing the sample size under both cases.
 The estimates under LLF are having the best convergence
among all loss functions.
 The informative priors provide better convergence than
non-informative priors.
 By increase the censoring rate the MSEs of estimates under
both (informative and noninformative) priors increases.
The data represent the number of million revolutions before failure for
each of the 23 ball bearings in the life test (Lawless; 1982, p.228).
Gupta and Kundu (2001) have analyzed this data set and GR distribution
works affectively.
Ball bearings lifetime data set
17.88, 28.92, 33.00, 41.52, 42.12, 45.60, 48.80, 51.84, 51.96, 54.12, 55.56, 67.80,
68.64, 68.64, 68.88, 84.12, 93.12, 98.64, 105.12, 105.84, 127.92, 128.04, 173.40
One-sample Kolmogorov-Smirnov test
data: x
D = 0.1572, p-value = 0.6208
alternative hypothesis: two-sided
The fit is good at 0.05 significance level.
Table 4. MLE and Bayes estimates with respect to different loss functions when Prior-I is used.
Estimates MLE
Lindley Bayes Estimates
SELF LLF
10% ˆ
ˆ
1.95066
0.01852
1.91456
0.01846
1.84184
0.01848
20% ˆ
ˆ
2.21545
0.02089
2.17826
0.02084
2.06717
0.02085
Table 5. MLE and Bayes estimates with respect to different loss functions when Prior-II is used.
Estimates MLE
Lindley Bayes Estimates
SELF LLF
10% ˆ
ˆ
1.95066
0.01852
1.72628
0.01846
1.74294
0.01848
20% ˆ
ˆ
2.21545
0.02089
1.89572
0.02083
1.93122
0.02085
 The Lindley Bayes estimates performance better than non-
Bayesian estimates (MLE).
 The performance of Bayes estimates under LLF is better than
SELF.
 By increase the censoring rate the estimates under both
(informative and noninformative) priors increases.
 Informative prior is better prior for the estimation of shape
and scale parameters of the GR distribution.
The Findings of the Real life Data
 The informative priors are superior to non-
informative priors.
 The Bayesian estimation can be preferred
than non-Bayesian estimation.
 The LLF provides the better convergence.
1. Surles, J.G. and Padgett, W.J. (2001), Inference for Reliability and Stress-
Strength
for a Scaled Burr X distribution, Lifetime Data Analysis, vol.7, 187-200.
2. Sartawi, H.A. and Abu-Salih, M.S. (1991). Bayes prediction bounds for the
Burr type
X model, Communications in Statistics - Theory and Methods, 20, 2307-2330.
3. Jaheen. Z.F. (1996). Empirical Bayes estimation of the reliability and failure
rate func-
tions of the Burr type X failure model, Journal of Applied Statistical Sciences, 3,
281-288.
4. Ahmad, K.E., Fakhry, M.E. and Jaheen, Z.F. (1997). Empirical Bayes
estimation of
P(Y < X) and characterization of Burr-type X model, Journal of Statistical
Planning
and Inference, 64, 297-308.
5. Raqab, M.Z. (1998). Order statistics from the Burr type X model, Computers
Mathe-
matics and Applications, 36, 111-120.
6. Surles, J.G. and Padgett, W.J. (1998). Inference for P(Y < X) in the Burr
type X
model, Journal of Applied Statistical Science, 7, 225-238.
7. Kundu,D. and Raqab,M.Z.(2013). Estimation of R = P[Y < X] for Three
Parameter Generalized Rayleigh Distribution, Journal of Statistical Computation
and Simulation, 83(10),1-22.
8. Aludaat, K. M., Alodat, M. T. and Alodat, T. T. (2008). Parameter
Estimation of Burr Type X Distribution for Grouped Data, Applied Mathematical
Sciences, 2(9), 415 – 423.
9. Al-khedhairi A., Sarhan A., and Tadj L.,(2008)"Estimation of the
Generalized Rayleigh Distribution Parameters”, International Journal of Reliability
and Applications, 7(1), 1-12.
10. Raqab,M.Z., Madi,M.T., and Kundu,D.(2008).Estimation of P(Y < X) for the
3-Parameter Generalized Exponential Distribution,Communications in Statistics -
Theory and Methods,37(18), 2854-2864.
11. AL- Naqeeb,A.A. and Hamed, A. M .(2009). Estimation of the Two
Parameters for Generalized Rayleigh Distribution Function Using Simulation
Technique, IBN AL- HAITHAM J. FO R PURE & APPL. SC I.,22(4),246-256.
12. Siddiqui,M.M. (1964).Statistical Inference for Rayleigh Distributions, RADIO
SCIENCE Journal of Research NBSJUSNC-URSI, 68(9),1005-1010.
13. Feroze, N. and Aslam,M.(2012). Bayesian Analysis of Exponentiated
Gamma Distribution under Type II Censored Samples, International Journal of
Advanced Science and Technology, 49, 37-46.
14. Khan,M.H.R.(2012). Estimating Predictive Inference for Responses from the
Generalized Rayleigh Model based on Complete Sample, Thailand Statistician,
10(1), 53-68.
Comparison of Bayesian and non-Bayesian estimations for  Type-II censored Generalized Rayleigh distribution

Weitere ähnliche Inhalte

Was ist angesagt?

HYBRID SYNCHRONIZATION OF LIU AND LÜ CHAOTIC SYSTEMS VIA ADAPTIVE CONTROL
HYBRID SYNCHRONIZATION OF LIU AND LÜ CHAOTIC SYSTEMS VIA ADAPTIVE CONTROLHYBRID SYNCHRONIZATION OF LIU AND LÜ CHAOTIC SYSTEMS VIA ADAPTIVE CONTROL
HYBRID SYNCHRONIZATION OF LIU AND LÜ CHAOTIC SYSTEMS VIA ADAPTIVE CONTROLijait
 
Independent component analysis
Independent component analysisIndependent component analysis
Independent component analysisVanessa S
 
Dem 7263 fall 2015 spatially autoregressive models 1
Dem 7263 fall 2015   spatially autoregressive models 1Dem 7263 fall 2015   spatially autoregressive models 1
Dem 7263 fall 2015 spatially autoregressive models 1Corey Sparks
 
