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. 2021 Nov 23;23(12):1558. doi: 10.3390/e23121558

Classical and Bayesian Inference of an Exponentiated Half-Logistic Distribution under Adaptive Type II Progressive Censoring

Ziyu Xiong 1, Wenhao Gui 1,*
Editor: Udo Von Toussaint1
PMCID: PMC8699882  PMID: 34945864

Abstract

The point and interval estimations for the unknown parameters of an exponentiated half-logistic distribution based on adaptive type II progressive censoring are obtained in this article. At the beginning, the maximum likelihood estimators are derived. Afterward, the observed and expected Fisher’s information matrix are obtained to construct the asymptotic confidence intervals. Meanwhile, the percentile bootstrap method and the bootstrap-t method are put forward for the establishment of confidence intervals. With respect to Bayesian estimation, the Lindley method is used under three different loss functions. The importance sampling method is also applied to calculate Bayesian estimates and construct corresponding highest posterior density (HPD) credible intervals. Finally, numerous simulation studies are conducted on the basis of Markov Chain Monte Carlo (MCMC) samples to contrast the performance of the estimations, and an authentic data set is analyzed for exemplifying intention.

Keywords: adaptive type-II progressive censoring, exponentiated half-logistic distribution, maximum likelihood estimation, Bayesian estimation, importance sampling, Lindley method, bootstrap method, Monte Carlo simulation

1. Introduction

1.1. Adaptive Type II Progressive Censoring Scheme

In this day and age, owing to the development of science and technology, industrial products have become greatly reliable and as a result, getting sufficient failure time during a life testing experiment for any statistical analysis purposes results in a sharp increase in cost and time. Hence, the aim of reducing test time and saving the cost leads us into the realm of censoring. With units removed before their failure time purposefully, the duration and cost can be greatly reduced. Many statisticians have investigated various censoring schemes. The two most commonly used censoring schemes are type I and type II censoring schemes. In type I censoring, the life-testing experiment terminates at a predetermined time while, under type II censoring, the life-testing test stops once the observed failure units reach the predetermined number. For the sake of further reducing the experimental cost and time, a concoction of these two schemes called hybrid censoring was put forward. However, none of these schemes permits the survival units to be removed during the experiment, which lacks flexibility. Accordingly, the concept of progressive censoring was brought forward by [1] to increase the flexibility of removing units other than the terminal experimental time. A concise presentation of the progressive type II censoring is as follows. Assume that there are totally n identical units in the test. In addition, the failure time of the units is defined as X=(X(1:m:n),X(2:m:n),,X(m1:m:n),X(m:m:n)), and the censoring scheme denotes as R=(R1,R2,,Rm1,Rm), where nm=i=1mRi. When the first unit fails at X1, we remove R1 units from n1 units remained randomly. Then, we remove Rj units from the nji=1j1Ri remaining units on the occurrence of the j-th failure in the same way. In addition, you can refer to [1,2] for further information in progressive censoring.

However, one of the drawbacks of the scheme is that researchers can not control the experiment time in practical terms. Recently, Ref. [3] proposed a new censoring called adaptive type II progressive censoring scheme in the interest of saving the aggregate time and improving the analysis efficiency. Based on progressive type II censoring, the expected total experimental time T is also pre-fixed before the test. If T>X(m:m:n), the experiment is implemented according to the progressive type II censoring scheme with R=(R1,R2,,Rm1,Rm) and terminates at time X(m:m:n). However, once the actual time runs over T, namely T<X(m:m:n), we do not stop the test at T but no longer remove survival units after the prefixed time T. Suppose that the time runs over T right after the occurrence of the J-th failure, namely J=max{j,T>X(j:m:n)}. Therefore, once the concrete test time runs over T, the censoring scheme after time T becomes RJ+1=RJ+2==Rm1=0,Rm=nmi=1JRi. In particular, there are two special situations with the change of T. If T=, the scheme eventually turns into progressive type II censoring. In addition, if the expected time T equals to 0, the scheme changes into the common type II censoring scheme. Figure 1 presents adaptive type II progressive censoring.

Figure 1.

Figure 1

Adaptive type II progressive censoring.

Since the adaptive type II progressive censoring scheme was proposed, its good property has attracted a great number of researchers to study this field. The adaptive progressive type II censoring model was further studied in Ref. [4]. Under this censoring model, Ref. [5] also studied the estimator of unknown parameters of Weibull distribution. The classical estimations and the Bayesian estimations were both derived from the scheme. The adaptive type II progressive censoring was collaborated with the exponential step-stress accelerated life-testing model to derive confidence intervals in Ref. [6]. Furthermore, this censoring scheme was also extended by taking account of competing risks under two-Parameter Rayleigh Distribution and making classical and Bayesian inference by Ref. [7].

1.2. The Exponentiated Half-Logistic Distribution

The exponentiated half-logistic distribution (EHL) is extremely famous in numerous applications particularly in parameter estimates. It has been applied in many areas, including insurance, engineering, medicine, education, etc. This distribution is suitable for modeling lifetime data and is extremely parallel to the two-parameter family of distributions, which is noted in Ref. [8]. For example, the Gamma distribution is an important distribution in the two-parameter family of distributions. However, compared to the Gamma distribution, exponentiated half-logistic distribution has a whip hand due to the closed form of its cumulative distribution.

In this article, we focus on the exponentiated half-logistic distribution. The probability density function (PDF) is written as:

f(x;λ,σ)=λσ(1exσ1+exσ)λ12exσ(1+exσ)2,x>0,λ,σ>0, (1)

and the cumulative distribution function (CDF) is described as

F(x;λ,σ)=(1exσ1+exσ)λ,x>0,λ,σ>0, (2)

where λ>0 is the shape parameter and σ>0 is the scale parameter. We denote this distribution as EHI(λ,σ).

The corresponding reliability function is written as:

R(t)=1(1etσ1+etσ)λ,t>0, (3)

while the hazard rate function is:

h(t)=2σλetσ(1+etσ)2[1(1etσ1+etσ)λ](1etσ1+etσ)λ1,t>0. (4)

From Figure 2, when λσ>1, the PDF of the exponentiated half-logistic distribution is unimodal. In addition, while λσ<1, it becomes monotonically decreasing. When λ is fixed, the smaller σ is, the more sharply the PDF decreases. As for the CDF of the distribution, the growth of CDF becomes slow with σ increasing. Furthermore, smaller λ results in a higher rising rate.

Figure 2.

Figure 2

CDF (left) and PDF (right) of exponentiated half-logistic distribution.

When λ=1, the exponentiated half-logistic distribution degrades into the renowned half logistic distribution. The half logistic distribution has extensive use particularly employed in censored data in the area of survival analysis. This distribution has been studied by some researchers. The order statistics of the half logistic distribution was studied in Ref. [9]. On the basis of progressively type II censored data, Ref. [10] derived the classical and Bayes estimators of the scale parameter of this distribution. In accordance with the study results of [10], analytic expressions were studied further for the biases of the maximum likelihood estimators of the distribution in [11]. The generalized ranked-set sampling technique was employed for obtaining parameters estimation of the half-logistic distribution in [12].

The exponentiated half-logistic distribution has recently attracted a lot of researchers. On the basis of progressive Type-II censored data, Ref. [13] derived the maximum likelihood estimator of the scale parameter in an exponentiated half logistic distribution and proposed some approximate maximum likelihood estimators as well. In addition to the MLE, Ref. [14] focused on the moment estimators and entropy estimator in this distribution. For the purpose of promoting practicability of the distribution, Ref. [15] extended the exponentiated half-logistic distribution by putting forward the concept of the exponentiated half-logistic family, which is a fresh generator of continuous distributions of two excess parameters. Considering that the life test sometimes stops at a pre-determined time, Ref. [16] developed acceptance sampling for the percentiles of this distribution. Meanwhile, not only the operating characteristic values of the sampling plans but also the producer’s risk were shown. Based on the distribution, Ref. [17] proposed an attribute control chart for time truncated life tests with different shape parameters. Thus far, research associated with this distribution has a great deal of space to explore.

In this article, the problem of the point and interval estimation of the parameters for exponentiated half logistic distribution under adaptive type II progressive censored data are considered. We organize the remainder paper as follows. In Section 2, the maximum likelihood estimates are derived and computed. Meanwhile, the observed and expected Fisher information matrix is acquired and then the asymptotic confidence intervals are established. We employ the bootstrap resampling method to build two bootstrap confidence intervals in Section 3. As for Section 4, Bayesian estimations under several loss functions are carried out by utilizing the Lindley method. The importance sampling method is also used to calculate the Bayesian estimates and construct the highest posterior density (HPD) credible intervals. Simulations are conducted and the behaviors of estimators obtained with the diverse methods are evaluated and compared in Section 5. An authentic data set is studied to illustrate the effectiveness of estimation means in the above sections in Section 6. In the end, the conclusions of point and interval estimations are drawn in Section 7.

2. Maximum Likelihood Estimation

2.1. Point Estimation

In this section, maximum likelihood estimation is used to estimate the unknown parameters on the basis of the adaptive type II progressive censored data. Assume that the adaptive type II progressive censored data come from an exponentiated half-logistic distribution. Let xi:m:n denote the i-th observation, thus we know x1:m:n<x2:m:n<xm:m:n. In addition, T represents the expected experimental time and J denotes the index of the last failure before time T.

For the sake of simplicity, let x_=(x1,x2,,xm) denote (x(1:m:n),x(2:m:n),,x(m:m:n)). The likelihood function turns to be

L(λ,σ|x_)=DJ[1F(xm)]nmi=1JRii=1J[1F(xi)]Rii=1mf(xi), (5)

where

DJ=i=1m(n+1ik=1min{J,i1}Rk).