ANTI-SYNCHRONIZATION OF HYPERCHAOTIC WANG AND HYPERCHAOTIC LI SYSTEMS WITH UN...
ANTI-SYNCHRONIZATION OF HYPERCHAOTIC WANG AND HYPERCHAOTIC LI SYSTEMS WITH UN...ANTI-SYNCHRONIZATION OF HYPERCHAOTIC WANG AND HYPERCHAOTIC LI SYSTEMS WITH UN...
ANTI-SYNCHRONIZATION OF HYPERCHAOTIC WANG AND HYPERCHAOTIC LI SYSTEMS WITH UN...ijcseit
 
Lesson 6 coefficient of determination
Lesson 6   coefficient of determinationLesson 6   coefficient of determination
Lesson 6 coefficient of determinationMehediHasan1023
 
Eigenvalues for HIV-1 dynamic model with two delays
Eigenvalues for HIV-1 dynamic model with two delaysEigenvalues for HIV-1 dynamic model with two delays
Eigenvalues for HIV-1 dynamic model with two delaysIOSR Journals
 
Bayes estimators for the shape parameter of pareto type i
Bayes estimators for the shape parameter of pareto type iBayes estimators for the shape parameter of pareto type i
Bayes estimators for the shape parameter of pareto type iAlexander Decker
 
Independent Component Analysis
Independent Component Analysis Independent Component Analysis
Independent Component Analysis Ibrahim Amer
 
A statistical criterion for reducing indeterminacy in linear causal modeling
A statistical criterion for reducing indeterminacy in linear causal modelingA statistical criterion for reducing indeterminacy in linear causal modeling
A statistical criterion for reducing indeterminacy in linear causal modelingGianluca Bontempi
 
Sequential Extraction of Local ICA Structures
Sequential Extraction of Local ICA StructuresSequential Extraction of Local ICA Structures
Sequential Extraction of Local ICA Structurestopujahin
 
On Continuous Approximate Solution of Ordinary Differential Equations
On Continuous Approximate Solution of Ordinary Differential EquationsOn Continuous Approximate Solution of Ordinary Differential Equations
On Continuous Approximate Solution of Ordinary Differential EquationsWaqas Tariq
 
A New SDM Classifier Using Jaccard Mining Procedure (CASE STUDY: RHEUMATIC FE...
A New SDM Classifier Using Jaccard Mining Procedure (CASE STUDY: RHEUMATIC FE...A New SDM Classifier Using Jaccard Mining Procedure (CASE STUDY: RHEUMATIC FE...
A New SDM Classifier Using Jaccard Mining Procedure (CASE STUDY: RHEUMATIC FE...Soaad Abd El-Badie
 
A new sdm classifier using jaccard mining procedure case study rheumatic feve...
A new sdm classifier using jaccard mining procedure case study rheumatic feve...A new sdm classifier using jaccard mining procedure case study rheumatic feve...
A new sdm classifier using jaccard mining procedure case study rheumatic feve...ijbbjournal
 
Adaptive Controller Design For The Synchronization Of Moore-Spiegel And Act S...
Adaptive Controller Design For The Synchronization Of Moore-Spiegel And Act S...Adaptive Controller Design For The Synchronization Of Moore-Spiegel And Act S...
Adaptive Controller Design For The Synchronization Of Moore-Spiegel And Act S...ijcsa
 
Stress-Strength Reliability of type II compound Laplace distribution
Stress-Strength Reliability of type II compound Laplace distributionStress-Strength Reliability of type II compound Laplace distribution
Stress-Strength Reliability of type II compound Laplace distributionIRJET Journal
 
Financial Time Series Analysis Based On Normalized Mutual Information Functions
Financial Time Series Analysis Based On Normalized Mutual Information FunctionsFinancial Time Series Analysis Based On Normalized Mutual Information Functions
Financial Time Series Analysis Based On Normalized Mutual Information FunctionsIJCI JOURNAL
 

Was ist angesagt? (18)

HYBRID SYNCHRONIZATION OF LIU AND LÜ CHAOTIC SYSTEMS VIA ADAPTIVE CONTROL
HYBRID SYNCHRONIZATION OF LIU AND LÜ CHAOTIC SYSTEMS VIA ADAPTIVE CONTROLHYBRID SYNCHRONIZATION OF LIU AND LÜ CHAOTIC SYSTEMS VIA ADAPTIVE CONTROL
HYBRID SYNCHRONIZATION OF LIU AND LÜ CHAOTIC SYSTEMS VIA ADAPTIVE CONTROL
 
Independent component analysis
Independent component analysisIndependent component analysis
Independent component analysis
 
Dem 7263 fall 2015 spatially autoregressive models 1
Dem 7263 fall 2015   spatially autoregressive models 1Dem 7263 fall 2015   spatially autoregressive models 1
Dem 7263 fall 2015 spatially autoregressive models 1
 
ANTI-SYNCHRONIZATION OF HYPERCHAOTIC WANG AND HYPERCHAOTIC LI SYSTEMS WITH UN...
ANTI-SYNCHRONIZATION OF HYPERCHAOTIC WANG AND HYPERCHAOTIC LI SYSTEMS WITH UN...ANTI-SYNCHRONIZATION OF HYPERCHAOTIC WANG AND HYPERCHAOTIC LI SYSTEMS WITH UN...
ANTI-SYNCHRONIZATION OF HYPERCHAOTIC WANG AND HYPERCHAOTIC LI SYSTEMS WITH UN...
 
Lesson 6 coefficient of determination
Lesson 6   coefficient of determinationLesson 6   coefficient of determination
Lesson 6 coefficient of determination
 
Eigenvalues for HIV-1 dynamic model with two delays
Eigenvalues for HIV-1 dynamic model with two delaysEigenvalues for HIV-1 dynamic model with two delays
Eigenvalues for HIV-1 dynamic model with two delays
 
Bayes estimators for the shape parameter of pareto type i
Bayes estimators for the shape parameter of pareto type iBayes estimators for the shape parameter of pareto type i
Bayes estimators for the shape parameter of pareto type i
 
Independent Component Analysis
Independent Component Analysis Independent Component Analysis
Independent Component Analysis
 
A statistical criterion for reducing indeterminacy in linear causal modeling
A statistical criterion for reducing indeterminacy in linear causal modelingA statistical criterion for reducing indeterminacy in linear causal modeling
A statistical criterion for reducing indeterminacy in linear causal modeling
 
Paper 7 (s.k. ashour)
Paper 7 (s.k. ashour)Paper 7 (s.k. ashour)
Paper 7 (s.k. ashour)
 
Sequential Extraction of Local ICA Structures
Sequential Extraction of Local ICA StructuresSequential Extraction of Local ICA Structures
Sequential Extraction of Local ICA Structures
 
On Continuous Approximate Solution of Ordinary Differential Equations
On Continuous Approximate Solution of Ordinary Differential EquationsOn Continuous Approximate Solution of Ordinary Differential Equations
On Continuous Approximate Solution of Ordinary Differential Equations
 
Estimation of Social Interaction Models: A Bayesian Approach
Estimation of Social Interaction Models: A Bayesian ApproachEstimation of Social Interaction Models: A Bayesian Approach
Estimation of Social Interaction Models: A Bayesian Approach
 
A New SDM Classifier Using Jaccard Mining Procedure (CASE STUDY: RHEUMATIC FE...
A New SDM Classifier Using Jaccard Mining Procedure (CASE STUDY: RHEUMATIC FE...A New SDM Classifier Using Jaccard Mining Procedure (CASE STUDY: RHEUMATIC FE...
A New SDM Classifier Using Jaccard Mining Procedure (CASE STUDY: RHEUMATIC FE...
 
A new sdm classifier using jaccard mining procedure case study rheumatic feve...
A new sdm classifier using jaccard mining procedure case study rheumatic feve...A new sdm classifier using jaccard mining procedure case study rheumatic feve...
A new sdm classifier using jaccard mining procedure case study rheumatic feve...
 
Adaptive Controller Design For The Synchronization Of Moore-Spiegel And Act S...
Adaptive Controller Design For The Synchronization Of Moore-Spiegel And Act S...Adaptive Controller Design For The Synchronization Of Moore-Spiegel And Act S...
Adaptive Controller Design For The Synchronization Of Moore-Spiegel And Act S...
 
Stress-Strength Reliability of type II compound Laplace distribution
Stress-Strength Reliability of type II compound Laplace distributionStress-Strength Reliability of type II compound Laplace distribution
Stress-Strength Reliability of type II compound Laplace distribution
 
Financial Time Series Analysis Based On Normalized Mutual Information Functions
Financial Time Series Analysis Based On Normalized Mutual Information FunctionsFinancial Time Series Analysis Based On Normalized Mutual Information Functions
Financial Time Series Analysis Based On Normalized Mutual Information Functions
 

Ähnlich wie Comparison of Bayesian and non-Bayesian estimations for Type-II censored Generalized Rayleigh distribution

Estimation of mean and its function using asymmetric loss function
Estimation of mean and its function using asymmetric loss function Estimation of mean and its function using asymmetric loss function
Estimation of mean and its function using asymmetric loss function ijscmcj
 
Estimation of mean and its function using asymmetric loss function
Estimation of mean and its function using asymmetric loss functionEstimation of mean and its function using asymmetric loss function
Estimation of mean and its function using asymmetric loss functionijscmcj
 
Survival and hazard estimation of weibull distribution based on
Survival and hazard estimation of weibull distribution based onSurvival and hazard estimation of weibull distribution based on
Survival and hazard estimation of weibull distribution based onAlexander Decker
 
STATISTICAL ANALYSIS OF FUZZY LINEAR REGRESSION MODEL BASED ON DIFFERENT DIST...
STATISTICAL ANALYSIS OF FUZZY LINEAR REGRESSION MODEL BASED ON DIFFERENT DIST...STATISTICAL ANALYSIS OF FUZZY LINEAR REGRESSION MODEL BASED ON DIFFERENT DIST...
STATISTICAL ANALYSIS OF FUZZY LINEAR REGRESSION MODEL BASED ON DIFFERENT DIST...Wireilla
 
8 ijaems jan-2016-20-multi-attribute group decision making of internet public...
8 ijaems jan-2016-20-multi-attribute group decision making of internet public...8 ijaems jan-2016-20-multi-attribute group decision making of internet public...
8 ijaems jan-2016-20-multi-attribute group decision making of internet public...INFOGAIN PUBLICATION
 
STATISTICAL ANALYSIS OF FUZZY LINEAR REGRESSION MODEL BASED ON DIFFERENT DIST...
STATISTICAL ANALYSIS OF FUZZY LINEAR REGRESSION MODEL BASED ON DIFFERENT DIST...STATISTICAL ANALYSIS OF FUZZY LINEAR REGRESSION MODEL BASED ON DIFFERENT DIST...
STATISTICAL ANALYSIS OF FUZZY LINEAR REGRESSION MODEL BASED ON DIFFERENT DIST...ijfls
 
Count-Distinct Problem
Count-Distinct ProblemCount-Distinct Problem
Count-Distinct ProblemKai Zhang
 
Applied numerical methods lec8
Applied numerical methods lec8Applied numerical methods lec8
Applied numerical methods lec8Yasser Ahmed
 
Sparse data formats and efficient numerical methods for uncertainties in nume...
Sparse data formats and efficient numerical methods for uncertainties in nume...Sparse data formats and efficient numerical methods for uncertainties in nume...
Sparse data formats and efficient numerical methods for uncertainties in nume...Alexander Litvinenko
 
Formulas for Surface Weighted Numbers on Graph
Formulas for Surface Weighted Numbers on GraphFormulas for Surface Weighted Numbers on Graph
Formulas for Surface Weighted Numbers on Graphijtsrd
 
Lecture 2: Stochastic Hydrology
Lecture 2: Stochastic Hydrology Lecture 2: Stochastic Hydrology
Lecture 2: Stochastic Hydrology Amro Elfeki
 
Auto Regressive Process (1) with Change Point: Bayesian Approch
Auto Regressive Process (1) with Change Point: Bayesian ApprochAuto Regressive Process (1) with Change Point: Bayesian Approch
Auto Regressive Process (1) with Change Point: Bayesian ApprochIJRESJOURNAL
 
The Positive Effects of Fuzzy C-Means Clustering on Supervised Learning Class...
The Positive Effects of Fuzzy C-Means Clustering on Supervised Learning Class...The Positive Effects of Fuzzy C-Means Clustering on Supervised Learning Class...
The Positive Effects of Fuzzy C-Means Clustering on Supervised Learning Class...CSCJournals
 
The Positive Effects of Fuzzy C-Means Clustering on Supervised Learning Class...
The Positive Effects of Fuzzy C-Means Clustering on Supervised Learning Class...The Positive Effects of Fuzzy C-Means Clustering on Supervised Learning Class...
The Positive Effects of Fuzzy C-Means Clustering on Supervised Learning Class...Waqas Tariq
 