The corresponding likelihood function is derived as

L(λ,σ|x_)=DJσmλmeλi=1mln1+exiσ1exiσ1σi=1mxii=1m11e2xiσ×i=1J[1(1exiσ1+exiσ)λ]Ri[1(1exmσ1+exmσ)λ]nmi=1JRi. (6)

Therefore, the log-likelihood function can be obtained by

l(λ,σ|x_)=D+mlnλmlnσi=1mxiσλi=1mln1+exiσ1exiσ+i=1mln11e2xiσ+i=1JRiln(1F(xi))+(nmi=1JRi)ln(1F(xm)), (7)

where D is a constant.

Finding the partial derivatives involving σ and λ separately and letting them equal zero, the equations correspond to   

lσ=1σm+(11λ)i=1mζixi1σi=1m(F(xi))1λxii=1JRiηixi(nmi=1J)ηmxm=0, (8)
lλ=1λm+i=1mlnF(xi)i=1JRiGiF(xi)(nmi=1JRi)GmF(xm)=0, (9)

where ζi=f(xi)F(xi), ηi=f(xi)1F(xi), Gi=lnF(xi)1F(xi).

The roots of the equations correspond to the MLEs. However, owing to the nonlinearity of the equations, obviously we can not obtain the explicit expressions. Thus, the Newton–Raphson method is employed to solve this problem. The Newton–Raphson method is an important method to find the roots of equations by employing the Taylor series method. Thus, the Newton–Raphson method is employed to acquire the MLEs, written as σ^ and λ^.

2.2. Asymptotic Confidence Interval

In this subsection, the asymptotic confidence intervals for σ and λ are established by employing Var(σ^) and Var(λ^). We acquire the asymptotic confidence intervals for σ and λ from the variance–covariance matrix, which is also known as the inverse Fisher information matrix. The Fisher information matrix is a generalization of the Fisher information amount. The Fisher information amount represents the average amount of information about the state parameters in a certain sense that a sample of random variables can provide. The Fisher information matrix (FIM) Iσ,λ is

I(σ,λ)=E2l(λ,σ)σ22l(λ,σ)λσ2l(λ,σ)λσ2l(λ,σ)λ2. (10)

Here,

2lλ2=1λ2m+i=1JRiGi2F(xi)+(ni=1JRim)F(xm)Gm2, (11)
2lλσ=1λσi=1mζixi+i=1JRixiηi(1+Gi)+(nmi=1JRi)xmηm(1+Gm), (12)
2lσ2=1σ2{m+(11λ)i=1mxi[(1Hi)ζiζ2]1σi=1mxiF(xi)1λ(2+1λζi)+i=1J[ηi2+(Hi1)ηi]Ri+(nmi=1JRi)[ηm2+(Hm1)ηm]xm}, (13)

where Hi=1+xiσF(xi)1λ+(1+λ)xiλζi.

The FIM Iσ,λ is called the expected Fisher matrix. It is determined by the distribution of the order statistics Xi. The PDF of Xi based on the progressive type II censored sample generally can be derived from [1].

fx(i)(x(i))=ci10k=1idk,i0f(x(i))[1F(xi)]rk01, (14)

where

ci10=k=1irk0,ri0=m+1i+k=imRk,i=1,2,,j,d110=1,dk,i0=h=1,hki1rh0rk0,1kij.

The adaptive progressive type II censoring is considered as an improvement of the progressive type II censoring. Actually, the PDF of Xi of EHL(λ,σ) under adaptive progressive type II censoring turns out to be

fx(i)(x(i))=ci11cj11k=j+1idk,i1v(x(i))[1V(x(i))]rk11, (15)

where

ci11=k=1irk1,ri1=ni+1k=1jRk,i=j+1,j+2,,m,dj+1,j+11=1,dk,i1=h=j+1,hki1rh1rk1,j+1kim,v(x(i))=f(x(i))1F(x(j)),V(x(i))=F(x(i))F(x(j))1F(x(j)).

After sorting out, the formula (15) can be written as   

fx(i)(x(i))=ci10k=1idk,i0λσ(1ex(i)σ1+ex(i)σ)λ12ex(i)σ(1+ex(i)σ)2[1(1ex(i)σ1+ex(i)σ)λ]rk01,i=1,2,,j,ci11cj11k=j+1idk,i1λσ(1ex(i)σ1+ex(i)σ)λ12ex(i)σ(1+ex(i)σ)21(1ex(i)σ1+ex(i)σ)λ[1(1ex(i)σ1+ex(i)σ)λ1(1ex(i)σ1+ex(i)σ)λ]rk11,i=j+1,j+2,,m. (16)

Afterwards, we can calculate Fisher information matrix FIM I(σ,λ) directly based on (16). In order to simplify complex calculation, the observed Fisher Information matrix Iσ^,λ^ is employed skillfully to approximate the expected Fisher information matrix, and then the variance–covariance matrix can be obtained. Then, the I(σ^,λ^) turns out to be

I(σ^,λ^)=2l(λ,σ)σ22l(λ,σ)λσ2l(λ,σ)λσ2l(λ,σ)λ2(σ,λ)=(σ^,λ^). (17)

Here, σ^ and λ^ are the MLEs of σ and λ separately.

Then, the asymptotic variance–covariance matrix is the inverse of the observed Fisher Information matrix Iσ^,λ^, denoted as I1σ^,λ^.

I1(σ^,λ^)=Var(σ^)Cov(σ^,λ^)Cov(λ^,σ^)Var(λ^). (18)

Thus, the 1001α% asymptotic confidence intervals for σ and λ can be constructed as

σ^dα2×Varσ^,σ^+dα2×Varσ^

and

λ^dα2×Var(λ^),λ^+dα2×Var(λ^)

where dα denotes the upper α-th quantile of the standard normal distribution.

3. Bootstrap Confidence Intervals

It is noticed that the classical theory works well with a large sample size while it makes little sense on the condition that the sample size is small. Thus, the bootstrap methods are applied to provide more precise confidence intervals.

The two most commonly used bootstrap methods are proposed, see [18]. One is the percentile bootstrap method (boot-p). It replaces the distribution of original sample statistics with the distribution of Bootstrap sample statistics to establish confidence intervals. The other is the bootstrap-t method (boot-t). In addition, the core idea of this method is to convert the Bootstrap sample statistic into the corresponding t statistic. The detailed procedure for simulation of the two bootstrap methods is listed, see Algorithms 1 and 2.

Algorithm 1: Constructing percentile bootstrap confidence intervals
  • step 1

    Set the simulation number Nboot times ahead.

  • step 2

    Compute the MLEs of σ and λ under the original censored sample x_=(x1,x2,,xm), denoted as σ^ and λ^. (If we carry out a simulation study, we should first generate an adaptive progressive type II censored sample x_=(x1,x2,,xm) from EHL(λ,σ) with T,n,m,R as the original sample.)

  • step 3

    Generate a bootstrap sample x_* using σ^,λ^ and the same censoring pattern (n,m,T,R). Then, calculate the bootstrap MLEs under sample x_*, denote as σ^* and λ^*.

  • step 4

    Repeat step 3 Nboot times, then we can obtain a series of bootstrap MLEs

    σ^**(1),σ^**(2),,σ^**(Nboot) and (λ^**(1),λ^**(2),,λ^**(Nboot)).

  • step 5

    Arrange (σ^**(1),σ^**(2),,σ^**(Nboot)) and λ^**1,λ^**2,,λ^**Nboot in ascending order, respectively, and obtain (σ^**1,σ^**2,,σ^**Nboot) and (λ^**1,λ^**2,,λ^**Nboot).

3.1. Percentile Bootstrap Confidence Intervals

Then, the 1001α% Boot-p confidence intervals are given by σ^**[K1],σ^**[K2] and λ^**[K1],λ^**[K2], where K1 and K2 are the integer parts of α2×Nboot and (1α2)×Nboot, respectively.

3.2. Bootstrap-t Confidence Intervals

Then, the 1001α% Boot-t confidence intervals are given by

σ^S1˜**[K2]Var(σ^),σ^S1˜**[K1]Var(σ^)

and

λ^S1˜**[K2]Var(λ^),λ^S1˜**[K1]Var(λ^)

where K1 and K2 are the integer parts of α2×Nboot and (1α2)×Nboot, respectively.

Algorithm 2: Constructing bootstrap-t confidence intervals
  • step 1

    Set the simulation number Nboot times ahead.

  • step 2

    Compute the MLEs of σ and λ under the original censored sample x_=(x1,x2,,xm), denoted as σ^ and λ^. (If we carry out a simulation study, we should first generate an adaptive progressive type II censored sample x_=(x1,x2,,xm) from EHL(λ,σ) with T,n,m,R as the original sample.)

  • step 3

    Generate a bootstrap sample x_* using σ^,λ^ and the same censoring pattern (n,m,T,R). Then, calculate the bootstrap MLEs σ^* and λ^* and their variances Var(σ^*) and Var(λ^*).

  • step 4

    Calculate the t-statistics S1˜=σ^*σ^Varσ^* for σ^* and S2˜=λ^*λ^Varλ^* for λ^*.

  • step 5

    Repeat steps 2–3 Nboot times to acquire a series of bootstrap t-statistics S1˜**1,S1˜**2,,S1˜**Nboot and S2˜**1,S2˜**2,,S2˜**Nboot.

  • step 6

    Arrange S1˜**1,S1˜**2,,S1˜**Nboot and S2˜**1,S2˜**2,,S2˜**Nboot in ascending order respectively and obtain S1˜**1,S1˜**2,S1˜**Nboot and S2˜**1,S2˜**2,,S2˜**Nboot.