Ähnlich wie Comparison of Bayesian and non-Bayesian estimations for Type-II censored Generalized Rayleigh distribution (20)

Estimation of mean and its function using asymmetric loss function
Estimation of mean and its function using asymmetric loss function Estimation of mean and its function using asymmetric loss function
Estimation of mean and its function using asymmetric loss function
 
Estimation of mean and its function using asymmetric loss function
Estimation of mean and its function using asymmetric loss functionEstimation of mean and its function using asymmetric loss function
Estimation of mean and its function using asymmetric loss function
 
Survival and hazard estimation of weibull distribution based on
Survival and hazard estimation of weibull distribution based onSurvival and hazard estimation of weibull distribution based on
Survival and hazard estimation of weibull distribution based on
 
STATISTICAL ANALYSIS OF FUZZY LINEAR REGRESSION MODEL BASED ON DIFFERENT DIST...
STATISTICAL ANALYSIS OF FUZZY LINEAR REGRESSION MODEL BASED ON DIFFERENT DIST...STATISTICAL ANALYSIS OF FUZZY LINEAR REGRESSION MODEL BASED ON DIFFERENT DIST...
STATISTICAL ANALYSIS OF FUZZY LINEAR REGRESSION MODEL BASED ON DIFFERENT DIST...
 
8 ijaems jan-2016-20-multi-attribute group decision making of internet public...
8 ijaems jan-2016-20-multi-attribute group decision making of internet public...8 ijaems jan-2016-20-multi-attribute group decision making of internet public...
8 ijaems jan-2016-20-multi-attribute group decision making of internet public...
 
STATISTICAL ANALYSIS OF FUZZY LINEAR REGRESSION MODEL BASED ON DIFFERENT DIST...
STATISTICAL ANALYSIS OF FUZZY LINEAR REGRESSION MODEL BASED ON DIFFERENT DIST...STATISTICAL ANALYSIS OF FUZZY LINEAR REGRESSION MODEL BASED ON DIFFERENT DIST...
STATISTICAL ANALYSIS OF FUZZY LINEAR REGRESSION MODEL BASED ON DIFFERENT DIST...
 
1388585341 5527874
1388585341  55278741388585341  5527874
1388585341 5527874
 
201977 1-1-4-pb
201977 1-1-4-pb201977 1-1-4-pb
201977 1-1-4-pb
 
Count-Distinct Problem
Count-Distinct ProblemCount-Distinct Problem
Count-Distinct Problem
 
AJMS_6(1)_2022_Jan-Mar.pdf
AJMS_6(1)_2022_Jan-Mar.pdfAJMS_6(1)_2022_Jan-Mar.pdf
AJMS_6(1)_2022_Jan-Mar.pdf
 
01_AJMS_329_22_Revised.pdf
01_AJMS_329_22_Revised.pdf01_AJMS_329_22_Revised.pdf
01_AJMS_329_22_Revised.pdf
 
main
mainmain
main
 
Applied numerical methods lec8
Applied numerical methods lec8Applied numerical methods lec8
Applied numerical methods lec8
 
Sparse data formats and efficient numerical methods for uncertainties in nume...
Sparse data formats and efficient numerical methods for uncertainties in nume...Sparse data formats and efficient numerical methods for uncertainties in nume...
Sparse data formats and efficient numerical methods for uncertainties in nume...
 
Formulas for Surface Weighted Numbers on Graph
Formulas for Surface Weighted Numbers on GraphFormulas for Surface Weighted Numbers on Graph
Formulas for Surface Weighted Numbers on Graph
 
Lecture 2: Stochastic Hydrology
Lecture 2: Stochastic Hydrology Lecture 2: Stochastic Hydrology
Lecture 2: Stochastic Hydrology
 
Auto Regressive Process (1) with Change Point: Bayesian Approch
Auto Regressive Process (1) with Change Point: Bayesian ApprochAuto Regressive Process (1) with Change Point: Bayesian Approch
Auto Regressive Process (1) with Change Point: Bayesian Approch
 
model interpolasi
model interpolasimodel interpolasi
model interpolasi
 
The Positive Effects of Fuzzy C-Means Clustering on Supervised Learning Class...
The Positive Effects of Fuzzy C-Means Clustering on Supervised Learning Class...The Positive Effects of Fuzzy C-Means Clustering on Supervised Learning Class...
The Positive Effects of Fuzzy C-Means Clustering on Supervised Learning Class...
 
The Positive Effects of Fuzzy C-Means Clustering on Supervised Learning Class...
The Positive Effects of Fuzzy C-Means Clustering on Supervised Learning Class...The Positive Effects of Fuzzy C-Means Clustering on Supervised Learning Class...
The Positive Effects of Fuzzy C-Means Clustering on Supervised Learning Class...
 

Kürzlich hochgeladen

Making communications land - Are they received and understood as intended? we...
Making communications land - Are they received and understood as intended? we...Making communications land - Are they received and understood as intended? we...
Making communications land - Are they received and understood as intended? we...Association for Project Management
 
Unit-V; Pricing (Pharma Marketing Management).pptx
Unit-V; Pricing (Pharma Marketing Management).pptxUnit-V; Pricing (Pharma Marketing Management).pptx
Unit-V; Pricing (Pharma Marketing Management).pptxVishalSingh1417
 
Spellings Wk 3 English CAPS CARES Please Practise
Spellings Wk 3 English CAPS CARES Please PractiseSpellings Wk 3 English CAPS CARES Please Practise
Spellings Wk 3 English CAPS CARES Please PractiseAnaAcapella
 
HMCS Max Bernays Pre-Deployment Brief (May 2024).pptx
HMCS Max Bernays Pre-Deployment Brief (May 2024).pptxHMCS Max Bernays Pre-Deployment Brief (May 2024).pptx
HMCS Max Bernays Pre-Deployment Brief (May 2024).pptxEsquimalt MFRC
 
Application orientated numerical on hev.ppt
Application orientated numerical on hev.pptApplication orientated numerical on hev.ppt
Application orientated numerical on hev.pptRamjanShidvankar
 
FSB Advising Checklist - Orientation 2024
FSB Advising Checklist - Orientation 2024FSB Advising Checklist - Orientation 2024
FSB Advising Checklist - Orientation 2024Elizabeth Walsh
 
SOC 101 Demonstration of Learning Presentation
SOC 101 Demonstration of Learning PresentationSOC 101 Demonstration of Learning Presentation
SOC 101 Demonstration of Learning Presentationcamerronhm
 
Sensory_Experience_and_Emotional_Resonance_in_Gabriel_Okaras_The_Piano_and_Th...
Sensory_Experience_and_Emotional_Resonance_in_Gabriel_Okaras_The_Piano_and_Th...Sensory_Experience_and_Emotional_Resonance_in_Gabriel_Okaras_The_Piano_and_Th...
Sensory_Experience_and_Emotional_Resonance_in_Gabriel_Okaras_The_Piano_and_Th...Pooja Bhuva
 
ICT Role in 21st Century Education & its Challenges.pptx
ICT Role in 21st Century Education & its Challenges.pptxICT Role in 21st Century Education & its Challenges.pptx
ICT Role in 21st Century Education & its Challenges.pptxAreebaZafar22
 
REMIFENTANIL: An Ultra short acting opioid.pptx
REMIFENTANIL: An Ultra short acting opioid.pptxREMIFENTANIL: An Ultra short acting opioid.pptx
REMIFENTANIL: An Ultra short acting opioid.pptxDr. Ravikiran H M Gowda
 
Kodo Millet PPT made by Ghanshyam bairwa college of Agriculture kumher bhara...
Kodo Millet  PPT made by Ghanshyam bairwa college of Agriculture kumher bhara...Kodo Millet  PPT made by Ghanshyam bairwa college of Agriculture kumher bhara...
Kodo Millet PPT made by Ghanshyam bairwa college of Agriculture kumher bhara...pradhanghanshyam7136
 
TỔNG ÔN TẬP THI VÀO LỚP 10 MÔN TIẾNG ANH NĂM HỌC 2023 - 2024 CÓ ĐÁP ÁN (NGỮ Â...
TỔNG ÔN TẬP THI VÀO LỚP 10 MÔN TIẾNG ANH NĂM HỌC 2023 - 2024 CÓ ĐÁP ÁN (NGỮ Â...TỔNG ÔN TẬP THI VÀO LỚP 10 MÔN TIẾNG ANH NĂM HỌC 2023 - 2024 CÓ ĐÁP ÁN (NGỮ Â...
TỔNG ÔN TẬP THI VÀO LỚP 10 MÔN TIẾNG ANH NĂM HỌC 2023 - 2024 CÓ ĐÁP ÁN (NGỮ Â...Nguyen Thanh Tu Collection
 
Key note speaker Neum_Admir Softic_ENG.pdf
Key note speaker Neum_Admir Softic_ENG.pdfKey note speaker Neum_Admir Softic_ENG.pdf
Key note speaker Neum_Admir Softic_ENG.pdfAdmir Softic
 
ICT role in 21st century education and it's challenges.
ICT role in 21st century education and it's challenges.ICT role in 21st century education and it's challenges.
ICT role in 21st century education and it's challenges.MaryamAhmad92
 
Single or Multiple melodic lines structure
Single or Multiple melodic lines structureSingle or Multiple melodic lines structure
Single or Multiple melodic lines structuredhanjurrannsibayan2
 
How to Give a Domain for a Field in Odoo 17
How to Give a Domain for a Field in Odoo 17How to Give a Domain for a Field in Odoo 17
How to Give a Domain for a Field in Odoo 17Celine George
 
The basics of sentences session 3pptx.pptx
The basics of sentences session 3pptx.pptxThe basics of sentences session 3pptx.pptx
The basics of sentences session 3pptx.pptxheathfieldcps1
 
2024-NATIONAL-LEARNING-CAMP-AND-OTHER.pptx
2024-NATIONAL-LEARNING-CAMP-AND-OTHER.pptx2024-NATIONAL-LEARNING-CAMP-AND-OTHER.pptx
2024-NATIONAL-LEARNING-CAMP-AND-OTHER.pptxMaritesTamaniVerdade
 
Salient Features of India constitution especially power and functions
Salient Features of India constitution especially power and functionsSalient Features of India constitution especially power and functions
Salient Features of India constitution especially power and functionsKarakKing
 
Beyond_Borders_Understanding_Anime_and_Manga_Fandom_A_Comprehensive_Audience_...
Beyond_Borders_Understanding_Anime_and_Manga_Fandom_A_Comprehensive_Audience_...Beyond_Borders_Understanding_Anime_and_Manga_Fandom_A_Comprehensive_Audience_...
Beyond_Borders_Understanding_Anime_and_Manga_Fandom_A_Comprehensive_Audience_...Pooja Bhuva
 

Kürzlich hochgeladen (20)

Making communications land - Are they received and understood as intended? we...
Making communications land - Are they received and understood as intended? we...Making communications land - Are they received and understood as intended? we...
Making communications land - Are they received and understood as intended? we...
 
Unit-V; Pricing (Pharma Marketing Management).pptx
Unit-V; Pricing (Pharma Marketing Management).pptxUnit-V; Pricing (Pharma Marketing Management).pptx
Unit-V; Pricing (Pharma Marketing Management).pptx
 
Spellings Wk 3 English CAPS CARES Please Practise
Spellings Wk 3 English CAPS CARES Please PractiseSpellings Wk 3 English CAPS CARES Please Practise
Spellings Wk 3 English CAPS CARES Please Practise
 
HMCS Max Bernays Pre-Deployment Brief (May 2024).pptx
HMCS Max Bernays Pre-Deployment Brief (May 2024).pptxHMCS Max Bernays Pre-Deployment Brief (May 2024).pptx
HMCS Max Bernays Pre-Deployment Brief (May 2024).pptx
 
Application orientated numerical on hev.ppt
Application orientated numerical on hev.pptApplication orientated numerical on hev.ppt
Application orientated numerical on hev.ppt
 
FSB Advising Checklist - Orientation 2024
FSB Advising Checklist - Orientation 2024FSB Advising Checklist - Orientation 2024
FSB Advising Checklist - Orientation 2024
 
SOC 101 Demonstration of Learning Presentation
SOC 101 Demonstration of Learning PresentationSOC 101 Demonstration of Learning Presentation
SOC 101 Demonstration of Learning Presentation
 
Sensory_Experience_and_Emotional_Resonance_in_Gabriel_Okaras_The_Piano_and_Th...
Sensory_Experience_and_Emotional_Resonance_in_Gabriel_Okaras_The_Piano_and_Th...Sensory_Experience_and_Emotional_Resonance_in_Gabriel_Okaras_The_Piano_and_Th...
Sensory_Experience_and_Emotional_Resonance_in_Gabriel_Okaras_The_Piano_and_Th...
 