4. Bayesian Estimation

In this section, we compute the Bayesian estimates of the quantities by using the Lindley method and the importance sampling procedure. Unlike classical statistics, Bayesian statistics treat quantities as random variables, which combines the prior information with observed information.

The option of prior distribution is a pivotal problem. Generally speaking, the conjugate prior distribution is the first choice due to its algebraic simplicity. However, it is very difficult to find such prior when both quantities σ and λ are unknown. The prior distribution is reasonable to keep the same form as (6). Suppose that σIGγ,δ and λGaα,β and that these two priors are independent. The PDFs of their prior distributions correspond to

π(σ)=δγΓ(γ)σγ1eδσ,γ>0,δ>0 (19)
π(λ)=βαΓ(α)λα1eβλ,α>0,β>0. (20)

The corresponding joint distribution is

π(σ,λ)=δγβαΓ(γ)Γ(α)σγ1λα1e(δσ+βλ), (21)

Given the sample x_, the posterior distribution π(σ,λ|x_) can be written as

π(σ,λ|x_)=L(x_|σ,λ)π(σ,λ)00L(x_|σ,λ)π(σ,λ)dσdλ. (22)

4.1. Symmetric and Asymmetric Loss Functions

The loss function is employed to appraise the intensity of inconsistency between the estimation of the parameter and the true value. The squared error loss function is a symmetric loss function, which is applied in many areas. However, on the condition that overestimation causes greater loss compared with underestimation or vice versa, using a symmetric loss function is not suitable. Instead, the asymmetric loss function is employed to fix the problem. Therefore, we consider the Bayesian estimations under one symmetric loss function, namely the squared error loss function (SELF) as well as two asymmetric loss functions, namely the Linex Loss Function (LLF) and the General Entropy Loss Function (GELF) in this subsection.

4.1.1. Squared Error Loss Function (SELF)

The squared error loss function is a symmetric loss function, which puts the overestimate and underestimate on the same level. It is the sum of squared distances between the target variable and the predicted value. The function corresponds to

LSE(υ,υ^)=(υ^υ)2, (23)

where υ^ is the estimation of υ.

The Bayesian estimation of υ under SELF is given by

υ^=Eυ(υ|x_). (24)

Then, for the unknown parameters σ and λ, the Bayesian estimates under SELF can be given directly as

σ^SE=00σπ(σ,λ|x_)dσdλ, (25)
λ^SE=00λπ(σ,λ|x_)dσdλ. (26)

4.1.2. Linex Loss Function (LLF)

The Linex function is a well-known asymmetric loss function. It is defined as

LLL(υ,υ^)=ep(υ^υ)p(υ^υ)1. (27)

The size of p denotes the level of asymmetry and its sign represents the direction of asymmetry. For p<0, LLF alters exponentially in the negative direction and linearly in the positive direction, thus a negative bias has a more serious impact—while, for p>0, the positive error will be punished heavily. The larger the dimension of p is, the larger the punishment intensity is. When p approaches 0, LLF is almost symmetric.

The Bayesian estimation of υ under LLF is written as

υ^LL=1plnEυ(epυ|x_). (28)

Then, for unknown parameters σ and λ, the Bayesian estimates under LLF are

σ^LL=1pln[00epσπ(σ,λ|x_)dσdλ], (29)
λ^LL=1pln[00epλπ(σ,λ|x_)dσdλ]. (30)

4.1.3. General Entropy Loss Function (GELF)

The General Entropy loss function (GELF) is another noted asymmetric loss function, which is

LGE(υ,υ^)=(υ^υ)qqlnυ^υ1. (31)

For q>0, the overestimation has a more serious impact compared with the underestimation, and vice versa. The Bayesian estimation of υ under GELF is derived:

υ^GE=[Eυ(υq|x_)]1q. (32)

Notably, when q=1, the Bayesian estimation under GELF has the same value as that under SELF. The Bayesian estimates of σ and λ under GELF correspond to

σ^GE=[00σqπ(σ,λ|x_)dσdλ]1q, (33)
λ^GE=[00λqπ(σ,λ|x_)dσdλ]1q. (34)

We can know that the Bayesian estimates of σ and λ are in the modality of a ratio of two complicated integrals and the specific and explicit forms cannot be represented without trouble. Thus, the Lindley method is employed to solve this problem.

4.2. Lindley Approximation Method

In this subsection, in order to compute the Bayesian estimates, we apply the Lindley approximation method. Let φ(σ,λ) denote any function about σ and λ, l denote the log-likelihood function and ρ(σ,λ)=lnπ(σ,λ). According to the [19], the Bayesian estimates can be expressed by the posterior expectation of φ(σ,λ)

E[φ(σ,λ)|x_]=φ(σ^,λ^)+ρ1A12+12(A+l03B21+l30B12+l12C21+l21C12)+ρ2A21, (35)

where

A=i=12i=12φijbijlij=i+jlθiθj,i=3jandi,j=0,1,2,3ρi=ρθi,φi=ρθi,φij=2ρθiθj,bij=[lij]1,Aij=φbii+φjbji,Bij=(φibii+φjbij)bii,Cij=3φibiibij+φj(biibjj+2bij2).

Here, θ=θ1,θ2=σ,λ and bij denotes the (i,j)-th component of the covariance matrix. Then, the Bayesian estimates under three loss functions SELF, LLF, and GELF are derived.

4.2.1. Squared Error Loss Function (SELF)

For σ, let φ(σ,λ)=σ; therefore,

φ(σ,λ)=σ,φ1=1,φ11=φ12=φ2=φ21=φ22=0. (36)

Then, the Bayesian estimate of σ under SELF is

σ^SE=σ^+12[b112l30+3b11b12l21+b11b22l12+2b212l12+b21b22l03]+ρ1b11+ρ2b12. (37)

Similarly, for parameter λ, it is clear that φ(σ,λ)=λ, hence

φ(σ,λ)=λ,φ2=1,φ21=φ22=φ1=φ11=φ12=0. (38)

Then, the Bayesian estimate of λ under SELF can be written as

λ^SE=λ^+12[b11b12l30+b11b22l21+2b122l12+3b21b22l12+b222l03]+ρ1b21+ρ2b22. (39)

4.2.2. Linex Loss Function (LLF)

For σ, we take φ(σ,λ)=epσ, hence

φ1=pepσ,φ11=p2epσ,φ2=φ12=φ21=φ22=0. (40)

The Bayesian estimate of σ under LLF is derived as

σ^LL=1pln{epσ^+12φ11b11+12φ1[b112l30+3b11b12l21+b11b22l12+2b212l12+b21b22l03]+φ1(ρ1b11+ρ2b12)}. (41)

Similarly, for the parameter λ, let φ(σ,λ)=epλ, hence

φ2=pepλ,φ22=p2epλ,φ1=φ11=φ12=φ21=0. (42)

The Bayesian estimate of λ under LLF can be written as

λ^LL=1pln{epλ^+12φ22b22+12φ2[b222l03+3b22b21l12+b11b22l21+2b122l21+b12b11l30]+φ2(ρ1b21+ρ2b22)}. (43)

4.2.3. General Entropy Loss Function (GELF)

For parameter σ, let φ(σ,λ)=σq, hence

φ1=qσq1,φ11=q(q+1)σq2,φ2=φ12=φ21=φ22=0. (44)

The Bayesian estimate of σ under GELF can be written as

σ^GE={σ^q+12φ11b11+12φ1[b112l30+3b11b12l21+b11b12l12+2b212l12+b21b22l03]+φ2(ρ1b11+ρ2b12)}1q. (45)

Similarly, for parameter λ,   , it is clear that φ(σ,λ)=λq, hence

φ2=qλq1,φ22=q(q+1)λq2,φ1=φ11=φ21=φ12=0. (46)

The Bayesian estimate of λ under GELF can be written as

σ^GE={λ^q+12φ22b22+12φ2[b222l03+3b22b21l12+b11b22l21+2b122l21+b12b11l30]+φ2(ρ1b21+ρ2b22)}1q. (47)

Though the Lindley approximation is effective to obtain point estimations by estimating the ratio of integrals, it can not provide credible intervals of the unknown parameters. Therefore, the importance sampling method is adopted to gain not only point estimation but also credible intervals.

4.3. Importance Sampling Procedure

The importance sampling procedure is an extension to the Monte Carlo method, which can greatly reduce the number of sample points drawn in the simulation, and is widely used in the reliability analysis of various models. From (6) and (21), the joint posterior distribution is derived by

π(σ,λ|x_)δγβαΓ(γ)Γ(α)σmγ1λm+α1eλi=1mln1+exiσ1exiσ1σi=1mxiδσβλ×i=1m11e2xiσi=1J[1(1exiσ1+exiσ)λ]Ri[1(1exmσ1+exmσ)λ]nmi=1JRih1(σ)h2(λ|σ)h3(σ,λ), (48)

where

h1(σ)=(δ+i=1mxi)γ+mΓ(γ+m)σ(γ+m+1)eδ+i=1mσ, (49)
h2(λ|σ)=[β+i=1mln1+exiσ1exiσ]α+mΓ(α+m)λα+m1eλ(β+i=1mln1exiσ1+exiσ), (50)
h3(σ,λ)=1[β+i=1mln1+exiσ1exiσ]α+mi=1m11e2xiσi=1J[1(1exiσ1+exiσ)λ]Ri[1(1exmσ1+exmσ)λ]nmi=1JRi. (51)

It is clear that h1(σ) is the PDF of an inverse Gamma distribution while h2(λ) is the PDF of a Gamma distribution.

Therefore, the Bayesian estimation of φσ,λ is acquired by the following steps:

  1. Generate σ from IGσ(γ+m,δ+i=1mxi).

  2. On the basis of step 1, generate λ from Gaλ|σ(m+α,i=1mln1+exiσ1exiσ+β).

  3. Repeat step 1 and step 2 M times and produce a series of samples.

  4. The Bayesian estimate of φ(σ,λ) is calculated by
    φ^(σ,λ)=i=1Mφ(σi,λi)h3(σi,λi)i=1Mh3(σi,λi). (52)

Therefore, the Bayesian estimate of the unknown parameter σ and λ is derived by

σ^=i=1Mσih3(σi,λi)i=1Mh3(σi,λi),
λ^=i=1Mλih3(σi,λi)i=1Mh3(σi,λi).

Let

h3iσi,λi=h3σi,λii=1Mh3σi,λi. (53)

For the sake of simplicity, h3iσi,λi is denoted as h3i. Then, we sort {σ1,σ2,σM} in ascending order as {σ1,σ2,σM}. In addition, we combine h3i and σi together as {σ1,h31,σ2,h32,σM,h3M}. The HPD credible interval is established based on the estimate σ^p=σ(gp), where gp is an integer that satisfies

i=1gph3(i)pi=1gp+1h3(i). (54)

Hence, the 100%(1α) credible interval can be represented as (σ^ζ,σ^ζ+1α), ζ=h3(1),h3(1)+h3(2),,i=1gph3(i). Therefore, the HPD credible for σ is obtained by (σ^ζ*,σ^ζ*+1α). Note that σ^ζ*+1ασ^ζ*σ^ζ+1ασ^ζ for all ζ.

5. Simulation

Plenty of simulation experiments are carried out to appraise the performance of our estimations by Monte Carlo simulations. Here, the R software is employed for all the simulations. The point estimation is evaluated by the mean square error (MSE) and estimation value (VALUE), while the interval estimation is assessed based on the coverage rate (CR) and interval mean length (ML). For point estimation, smaller mean square error and closer estimation value suggest better performance of estimation. In addition, for interval estimation, the higher the coverage rate is and the narrower the interval mean length is, the better the estimation is.

First of all, adaptive type II progressive censored data from an exponentiated half-logistic distribution should be generated. The algorithm for generating adaptive Type II progressive censored data from a general distribution can be obtained in [3]. The algorithm to generate the censored data is listed in Algorithm 3.

Algorithm 3: Generating adaptive type II progressive censored data from EHL(λ,σ).
  • 1.

    Generate a Type II progressive censored sample from an exponentiated half-logistic distribution EHL(λ,σ) with initial values of (R1,R2,,Rm) and T,n,m:

    • (a)

      generate independent random variables U1,U2,,Um from the uniform distribution U(0,1).

    • (b)

      Let Vi=Ui1i+j=mi+1mRi, i=1,2,,m.

    • (c)

      Let Wi=1VmVm1Vmi+1, i=1,2,,m.

    • (d)

      For certain σ and λ, let Xi=F1(Wi). Then, X=(X1,X2,,Xm) is the Type II progressive censored sample from EHL(λ,σ).

  • 2.

    Confirm the value of J, and abandon the sample XJ+2,,Xm.

  • 3.

    Generate the first mJ1 order statistics from a truncated distribution f(x)[1F(xJ+1)] with sample size n(i=1JRi+J+1) as XJ+2,XJ+3,,Xm.

In order to carry out simulations, we set σ=1.5 and λ=1. For comparison purposes, we consider T=2,4 and (n,m)=(30,20),(30,25),(50,40),(50,45),(80,60),(80,70). For all the combinations of sample size and time T, two different censoring schemes (CS) are chosen:

  • Scheme I (Sch I): R1=nm,Rk=0,k=2,3,,m.

  • Scheme II (Sch II): R1=R2==Rnm=1,Rk=0,k>nm.

In addition, the specific diverse censoring schemes conceived for the simulation are listed in Table 1.

Table 1.

Different censoring schemes.

T n m CS T n m CS
2 30 20 (10, 0*19) 4 30 20 (10, 0*19)
(1*10, 0*10) (1*10, 0*10)
25 (5, 0*24) 25 (5, 0*24)
(1*5, 0*20) (1*5, 0*20)
50 40 (10, 0*39) 50 40 (10, 0*39)
(1*10, 0*30) (1*10, 0*30)
45 (5, 0*44) 45 (5, 0*44)
(1*5, 0*40) (1*5, 0*40)
80 60 (20, 0*59) 80 60 (20, 0*59)
(1*20, 0*40) (1*20, 0*40)
70 (10, 0*69) 70 (10, 0*69)
(1*10, 0*60) (1*10, 0*60)

For simplicity, we abbreviate the censoring schemes. For example, (1, 1, 1, 0, 0, 0, 0) is represented as (1*3, 0*4). In each case, the simulation is repeated 3000 times. Then, the associated MSEs and VALUEs with the point estimation and the related coverage rates and mean lengths with the interval estimation can be acquired through Monte Carlo simulations using R software.

For maximum likelihood estimation, the L-BFGS-B method is used and the simulation results are put into Table A1. In Bayesian estimation, we employ not only non-informative priors (non-infor) but also informative priors (infor). For the non-informative priors, we set α=β=γ=δ=0.0001. Then, for the informative priors, we should first determine the hyper-parameters for Bayesian estimation. Generally speaking, the actual value of the parameter is usually considered as the expectation of the prior distribution. However, due to the complexity and interactive influence of the two prior distributions, the optimal value can not be found directly. Thus, we adopt a genetic algorithm and simulated annealing algorithm to determine the optimal hyper-parameters and the results are: γ=4.5,δ=7.5,α=4.5,β=4.5. To get Bayesian point estimation, the Lindley method and the importance sampling method are employed. Three loss functions are adopted separately for comparison purposes. The parameter p of LLF is set to 0.5 and 1 and the parameter q of GELF is set to 0.5 and 0.5.

The informative Bayes method uses minimization of loss functions, and such minimizations can only be performed if the true parameter values are known. Hence, informative Bayes can only be seen as a reference, or an oracle method.

The results are presented in Table A2, Table A3, Table A4, Table A5, Table A6, Table A7, Table A8 and Table A9. In addition, the mean length and coverage rate of asymptotic confidence intervals, boot-t intervals, boot-p intervals, and HPD intervals at 95% confidence/credible level are also shown in Table A10 and Table A11.

Due to the excessive amount of tables, it is not easy for readers to find rules of the estimation. Therefore, some figures which present the most representative simulation results are made to show the rules more intuitively. Figure 3 and Figure 4 present the MSEs of the maximum likelihood estimates of the two parameters under censoring scheme I and censoring scheme II when T=2. Figure 5 and Figure 6 compare the MSEs of maximum likelihood estimates with the Bayesian estimates with non-informative and informative priors obtained by importance sampling under censoring scheme I and T=2.

Figure 3.

Figure 3

The MSEs of the MLEs of parameter σ under two censoring schemes.

Figure 4.

Figure 4

The MSEs of the MLEs of parameter λ under two censoring schemes.

Figure 5.

Figure 5

The MSEs of MLEs and Bayesian estimates with non-informative and informative priors of parameter σ.

Figure 6.

Figure 6

The MSEs of MLEs and Bayesian estimates with non-informative and informative priors of parameter σ.

From Table A1, we can draw that

  • (1)

    All the estimation values are generally inclined to approach the true value, and MSEs tend to decrease as the sample size n or observed numbers m or the value of m/n increases. The rules of the MSEs can be easily obtained from Figure 3 and Figure 4.

  • (2)

    The MLEs of λ perform better than the MLEs of σ according to the MSE. However, the estimation values of σ are closer to the true value compared with those of λ.

  • (3)

    Diverse censoring schemes show a regular mode in terms of MSE. From the Figure 3 and Figure 4, we can know that, when σ is considered, Sch I performs better than Sch II in all cases, yet when λ is considered, Sch II is more effective than Sch I except the case of n=30.

  • (4)

    There is no observed specific pattern with the change of T. It is apprehensible because the observed data may remain unaltered when T changes.

From Table A2, Table A3, Table A4, Table A5, Table A6, Table A7, Table A8 and Table A9, we can find that

  • (1)

    Generally, the Bayesian estimates under three loss functions with informative priors are more accurate contrasted with MLEs in terms of MSE in all cases. This rule can be intuitively summarized from Figure 5 and Figure 6. This is because the Bayesian method not only considers the data but also takes the prior information of unknown parameters into account. In addition, the importance sampling procedure outperforms the Lindley method.

  • (2)

    From Figure 5 and Figure 6, it is clear that the performance of the Bayesian estimates with non-informative priors is almost similar to MLEs under all circumstances. This is because we have no information with respect to the unknown parameters. In other words, it only takes the data into account. Thus, it is reasonable that the results are analogous to MLEs.

  • (3)

    The Bayesian estimates under GELF are superior compared with those under SELF and LLF. For LLF, Bayesian estimates under p=1 are better than those under p=0.5 for the parameter λ, while choosing p=0.5 is better than p=1 for the estimate of σ. For GELF, take the fact that both q=0.5 and q=0.5 are satisfactory and perform well. On the whole, the Bayesian estimates under GELF using the importance sampling procedure are the most effective as they possess the minimal MSEs and the closest estimation values.

  • (4)

    When σ is considered, Sch I performs better than Sch II except when n=50, yet when λ is taken into account, Sch II is superior compared with Sch I in most cases.

From Table A10 and Table A11, we can draw these conclusions

  • (1)

    The mean lengths of all the intervals become narrower as n and m increase, and this pattern holds for both σ and λ. In addition, the coverage rate of intervals of σ is higher while the coverage rate of intervals of λ is stable with the increase of m and n.