ICT Role in 21st Century Education & its Challenges.pptx
ICT Role in 21st Century Education & its Challenges.pptxICT Role in 21st Century Education & its Challenges.pptx
ICT Role in 21st Century Education & its Challenges.pptx
 
REMIFENTANIL: An Ultra short acting opioid.pptx
REMIFENTANIL: An Ultra short acting opioid.pptxREMIFENTANIL: An Ultra short acting opioid.pptx
REMIFENTANIL: An Ultra short acting opioid.pptx
 
Kodo Millet PPT made by Ghanshyam bairwa college of Agriculture kumher bhara...
Kodo Millet  PPT made by Ghanshyam bairwa college of Agriculture kumher bhara...Kodo Millet  PPT made by Ghanshyam bairwa college of Agriculture kumher bhara...
Kodo Millet PPT made by Ghanshyam bairwa college of Agriculture kumher bhara...
 
TỔNG ÔN TẬP THI VÀO LỚP 10 MÔN TIẾNG ANH NĂM HỌC 2023 - 2024 CÓ ĐÁP ÁN (NGỮ Â...
TỔNG ÔN TẬP THI VÀO LỚP 10 MÔN TIẾNG ANH NĂM HỌC 2023 - 2024 CÓ ĐÁP ÁN (NGỮ Â...TỔNG ÔN TẬP THI VÀO LỚP 10 MÔN TIẾNG ANH NĂM HỌC 2023 - 2024 CÓ ĐÁP ÁN (NGỮ Â...
TỔNG ÔN TẬP THI VÀO LỚP 10 MÔN TIẾNG ANH NĂM HỌC 2023 - 2024 CÓ ĐÁP ÁN (NGỮ Â...
 
Key note speaker Neum_Admir Softic_ENG.pdf
Key note speaker Neum_Admir Softic_ENG.pdfKey note speaker Neum_Admir Softic_ENG.pdf
Key note speaker Neum_Admir Softic_ENG.pdf
 
ICT role in 21st century education and it's challenges.
ICT role in 21st century education and it's challenges.ICT role in 21st century education and it's challenges.
ICT role in 21st century education and it's challenges.
 
Single or Multiple melodic lines structure
Single or Multiple melodic lines structureSingle or Multiple melodic lines structure
Single or Multiple melodic lines structure
 
How to Give a Domain for a Field in Odoo 17
How to Give a Domain for a Field in Odoo 17How to Give a Domain for a Field in Odoo 17
How to Give a Domain for a Field in Odoo 17
 
The basics of sentences session 3pptx.pptx
The basics of sentences session 3pptx.pptxThe basics of sentences session 3pptx.pptx
The basics of sentences session 3pptx.pptx
 
2024-NATIONAL-LEARNING-CAMP-AND-OTHER.pptx
2024-NATIONAL-LEARNING-CAMP-AND-OTHER.pptx2024-NATIONAL-LEARNING-CAMP-AND-OTHER.pptx
2024-NATIONAL-LEARNING-CAMP-AND-OTHER.pptx
 
Salient Features of India constitution especially power and functions
Salient Features of India constitution especially power and functionsSalient Features of India constitution especially power and functions
Salient Features of India constitution especially power and functions
 
Beyond_Borders_Understanding_Anime_and_Manga_Fandom_A_Comprehensive_Audience_...
Beyond_Borders_Understanding_Anime_and_Manga_Fandom_A_Comprehensive_Audience_...Beyond_Borders_Understanding_Anime_and_Manga_Fandom_A_Comprehensive_Audience_...
Beyond_Borders_Understanding_Anime_and_Manga_Fandom_A_Comprehensive_Audience_...
 

Comparison of Bayesian and non-Bayesian estimations for Type-II censored Generalized Rayleigh distribution