  • (2)

    The HPD credible intervals and boot-t intervals perform better contrasted by asymptotic confidence intervals due to narrower mean length and higher coverage rate. In addition, the HPD credible intervals possess the narrowest mean length while the boot-t intervals have the highest coverage rate.

  • (3)

    The results of the two parameters’ intervals have no obvious connection with different censoring schemes.

6. Real Data Analysis

An authentic dataset is analyzed for expository intention by employing the methods mentioned above in this section. The dataset was initially from [20] and further employed by [21,22]. The complete data set describes log times to the breakdown of an insulating fluid testing experiment and is presented in Table 2.

Table 2.

Real data set.

0.270027 1.02245 1.15057 1.42311 1.54116 1.57898 1.8718 1.9947
2.08069 2.11263 2.48989 3.45789 3.48187 3.52371 3.60305 4.28895

At the beginning, we should consider the problem whether the distribution EHLλ,σ fits the data set well. The fitting effect of exponentiated half-logistic distribution and Half Logistic distribution with the CDF F(x)=1exλσ1+exλσ is compared. The criteria employed for examining the goodness of fit include the negative log-likelihood function (lnL), Kolmogorov–Smirnov (K-S) statistics with its p-value, Bayesian Information Criterion (BIC), and Akaike Information Criterion (AIC). The definitions are:

AIC=2×dlnL,
BIC=d×lnn2×lnL,

where d is the number of parameters, L is the maximized value of the likelihood function, and n denotes the total number of observed values.

The results of the K-S, p-value, AIC, BIC, and lnL of the two distributions are listed in Table 3. Obviously, exponentiated half-logistic distribution fits the model better since it has lower K-S, AIC, BIC, lnL statistics, and higher p-value. Then, we can analyze this data on the basis of our model.

Table 3.

The fitting results of the two distributions.

λ σ lnL AIC BIC K-S Statistic p-Value
HL 1.0023 0.6536 27.0313 56.6609 56.2061 0.2659 0.3749
EHL 2.4309 0.9639 24.4488 52.8976 54.4428 0.1836 0.5906

We set n=16,m=12 and T=32, 2. The two different censoring schemes are (4,011) and (14,08). Table 4 presents the specific adaptive type II censoring data under different schemes based on the data set.

Table 4.

Adaptive progressive type II censoring data under different schemes.

Scheme Censored Data
(4, 0*11), T=1.5 0.270027, 1.57898, 1.8718, 1.9947, 2.08089, 2.11263
2.48989, 3.45789, 3.481865, 3.52371, 3.60305, 4.28895
(4, 0*11), T=2 0.270027, 1.57898, 1.8718, 1.9947, 2.08089, 2.11263
2.48989, 3.45789, 3.481865, 3.52371, 3.60305, 4.28895
(1*4, 0*8), T=1.5 0.270027, 1.15057, 1.54116, 1.57898, 1.8718, 1.9947
2.08089, 2.11263, 2.48989, 3.45789, 3.481865, 3.52371
(1*4, 0*8), T=2 0.270027, 1.15057, 1.54116, 1.8718, 2.08089, 2.11263
2.48989, 3.45789, 3.48187, 3.52371, 3.60305, 4.28895

The point estimations for σ and λ are presented in Table 5 and Table 6. For Bayesian estimation, since we have no informative prior, a non-informative prior is applied, namely α=β=γ=δ=0.0001. Three loss functions are considered, and we still use the parameters in the previous simulation. At the same time, 95% ACIs, boot-p, boot-t, and HPD intervals are established, while Table 7 and Table 8 display the corresponding results. Let Lower denote the lower bound and Upper denote the upper bound.

Table 5.

The MLEs and Bayesian estimates of σ under SELF, LLF, and GELF by the Lindley approximation and the importance sampling.

T R MLE SELF LLF GELF Method
p = 12 p = 1 p = −12 p = 12
1.5 (4, 0*11) 1.1958 1.1285 1.1104 1.0942 1.1134 1.0875 Lindley
1.2577 1.3180 1.0408 1.0662 1.2887 Importance sampling
(1*4, 0*11) 1.2014 1.0794 1.0626 1.0483 1.0654 1.0429 Lindley
1.2346 1.1696 1.1458 1.1257 1.1306 Importance sampling
2 (4, 0*11) 1.1958 1.0340 1.0197 1.0061 1.0206 0.9959 Lindley
1.3057 1.0047 1.2387 1.2787 0.9836 Importance sampling
(1*4, 0*11) 1.2326 0.9577 0.9451 0.9333 0.9451 0.9223 Lindley
1.3420 1.2877 1.2147 1.1860 1.3209 Importance sampling

Table 6.

The MLEs and Bayesian estimates of λ under SELF, LLF, and GELF by the Lindley approximation and the importance sampling.

T R MLE SELF LLF GELF Method
p = 12 p = 1 p = −12 p = 12
1.5 (4, 0*11) 2.4364 2.3591 2.3883 2.3182 2.2932 2.3234 Lindley
2.4817 2.2303 2.3475 2.5060 2.3174 Importance sampling
(1*4, 0*11) 2.3748 2.5351 2.3908 2.1896 2.5062 2.3240 Lindley
2.5865 2.3003 2.4913 2.4253 2.4157 Importance sampling
2 (4, 0*11) 2.4364 2.5786 2.3282 2.1437 2.4798 2.2910 Lindley
2.1038 2.1082 1.8596 2.0381 2.0456 Importance sampling
(1*4, 0*11) 2.3820 2.7732 2.5294 2.3202 2.7069 2.5050 Lindley
2.5353 2.1758 2.5118 2.4388 2.4546 Importance sampling

Table 7.

The four intervals for σ at the 95% confidence/credible level.

T R ACI boot-p boot-t HPD
Lower Upper Lower Upper Lower Upper Lower Upper
1.5 (4, 0*11) 0.6568 1.7348 0.6645 1.7800 0.8590 1.6932 0.7425 1.6066
(1*4, 0*11) 0.6243 1.7785 0.6399 2.0750 0.7176 1.7313 0.8460 1.7601
2 (4, 0*11) 0.6568 1.7348 0.6001 1.7640 0.6955 1.7824 0.6969 1.6236
(1*4, 0*11) 0.6243 1.7785 0.6340 1.9732 0.8295 1.9510 0.9078 1.4993

Table 8.

The four intervals for λ at the 95% confidence/credible level.

T R ACI boot-p boot-t HPD
Lower Upper Lower Upper Lower Upper Lower Upper
1.5 (4, 0*11) 0.5197 4.3530 1.3134 3.8975 0.8036 3.2435 1.0744 3.3039
(1*4, 0*11) 0.5143 4.0354 1.2444 4.3882 1.0538 3.8101 0.7514 3.2800
2 (4, 0*11) 0.5197 4.3530 1.3085 4.0165 1.5664 4.3491 0.8151 3.4981
(1*4, 0*11) 0.5143 4.0354 1.3628 3.8839 0.4289 3.2993 1.0254 3.7863

From Table 5, Table 6, Table 7 and Table 8, the following conclusions are drawn:

  • (1)

    The estimates of parameter σ using the Lindley method generally tend to be larger than those gained by the importance sampling procedure.

  • (2)

    The estimates under the first censoring scheme are closer to the MLEs under the full sample, and the estimations using the Lindley method are more effective than those obtained by the importance sampling.

  • (3)

    The results are relatively close between T=1.5 and T=2 when using the first censoring scheme because the observed data remain unaltered when the T is increasing.

  • (4)

    The HPD credible intervals have the narrowest mean length among all the intervals while the ACIs possess the longest mean length.

  • (5)

    The results of the two parameters’ intervals have no obvious connection with different censoring schemes.

7. Conclusions

In this manuscript, classical and Bayesian inference for exponentiated half-logistic distribution under adaptive Type II progressive censoring is considered. The maximum likelihood estimates are derived through the Newton–Raphson algorithm. Bayesian estimation under three loss functions is also considered and the estimates are derived through importance sampling and the Lindley method. Meanwhile, we establish the confidence and credible intervals of σ and λ and contrast them with each other. Asymptotic confidence intervals are constructed based on observed and expected Fisher information matrices. In order to tackle the problem of small sample size, boot-p and boot-t intervals are computed.

In the simulation section, estimation values and mean squared values are calculated to test the performance of the point estimation while mean lengths and coverage rates are considered for the interval estimation. According to the simulation results, it is clear that the Bayesian estimation which possesses suitable informative priors performs better than MLEs under all circumstances. In more detail, the Bayesian estimations under GELF perform best among all the estimations and the importance sampling procedure makes more sense than Lindley approximation. In addition, when it comes to interval estimation, boot-t and boot-p intervals perform better in the case of a small sample size than asymptotic confidence intervals. In addition, HPD credible intervals generally possess the shortest mean length while boot-t intervals have the highest coverage rate compared with other intervals.

Exponentiated half-logistic distribution under adaptive Type II progressive censoring is significant and practical due to the flexibility of the censoring scheme and the superior features of distribution. Furthermore, the competing risks and accelerated life test can be explored in the research field. In brief, carrying out further research on this model has great potential for survival and reliability analysis.

Appendix A. The Simulation Results of MLEs

Table A1.

The simulation results of MLEs for σ and λ.