  • 1.
  • 2. Presented By Iqra Sardar† Syed Masroor Anwar Prof. Dr. Muhammad Aslam DEPARTMENT OF MATHEMATICS AND STATISTICS RIPHAH INTERNATIONAL UNIVERSITY, ISLAMABAD, PAKISTAN Email: iqrahusan@gmail.com† 16th International Conference on Statistical Sciences: At Department of Statistics Islamia College, Peshawar Khyber Pakhtunkhwa, Pakistan Comparison of Bayesian and non-Bayesian estimations for Type-II censored Generalized Rayleigh distribution
  • 3. ABSTRACT In this paper, we compare Bayesian and non-Bayesian estimations for the unknown parameters of Generalized Rayleigh distribution under Type-II censoring schemes. First we deal with non-Bayesian method namely maximum likelihood estimation along with their asymptotic confidence intervals with a given coverage probability. Further we consider the Bayesian estimates of unknown parameters under different loss functions. As Bayes estimators cannot be obtained in nice closed form. We use Lindley’s approximation. Monte Carlo simulation study is carried out to compare different methods and the performance of the estimates is judged by the mean squared error values. All the numerically computations are performed in R software. Finally, a real life data set analysis is performed for the illustration purpose. KEYWORDS Generalized Rayleigh distribution; Type-II censoring; Bayesian and non-Bayesian estimations; Symmetric and asymmetric loss functions; Lindley’s approximation.
  • 4. Burr (1942) introduced twelve different forms of cumulative distributions functions for modeling life time data. Many researchers examined the single parameter Burr type X model by putting scale parameter λ=1. Recently, the single parameter distribution of the extended Burr type X by Surles and Padgett (2001) introduce two parameters Burr type X distribution and correctly named as the Generalized Rayleigh distribution. Applications of the Generalized Rayleigh distribution The Generalized Rayleigh distribution can be used to:  Life testing.  Failure time of machines  Communication Engineering.  Speed of Gas Molecules Kundu and Raqab (2005,2007) have discussed the different techniques of estimation of the parameters and further properties of GR distribution.
  • 5. (1.1) Generalized Rayleigh distribution 1.1 Model Analysis Probability density function (pdf): 12 2( ) ( )2( ; , ) 2 1 ; , , 0 x xf xe e x                  x Fig. 1 The pdf of GR Distribution For different values of α and λ
  • 6. (1.2) The Survival /Reliability function (sf): (1.3) Cumulative distribution function (cdf): 2( )( ; , ) 1 ; , , 0xF e x              x 2( ) 1 1( ; , ) ; , , 0x eS x                x
  • 7. (1.4) The hazard rate function (hrf): 2 2( ) ( )22 1 ( ; , ) ; , , 0 2( )1 1 x xxe e h x xe                         x Fig. 2 The hrf of GR Distribution For different values of α and λ
  • 8.  Aims of Papers Derive the non-Bayesian method namely maximum likelihood estimation Bayes estimates under different loss functions; squared error (SE) loss function and LINEX loss function based on Type-II censoring scheme The comparison of the different estimators have been obtained. The informative and non-informative priors in different Loss functions to compute the Bayes estimators of GR parameters. One real data set has been presented.
  • 9. Let denotes type-II censored observations from a sample of r failure units under consideration and the other (n-r) items are functioning till the end of experiment and they are censored. The Likelihood function is Methods of Estimation Maximum Likelihood Estimation The log likelihood function is  2 ( ) 2( ) 1 1 2 2( ; , ) ln ! ln( )! ln 2 ln 2 ln ln 1 1 ( 1) ln 1 ( )ln 1 ix x e r r L n n r r r r x xi i i i r re n r i                                         x
  • 10.  To obtain the MLE’s Approximate Confidence Intervals 2 2 ˆ ˆˆ ˆvar( ) & var( )z z     
  • 11. Loss Function Expression of Loss Function Bayes Estimator SELF 𝜃 − 𝜃∗ 2 𝐸 𝜃|𝐱(𝜃 LLF 𝑒 𝑐(𝜃∗−𝜃 − 𝑐(𝜃∗ − 𝜃 − 1 − 1 𝑐 ln 𝐸 𝜃|𝑥 𝑒−𝑐𝜃 Types of loss functions are given in the table. Mean Square Errors 𝑀𝑆𝐸 𝜃 = 𝜃𝑖 − 𝜃 2 𝑘 𝑖=1 𝑘
  • 12. We assumed the following joint density of proposed gamma priors for α and λ are the hyper-parameters. (Berger and Sun, 1993; Kundu, 2008; Wahed, 2006; Kundu and Pradhan, 2009; Shrestha and Kumar, 2014). Prior Distribution 1 2 1 2, , ,a a b b 1 2 2 11 1 ( , ) a a b b g e           . For all the censoring schemes, we have used 𝛂 = 0.5 and 𝛌 = 1. First we considered the non-informative prior for both  and, i.e 1 2 1 2 0a a b b    . In this case the priors becomes improper. We call this prior as Prior-I. We have taken one informative priors, namely Prior-II: 1 2 1 21, 2.a a b b   
  • 13. Bayesian Method of Estimation The joint posterior density function of α and λ can be written as; Bayes estimator using Lindley’s Approximation the posterior expectation is expressible in the form of ratio of integral as follow: 𝑢(𝛼, 𝜆 = is a function of α and λ only 𝐿(𝛼, 𝜆 = Log-Likelihood function and 𝐺(𝛼, 𝜆 = Log of joint prior density 1 2 1 2 0 0 ( | , ) ( ) ( ) ( , | ) ( | , ) ( ) ( ) L g g p L g g d d                 x x x ( , ) ( , ) ( , ) ( , ) ( , ) ( , ) ( , ) ( ) ( , | ) L G L G u e d e d I X E                       x
  • 14.  According to D.V Lindley (1980), if ML estimates of the parameters are available and n is sufficiently large then the above ratio integral can be approximated as:                ˆˆ ˆ2 ˆ ˆˆ ˆ ˆ ˆ ˆ ˆ2 2 ˆˆ( ) , 0.5 ˆˆ ˆ ˆ ˆ2 ˆ ˆ ˆ ˆˆ ˆ ˆ ˆ ˆ ˆ ˆ ˆ 0.5 ˆ ˆ ˆ ˆˆ ˆ ˆ ˆ ˆ ˆ ˆ u u u u u u I X u u u u u L L L L u u L L L L                                                                                  ˆ          
  • 15.  The Bayes estimator of under SELF is given by The Bayes estimator of under SELF is given by  Bayesian Estimation under Squared Error Loss Function  * 1 1 ˆ 1 ˆ ˆˆ ˆ ˆ ˆ ˆ( ) 0.5( ))] ˆcSELF cMLE a b L L                    * 2 2 1ˆ ˆ ˆˆ ˆ ˆ ˆ ˆ( ) 0.5( ))] ˆcSELF cMLE a b L L                   
  • 16. Bayesian Estimation under LINEX Loss Function  Bayesian Estimation 0f under LINEX Loss Function  The Bayes estimator of under LLF is given by   * 2 2 ˆ 1 ˆ ˆ ˆ1 2ˆ ln 1 1 ˆ ˆˆ ˆ ˆ 2 cLINEX MLE a c b c c L L                                                * 1 1 2 1 ˆ ˆ ˆ1 2ˆ ln 1 1 ˆ ˆˆ ˆ ˆ 2 cLINEX MLE a c b c c L L                                           