T n m Sch σ λ
VALUE MSE VALUE MSE
2 30 20 I 1.4694 0.1207 1.1028 0.1075
II 1.4661 0.1457 1.1075 0.1138
25 I 1.4667 0.0937 1.1024 0.1010
II 1.4754 0.1005 1.1006 0.1025
50 40 I 1.4787 0.0622 1.0607 0.0533
II 1.4792 0.0649 1.0565 0.0496
45 I 1.4832 0.0558 1.0580 0.0477
II 1.4816 0.0559 1.0553 0.0458
80 60 I 1.4898 0.0404 1.0403 0.0297
II 1.4858 0.0425 1.0341 0.0272
70 I 1.4858 0.0351 1.0348 0.0271
II 1.4892 0.0364 1.0337 0.0258
4 30 20 I 1.4651 0.1260 1.1133 0.1140
II 1.4573 0.1316 1.1152 0.1170
25 I 1.4655 0.0990 1.1063 0.1039
II 1.4661 0.1025 1.1049 0.1057
50 40 I 1.4772 0.0583 1.0569 0.0503
II 1.4857 0.0655 1.0500 0.0454
45 I 1.4823 0.0572 1.0518 0.0474
II 1.4805 0.0580 1.0542 0.0456
80 60 I 1.4904 0.0419 1.0342 0.0305
II 1.4912 0.0445 1.0303 0.0288
70 I 1.4843 0.0352 1.0342 0.0266
II 1.4884 0.0369 1.0336 0.0264

Appendix B. The Simulation Results of Bayesian Estimates with Non-Informative Priors

Table A2.

The results of Bayesian estimates with non-informative priors for σ using the Lindley method.

T n m σ^SE σ^LL σ^GE
p=12 p=1 q=12 q=12
VALUE MSE VALUE MSE VALUE MSE VALUE MSE VALUE MSE
2 30 20 1.5300 0.1187 1.5303 0.1183 1.5301 0.1201 1.5309 0.1156 1.5296 0.1117
1.5328 0.1415 1.5347 0.1376 1.5335 0.1397 1.5333 0.1386 1.5329 0.1397
25 1.5289 0.0926 1.5336 0.0891 1.5323 0.0916 1.5327 0.0917 1.5330 0.0864
1.5346 0.1003 1.5247 0.1010 1.5244 0.9938 1.5242 0.0971 1.5242 0.0965
50 40 1.5209 0.0596 1.5221 0.0612 1.5209 0.0603 1.5210 0.0622 1.5201 0.0572
1.5206 0.0636 1.5210 0.0659 1.5200 0.0632 1.5199 0.0657 1.5198 0.0603
45 1.5202 0.0541 1.5175 0.0546 1.5167 0.0559 1.5164 0.0504 1.5162 0.0525
1.5195 0.0563 1.5194 0.0548 1.5181 0.0560 1.5174 0.0535 1.5183 0.0504
80 60 1.5092 0.0402 1.5105 0.0401 1.5098 0.0397 1.5101 0.0353 1.5092 0.0285
1.5136 0.0438 1.5143 0.0431 1.5138 0.0419 1.5137 0.0415 1.5131 0.0404
70 1.5126 0.0341 1.5148 0.0339 1.5141 0.0348 1.5134 0.0312 1.5132 0.0329
1.5104 0.0358 1.5116 0.0371 1.5106 0.0360 1.5105 0.0336 1.5104 0.0375
4 30 20 1.5324 0.1200 1.5359 0.1270 1.5339 0.1237 1.5341 0.1173 1.5343 0.1214
1.5367 0.1297 1.5433 0.1281 1.5427 0.1268 1.5421 0.1296 1.5415 0.1246
25 1.5327 0.0970 1.5354 0.0980 1.5340 0.0960 1.5338 1.0002 1.5343 0.0964
1.5292 0.0983 1.5347 0.1031 1.5339 0.1059 1.5331 0.1020 1.5331 0.1025
50 40 1.5196 0.0579 1.5235 0.0579 1.5218 0.0521 1.5221 0.0561 1.5220 0.0524
1.5183 0.0633 1.5149 0.0652 1.5136 0.0565 1.5133 0.0628 1.5136 0.0586
45 1.5168 0.0580 1.5182 0.0552 1.5168 0.0532 1.5170 0.0521 1.5174 0.0542
1.5195 0.0584 1.5197 0.0598 1.5188 0.0570 1.5192 0.0579 1.5186 0.0559
80 60 1.5109 0.0403 1.5097 0.0402 1.5091 0.0405 1.5086 0.0407 1.5085 0.0358
1.5088 0.0414 1.5098 0.0430 1.5088 0.0435 1.5083 0.0412 1.5080 0.0582
70 1.5121 0.0326 1.5160 0.0372 1.5150 0.0331 1.5151 0.0299 1.5156 0.0331
1.5105 0.0334 1.5124 0.0353 1.5108 0.0362 1.5113 0.0361 1.5105 0.0371

Table A3.

The results of Bayesian estimates with non-informative priors for λ using the Lindley method.

T n m σ^SE λ^LL λ^GE
p=12 p=1 q=12 q=12
VALUE MSE VALUE MSE VALUE MSE VALUE MSE VALUE MSE
2 30 20 1.1021 0.1065 1.1024 0.1075 1.1019 0.1062 1.1017 0.1059 1.1018 0.1062
1.1064 0.1129 1.1071 0.1147 1.1063 0.1127 1.1071 0.1134 1.1055 0.1125
25 1.1024 0.1012 1.1021 0.1003 1.1019 0.1003 1.1006 0.1000 1.1019 0.0991
1.0999 0.1014 1.0996 0.1022 1.0990 0.1022 1.1005 0.1016 1.0995 0.1016
50 40 1.0594 0.0524 1.0604 0.0539 1.0600 0.0523 1.0604 0.0514 1.0590 0.0524
1.0563 0.0491 1.0561 0.0489 1.0558 0.0481 1.0547 0.0487 1.0561 0.0487
45 1.0578 0.0474 1.0570 0.0461 1.0567 0.0463 1.0572 0.0479 1.0565 0.0462
1.0543 0.0454 1.0552 0.0439 1.0551 0.0449 1.0534 0.0454 1.0551 0.0444
80 60 1.0393 0.0282 1.0393 0.0285 1.0392 0.0313 1.0387 0.0282 1.0400 0.0290
1.0328 0.0267 1.0325 0.0260 1.0330 0.0275 1.0325 0.0255 1.0339 0.0256
70 1.0342 0.0266 1.0338 0.0264 1.0347 0.0261 1.0330 0.0259 1.0341 0.0269
1.0327 0.0250 1.0324 0.0250 1.0335 0.0268 1.0336 0.0256 1.0317 0.0257
4 30 20 1.1121 0.1138 1.1123 0.1120 1.1127 0.1122 1.1124 0.1135 1.1119 0.1128
1.1145 0.1176 1.1140 0.1158 1.1148 0.1164 1.1144 0.1157 1.1140 0.1155
25 1.1053 0.1032 1.1057 0.1028 1.1060 0.1024 1.1055 0.1031 1.1054 0.1023
1.1034 0.1059 1.1048 0.1038 1.1034 0.1054 1.1047 0.1042 1.1040 0.1049
50 40 1.0566 0.0501 1.0560 0.0490 1.0558 0.0493 1.0568 0.0493 1.0560 0.0490
1.0493 0.0450 1.0491 0.0448 1.0487 0.0446 1.0491 0.0460 1.0492 0.0449
45 1.0509 0.0462 1.0517 0.0470 1.0517 0.0473 1.0501 0.0459 1.0507 0.0459
1.0527 0.0448 1.0530 0.0449 1.0525 0.0450 1.0527 0.0457 1.0527 0.0436
80 60 1.0338 0.0297 1.0337 0.0297 1.0340 0.0293 1.0330 0.0297 1.0340 0.0292
1.0297 0.0290 1.0290 0.0272 1.0300 0.0278 1.0288 0.0287 1.0287 0.0285
70 1.0326 0.0260 1.0331 0.0268 1.0334 0.0264 1.0336 0.0252 1.0340 0.0263
1.0328 0.0263 1.0324 0.0253 1.0324 0.0258 1.0332 0.0262 1.0316 0.0247

Table A4.

The results of Bayesian estimates with non-informative priors for σ using importance sampling.

T n m λ^SE λ^LL λ^GE
p=12 p=1 q=12 q=12
VALUE MSE VALUE MSE VALUE MSE VALUE MSE VALUE MSE
2 30 20 1.5302 0.1207 1.4709 0.1089 1.4641 0.1172 1.5326 0.1205 1.5251 0.1298
1.5382 0.1419 1.5321 0.1323 1.5292 0.1391 1.5328 0.1356 1.5307 0.1438
25 1.5305 0.0892 1.5301 0.0882 1.5246 0.0815 1.5327 0.0822 1.5299 0.0844
1.5393 0.0997 1.5327 0.0989 1.5257 0.0907 1.5311 0.0925 1.5279 0.0942
50 40 1.5293 0.0595 1.5275 0.0616 1.5244 0.0589 1.5203 0.0585 1.5242 0.0558
1.5253 0.0631 1.5220 0.0602 1.5291 0.0675 1.5253 0.0593 1.5281 0.0653
45 1.5269 0.0568 1.5296 0.0567 1.5266 0.0541 1.5290 0.0557 1.5237 0.0536
1.5253 0.0562 1.5270 0.0527 1.5248 0.0548 1.5277 0.0571 1.5226 0.0550
80 60 1.5126 0.0403 1.5125 0.0357 1.5109 0.0396 1.5179 0.0389 1.5147 0.0376
1.5098 0.0428 1.5151 0.0404 1.5135 0.0422 1.5140 0.0444 1.5103 0.0431
70 1.5117 0.0350 1.5091 0.0340 1.5078 0.0331 1.5130 0.0340 1.5104 0.0360
1.5148 0.0371 1.5078 0.0310 1.5064 0.0331 1.5108 0.0348 1.5082 0.0328
4 30 20 1.5288 0.1211 1.5313 0.1121 1.5323 0.1185 1.5330 0.1145 1.5321 0.1225
1.5378 0.1372 1.5324 0.1366 1.5302 0.1309 1.5363 0.1335 1.5356 0.1371
25 1.5298 0.0943 1.5352 0.0906 1.5285 0.0924 1.5227 0.0973 1.5202 0.0990
1.5311 0.1021 1.5241 0.1081 1.5370 0.0991 1.5333 0.1054 1.5206 0.1078
50 40 1.5265 0.0515 1.5250 0.0556 1.5222 0.0553 1.5274 0.0590 1.5212 0.0562
1.5250 0.0633 1.5241 0.0665 1.5221 0.0634 1.5253 0.0609 1.5290 0.0683
45 1.5266 0.0579 1.5241 0.0507 1.5214 0.0584 1.5290 0.0558 1.5239 0.0537
1.5240 0.0596 1.5262 0.0556 1.5239 0.0537 1.5263 0.0575 1.5212 0.0553
80 60 1.5167 0.0444 1.5101 0.0480 1.5184 0.0468 1.5117 0.0430 1.5183 0.0416
1.51198 0.0479 1.5145 0.0499 1.5130 0.0389 1.5162 0.0465 1.5148 0.0451
70 1.5083 0.0337 1.5108 0.0355 1.5095 0.0346 1.5144 0.0327 1.5118 0.0318
1.5082 0.0353 1.5069 0.0334 1.5157 0.0356 1.5146 0.0342 1.5121 0.0332

Table A5.

The results of Bayesian estimates with non-informative priors for λ using importance sampling.

T n m λ^SE λ^LL λ^GE
p=12 p=1 q=12 q=12
VALUE MSE VALUE MSE VALUE MSE VALUE MSE VALUE MSE
2 30 20 1.1076 0.1033 1.1079 0.1053 1.1042 0.1003 1.1002 0.1083 1.1004 0.1028
1.1061 0.1110 1.1086 0.1157 1.1006 0.1173 1.1004 0.1183 1.1078 0.1193
25 1.1063 0.0962 1.1023 0.0927 1.1013 0.0914 1.1031 0.0941 0.9085 0.0932
1.1089 0.0966 1.1040 0.0918 1.1026 0.0934 1.1051 0.0939 1.1006 0.0948
50 40 1.0589 0.0526 1.0513 0.0498 0.9547 0.0501 1.0514 0.0503 0.9470 0.0508
1.0532 0.0468 1.0561 0.0459 0.9493 0.0478 1.0561 0.0463 0.9517 0.0484
45 0.9475 0.0432 0.9508 0.0429 0.9531 0.0424 0.9507 0.0432 0.9561 0.0433
1.0507 0.0459 1.0518 0.0453 0.9554 0.0457 1.0519 0.0456 0.9585 0.0463
80 60 0.9648 0.0282 0.9702 0.0279 0.9723 0.0271 0.9702 0.0281 0.9774 0.0276
0.9694 0.0265 0.9755 0.0264 0.9793 0.0253 0.9754 0.0265 0.9749 0.0257
70 0.9773 0.0245 0.9737 0.0245 0.9774 0.0257 0.9735 0.0246 0.9731 0.0262
0.9731 0.0261 0.9797 0.0261 0.9705 0.0261 0.9796 0.0262 0.9764 0.0265
4 30 20 1.1117 0.1115 1.1143 0.1158 1.1164 0.1108 1.1157 0.1182 1.1126 0.1130
1.1187 0.1111 1.1155 0.1153 1.1134 0.1155 1.1168 0.1175 1.1112 0.1172
25 1.1080 0.1096 1.1032 0.1047 1.1046 0.1084 1.1045 0.1066 1.1021 0.1099
1.1042 0.1003 1.1078 0.1096 1.1024 0.1081 1.1087 0.1013 0.9001 0.1097
50 40 1.0540 0.0498 0.9489 0.0491 1.0527 0.0522 0.9489 0.0495 0.9450 0.0533
1.0576 0.0488 1.0502 0.0479 1.0552 0.0396 1.0504 0.0384 0.9479 0.0430
45 1.0537 0.0482 0.9468 0.0475 0.9548 0.0449 0.9468 0.0479 0.9577 0.0456
1.0544 0.0454 0.9477 0.0449 0.9587 0.0447 0.9477 0.0452 0.9518 0.0452
80 60 0.9650 0.0307 0.9607 0.0306 0.9682 0.0292 0.9706 0.0307 0.9734 0.0366
0.9675 0.0268 0.9636 0.0267 0.9647 0.0259 0.9635 0.0268 0.9703 0.0363
70 0.9630 0.0245 0.9693 0.0245 0.9684 0.0232 0.9692 0.0246 0.9642 0.0337
0.9639 0.0261 0.9603 0.0261 0.9622 0.0234 0.9702 0.0262 0.9683 0.0338

Appendix C. The Simulation Results of Bayesian Estimates with Informative Priors

Table A6.

The results of Bayesian estimates with informative priors for σ using the Lindley method.

T n m σ^SE σ^LL σ^GE
p=12 p=1 q=12 q=12
VALUE MSE VALUE MSE VALUE MSE VALUE MSE VALUE MSE
2 30 20 1.5319 0.1153 1.5307 0.1125 1.5315 0.1259 1.4699 0.1010 1.5329 0.1187
1.5352 0.1254 1.5338 0.1176 1.5310 0.1301 1.4637 0.1042 1.5305 0.1271
25 1.5235 0.0895 1.5298 0.0890 1.5212 0.1117 1.4737 0.0750 1.5295 0.0937
1.5295 0.1102 1.5257 0.0984 1.5205 0.1218 1.4741 0.0821 1.5377 0.1018
50 40 1.5203 0.0542 1.5217 0.0499 1.5245 0.0516 1.4785 0.0531 1.5235 0.0567
1.5281 0.0566 1.5265 0.0519 1.5248 0.0593 1.4780 0.0545 1.5230 0.0632
45 1.5156 0.0417 1.5166 0.0485 1.5105 0.0439 1.4841 0.0440 1.5106 0.0498
1.5250 0.0473 1.5256 0.0535 1.5234 0.0448 1.4834 0.0476 1.5236 0.0509
80 60 1.5059 0.0357 1.5114 0.0339 1.5133 0.0346 1.4961 0.0315 1.5165 0.0325
1.5154 0.0399 1.5151 0.0436 1.5149 0.0409 1.4992 0.0316 1.5176 0.0462
70 1.5033 0.0289 1.5010 0.0276 1.5052 0.0297 1.4993 0.0255 1.5095 0.0283
1.5059 0.0294 1.5034 0.0280 1.5023 0.0307 1.4934 0.0257 1.5164 0.0291
4 30 20 1.5324 0.1234 1.5312 0.1144 1.5381 0.1292 1.4606 0.1025 1.5305 0.1202
1.5371 0.1235 1.5356 0.1154 1.5306 0.1364 1.4654 0.1026 1.5391 0.1250
25 1.5265 0.1056 1.5227 0.0945 1.5261 0.1094 1.4779 0.0775 1.5244 0.0920
1.5242 0.1064 1.5305 0.0951 1.5227 0.1115 1.4753 0.0789 1.5311 0.1141
50 40 1.5173 0.0624 1.5258 0.0579 1.5239 0.0630 1.4772 0.0511 1.5227 0.0577
1.5198 0.0640 1.5284 0.0594 1.5290 0.0679 1.4750 0.0519 1.5275 0.0622
45 1.5091 0.0551 1.5199 0.0417 1.5129 0.0544 1.4853 0.0467 1.5132 0.0505
1.5121 0.0530 1.5130 0.0495 1.5146 0.0507 1.4899 0.0439 1.5253 0.0473
80 60 1.5107 0.0380 1.5162 0.0360 1.5133 0.0346 1.4911 0.0320 1.5125 0.0325
1.5148 0.0471 1.5140 0.0404 1.5108 0.0406 1.4907 0.0329 1.5134 0.0457
70 1.5061 0.0284 1.5037 0.0270 1.5059 0.0278 1.4954 0.0260 1.5101 0.0264
1.5078 0.0300 1.5054 0.0285 1.5059 0.0318 1.4925 0.0248 1.5100 0.0302

Table A7.

The results of Bayesian estimates with informative priors for λ using the Lindley method.