  • 17.
  • 18. Table.1 Average Estimates and the associated MSEs of the MLE and the Bayes estimates of 𝛂 = 0.5 and 𝛌=1 (Prior-I) Scheme MLE SELF LLF 20 10% ˆ ˆ 0.65301 (0.03878) 1.39513 (0.12710) 0.64567 (0.03653) 1.38793 (0.12353) 0.63486 (0.03302) 1.37127 (0.11519) 20% 0.71793 (0.06550) 1.70383 (0.33302) 0.71101 (0.06427) 1.69512 (0.32576) 0.69384 (0.05509) 1.66787 (0.30276) 40 10% ˆ ˆ 0.60527 (0.01720) 1.35927 (0.08579) 0.60246 (0.01666) 1.35564 (0.08430) 0.59803 (0.01583) 1.34767 (0.08109) 20% 0.65247 (0.02872) 1.65889 (0.25491) 0.64907 (0.02782) 1.65407 (0.25142) 0.64302 (0.02622) 1.64092 (0.24196) 80 10% ˆ ˆ 0.58227 (0.00733) 1.33685 (0.06659) 0.58106 (0.00719) 1.33503 (0.06594) 0.57905 (0.00697) 1.33117 (0.06455) 20% 0.61971 (0.01261) 1.62560 (0.21309) 0.61822 (0.01238) 1.62311 (0.21146) 0.61561 (0.01197) 1.61674 (0.20728) ˆ ˆ ˆ ˆ ˆ ˆ Note: For each scheme, first entry represents average estimates and MSE within Brackets
  • 19. Table .2 Average Estimates and the associated MSEs of the MLE and the Bayes estimates of 𝛂 = 0.5 and 𝛌=1 (Prior-II) Scheme SELF LLF 20 10% ˆ ˆ 0.61829 (0.02801) 1.34881 (0.10441) 0.61785 (0.02815) 1.34680 (0.10373) 20% 0.67057 (0.04516) 1.63244 (0.27397) 0.66975 (0.04523) 1.63003 (0.27283) 40 10% ˆ ˆ 0.59163 (0.01467) 1.33706 (0.07692) 0.59095 (0.01457) 1.33564 (0.07639) 20% 0.63453 (0.02405) 1.62403 (0.23006) 0.63359 (0.02386) 1.62178 (0.22857) 80 10% ˆ ˆ 0.57622 (0.00667) 1.32604 (0.06273) 0.57585 (0.00663) 1.32525 (0.06246) 20% 0.61198 (0.01142) 1.60859 (0.20200) 0.61150 (0.01135) 1.60726 (0.20115) ˆ ˆ ˆ ˆ ˆ ˆ
  • 20. The Findings of the Simulation Study  The Lindley Bayes estimates under different loss functions performance better than non-Bayesian estimates.  The estimated values of the parameters converge to the true values by increasing the sample size under both cases.  The estimates under LLF are having the best convergence among all loss functions.  The informative priors provide better convergence than non-informative priors.  By increase the censoring rate the MSEs of estimates under both (informative and noninformative) priors increases.
  • 21. The data represent the number of million revolutions before failure for each of the 23 ball bearings in the life test (Lawless; 1982, p.228). Gupta and Kundu (2001) have analyzed this data set and GR distribution works affectively. Ball bearings lifetime data set 17.88, 28.92, 33.00, 41.52, 42.12, 45.60, 48.80, 51.84, 51.96, 54.12, 55.56, 67.80, 68.64, 68.64, 68.88, 84.12, 93.12, 98.64, 105.12, 105.84, 127.92, 128.04, 173.40 One-sample Kolmogorov-Smirnov test data: x D = 0.1572, p-value = 0.6208 alternative hypothesis: two-sided The fit is good at 0.05 significance level.
  • 22. Table 4. MLE and Bayes estimates with respect to different loss functions when Prior-I is used. Estimates MLE Lindley Bayes Estimates SELF LLF 10% ˆ ˆ 1.95066 0.01852 1.91456 0.01846 1.84184 0.01848 20% ˆ ˆ 2.21545 0.02089 2.17826 0.02084 2.06717 0.02085 Table 5. MLE and Bayes estimates with respect to different loss functions when Prior-II is used. Estimates MLE Lindley Bayes Estimates SELF LLF 10% ˆ ˆ 1.95066 0.01852 1.72628 0.01846 1.74294 0.01848 20% ˆ ˆ 2.21545 0.02089 1.89572 0.02083 1.93122 0.02085
  • 23.  The Lindley Bayes estimates performance better than non- Bayesian estimates (MLE).  The performance of Bayes estimates under LLF is better than SELF.  By increase the censoring rate the estimates under both (informative and noninformative) priors increases.  Informative prior is better prior for the estimation of shape and scale parameters of the GR distribution. The Findings of the Real life Data
  • 24.  The informative priors are superior to non- informative priors.  The Bayesian estimation can be preferred than non-Bayesian estimation.  The LLF provides the better convergence.
  • 25. 1. Surles, J.G. and Padgett, W.J. (2001), Inference for Reliability and Stress- Strength for a Scaled Burr X distribution, Lifetime Data Analysis, vol.7, 187-200. 2. Sartawi, H.A. and Abu-Salih, M.S. (1991). Bayes prediction bounds for the Burr type X model, Communications in Statistics - Theory and Methods, 20, 2307-2330. 3. Jaheen. Z.F. (1996). Empirical Bayes estimation of the reliability and failure rate func- tions of the Burr type X failure model, Journal of Applied Statistical Sciences, 3, 281-288. 4. Ahmad, K.E., Fakhry, M.E. and Jaheen, Z.F. (1997). Empirical Bayes estimation of P(Y < X) and characterization of Burr-type X model, Journal of Statistical Planning and Inference, 64, 297-308. 5. Raqab, M.Z. (1998). Order statistics from the Burr type X model, Computers Mathe- matics and Applications, 36, 111-120. 6. Surles, J.G. and Padgett, W.J. (1998). Inference for P(Y < X) in the Burr type X model, Journal of Applied Statistical Science, 7, 225-238. 7. Kundu,D. and Raqab,M.Z.(2013). Estimation of R = P[Y < X] for Three Parameter Generalized Rayleigh Distribution, Journal of Statistical Computation and Simulation, 83(10),1-22.
  • 26. 8. Aludaat, K. M., Alodat, M. T. and Alodat, T. T. (2008). Parameter Estimation of Burr Type X Distribution for Grouped Data, Applied Mathematical Sciences, 2(9), 415 – 423. 9. Al-khedhairi A., Sarhan A., and Tadj L.,(2008)"Estimation of the Generalized Rayleigh Distribution Parameters”, International Journal of Reliability and Applications, 7(1), 1-12. 10. Raqab,M.Z., Madi,M.T., and Kundu,D.(2008).Estimation of P(Y < X) for the 3-Parameter Generalized Exponential Distribution,Communications in Statistics - Theory and Methods,37(18), 2854-2864. 11. AL- Naqeeb,A.A. and Hamed, A. M .(2009). Estimation of the Two Parameters for Generalized Rayleigh Distribution Function Using Simulation Technique, IBN AL- HAITHAM J. FO R PURE & APPL. SC I.,22(4),246-256. 12. Siddiqui,M.M. (1964).Statistical Inference for Rayleigh Distributions, RADIO SCIENCE Journal of Research NBSJUSNC-URSI, 68(9),1005-1010. 13. Feroze, N. and Aslam,M.(2012). Bayesian Analysis of Exponentiated Gamma Distribution under Type II Censored Samples, International Journal of Advanced Science and Technology, 49, 37-46. 14. Khan,M.H.R.(2012). Estimating Predictive Inference for Responses from the Generalized Rayleigh Model based on Complete Sample, Thailand Statistician, 10(1), 53-68.