T n m λ^SE λ^LL λ^GE
p=12 p=1 q=12 q=12
VALUE MSE VALUE MSE VALUE MSE VALUE MSE VALUE MSE
2 30 20 1.0909 0.1012 1.0895 0.0995 1.0908 0.0923 1.0887 0.0983 1.0915 0.0934
1.0961 0.0975 1.0883 0.0976 1.0856 0.0922 1.0873 0.0962 1.0795 0.0920
25 1.0878 0.0969 1.0772 0.0957 0.9273 0.0932 1.0766 0.0949 1.0773 0.0924
1.0765 0.0908 1.0697 0.0929 0.9278 0.0919 1.0689 0.0932 1.6983 0.0910
50 40 1.0664 0.0498 1.0496 0.0491 0.9424 0.0437 1.0594 0.0487 0.9490 0.0433
1.0579 0.0435 1.0411 0.0431 0.9548 0.0402 1.0510 0.0428 0.9518 0.0397
45 0.9952 0.0385 0.9691 0.0385 0.9548 0.0337 0.9511 0.0383 0.9533 0.0333
1.0547 0.0373 1.0362 0.0368 0.9679 0.0313 1.0480 0.0366 0.9545 0.0310
80 60 1.0476 0.0191 1.0328 0.0190 0.9737 0.0134 1.0328 0.0188 0.9684 0.0132
1.0302 0.0141 0.9763 0.0143 1.0312 0.0135 0.9765 0.0142 1.0254 0.0144
70 0.9775 0.0135 0.9737 0.0134 0.9809 0.0137 0.9738 0.0133 0.9849 0.0133
0.9752 0.0119 0.9763 0.0119 0.9852 0.0139 0.9814 0.0119 0.9790 0.0115
4 30 20 1.0927 0.1037 1.0892 0.1017 0.9186 0.0996 1.0882 0.1006 1.0897 0.0967
1.0899 0.0965 1.0882 0.0957 1.0833 0.0977 1.0873 0.0937 1.0835 0.0967
25 0.9271 0.0930 0.9265 0.0925 0.9202 0.0861 0.9262 0.0918 1.0708 0.0955
1.0835 0.0858 1.0629 0.0850 1.0760 0.0838 1.0726 0.0844 1.0653 0.0826
50 40 1.0565 0.0408 1.0683 0.0401 1.0591 0.0317 1.0520 0.0397 1.0559 0.0317
1.0506 0.0302 0.9340 0.0300 0.9599 0.0291 0.9539 0.0298 1.0465 0.0289
45 1.0546 0.0323 1.0482 0.0320 0.9576 0.0314 1.0481 0.0317 0.9542 0.0310
1.0495 0.0286 1.0433 0.0283 1.0449 0.0254 1.0432 0.0280 1.0412 0.0253
80 60 0.9729 0.0152 0.9685 0.0152 0.9652 0.0135 0.9786 0.0151 0.9797 0.0142
1.0327 0.0151 0.9688 0.0150 0.9670 0.0184 0.9787 0.0149 1.0210 0.0132
70 0.9765 0.0120 0.9725 0.0129 0.9708 0.0125 0.9825 0.0129 0.9847 0.0120
1.0225 0.0120 0.9789 0.0125 0.9740 0.0120 0.9889 0.0128 0.9780 0.0119

Table A8.

The results of Bayesian estimates with informative priors for σ using importance sampling.

T n m σ^SE σ^LL σ^GE
p=12 p=1 q=12 q=12
VALUE MSE VALUE MSE VALUE MSE VALUE MSE VALUE MSE
2 30 20 1.5380 0.0790 1.5336 0.0678 1.5337 0.0745 1.5379 0.0694 1.5336 0.0632
1.5347 0.0985 1.5394 0.0848 1.5353 0.0918 1.5320 0.0845 1.5342 0.0778
25 1.5352 0.0729 1.5304 0.0675 1.5313 0.0691 1.5282 0.0652 1.5269 0.0561
1.5303 0.0796 1.5362 0.0635 1.5361 0.0757 1.5368 0.0715 1.5330 0.0598
50 40 1.5296 0.0522 1.5210 0.0471 1.5222 0.0505 1.5274 0.0487 1.5295 0.0457
1.5332 0.0476 1.5289 0.0439 1.5260 0.0461 1.5215 0.0445 1.5271 0.0424
45 1.5207 0.0439 1.5276 0.0377 1.5216 0.0427 1.5177 0.0413 1.5158 0.0362
1.5270 0.0463 1.5201 0.0437 1.5279 0.0443 1.5221 0.0425 1.5286 0.0421
80 60 1.5188 0.0271 1.5151 0.0261 1.5139 0.0261 1.5109 0.0252 1.5108 0.0253
1.5201 0.0314 1.5114 0.0264 1.5142 0.0301 1.5044 0.0290 1.5113 0.0255
70 1.5075 0.0214 1.5038 0.0187 1.5037 0.0205 1.5022 0.0198 1.5088 0.0181
1.5117 0.0217 1.5071 0.0196 1.5068 0.0210 1.5044 0.0204 1.5110 0.0190
4 30 20 1.5322 0.0527 1.5371 0.0737 1.5351 0.0494 1.5345 0.0461 1.5333 0.0685
1.5331 0.0828 1.5309 0.0931 1.5346 0.0777 1.5325 0.0718 1.5344 0.0853
25 1.5277 0.0763 1.5292 0.0849 1.5234 0.0732 1.5243 0.0665 1.5249 0.0596
1.5261 0.0771 1.5321 0.0639 1.5334 0.0817 1.5344 0.0684 1.5358 0.0698
50 40 1.5254 0.0453 1.5203 0.0392 1.5263 0.0434 1.5206 0.0416 1.5191 0.0378
1.5249 0.0453 1.5207 0.0465 1.5268 0.0440 1.5219 0.0424 1.5195 0.0451
45 1.5233 0.0352 1.5204 0.0346 1.5261 0.0345 1.5219 0.0336 1.5228 0.0394
1.5157 0.0405 1.5133 0.0354 1.5183 0.0391 1.5136 0.0377 1.5156 0.0342
80 60 1.5168 0.0270 1.5126 0.0217 1.5116 0.0258 1.5093 0.0247 1.5114 0.0210
1.5127 0.0278 1.5161 0.0229 1.5130 0.0268 1.5105 0.0248 1.5148 0.0221
70 1.5072 0.0227 1.5108 0.0220 1.5132 0.0220 1.5108 0.0214 1.5097 0.0214
1.5024 0.0254 1.5088 0.0261 1.5082 0.0244 1.5055 0.0236 1.5078 0.0235

Table A9.

The results of Bayesian estimates with informative priors for λ using importance sampling.

T n m λ^SE λ^LL λ^GE
p=12 p=1 q=12 q=12
VALUE MSE VALUE MSE VALUE MSE VALUE MSE VALUE MSE
2 30 20 1.0909 0.1012 1.0895 0.0995 1.0908 0.0923 1.0887 0.0983 1.0915 0.0934
1.0961 0.0975 1.0883 0.0976 1.0856 0.0922 1.0873 0.0962 1.0795 0.0920
25 1.0878 0.0969 1.0772 0.0957 0.9273 0.0932 1.0766 0.0949 1.0773 0.0924
1.0765 0.0908 1.0697 0.0929 0.9278 0.0919 1.0689 0.0932 1.6983 0.0910
50 40 1.0664 0.0498 1.0496 0.0491 0.9424 0.0437 1.0594 0.0487 0.9490 0.0433
1.0579 0.0435 1.0411 0.0431 0.9548 0.0402 1.0510 0.0428 0.9518 0.0397
45 0.9952 0.0385 0.9691 0.0385 0.9548 0.0337 0.9511 0.0383 0.9533 0.0333
1.0547 0.0373 1.0362 0.0368 0.9679 0.0313 1.0480 0.0366 0.9545 0.0310
80 60 1.0476 0.0191 1.0328 0.0190 0.9737 0.0134 1.0328 0.0188 0.9684 0.0132
1.0302 0.0141 0.9763 0.0143 1.0312 0.0135 0.9765 0.0142 1.0254 0.0144
70 0.9775 0.0135 0.9737 0.0134 0.9809 0.0137 0.9738 0.0133 0.9849 0.0133
0.9752 0.0119 0.9763 0.0119 0.9852 0.0139 0.9814 0.0119 0.9790 0.0115
4 30 20 1.0927 0.1037 1.0892 0.1017 0.9186 0.0996 1.0882 0.1006 1.0897 0.0967
1.0899 0.0965 1.0882 0.0957 1.0833 0.0977 1.0873 0.0937 1.0835 0.0967
25 0.9271 0.0930 0.9265 0.0925 0.9202 0.0861 0.9262 0.0918 1.0708 0.0955
1.0835 0.0858 1.0629 0.0850 1.0760 0.0838 1.0726 0.0844 1.0653 0.0826
50 40 1.0565 0.0408 1.0683 0.0401 1.0591 0.0317 1.0520 0.0397 1.0559 0.0317
1.0506 0.0302 0.9340 0.0300 0.9599 0.0291 0.9539 0.0298 1.0465 0.0289
45 1.0546 0.0323 1.0482 0.0320 0.9576 0.0314 1.0481 0.0317 0.9542 0.0310
1.0495 0.0286 1.0433 0.0283 1.0449 0.0254 1.0432 0.0280 1.0412 0.0253
80 60 0.9729 0.0152 0.9685 0.0152 0.9652 0.0135 0.9786 0.0151 0.9797 0.0142
1.0327 0.0151 0.9688 0.0150 0.9670 0.0184 0.9787 0.0149 1.0210 0.0132
70 0.9765 0.0120 0.9725 0.0129 0.9708 0.0125 0.9825 0.0129 0.9847 0.0120
1.0225 0.0120 0.9789 0.0125 0.9740 0.0120 0.9889 0.0128 0.9780 0.0119

Appendix D. The Simulation Results of All Intervals

Table A10.

The simulation results of five intervals for σ.

T n m Sch ACI boop-p boot-t HPD
non-infor infor
ML CR ML CR ML CR ML CR ML CR
2 30 20 I 1.3317 0.8903 1.2490 0.8847 1.2206 0.9163 1.3226 0.8883 1.1232 0.8277
II 1.3911 0.8893 1.4017 0.8917 1.3817 0.9047 1.3757 0.8891 1.1982 0.8383
25 I 1.1989 0.8923 1.2019 0.8970 1.1141 0.9210 1.1695 0.8887 1.0093 0.8410
II 1.2153 0.9083 1.2504 0.8970 1.1093 0.9157 1.1835 0.9038 1.0141 0.8477
50 40 I 0.9626 0.9160 0.9915 0.9056 0.8741 0.9440 0.9483 0.9106 0.7634 0.8580
II 0.9712 0.9280 0.9817 0.9193 0.9596 0.9253 0.9382 0.9214 0.7762 0.8767
45 I 0.9131 0.9260 0.9540 0.9220 0.8097 0.9440 0.9080 0.9219 0.7233 0.8773
II 0.9126 0.9250 0.9416 0.9147 0.8124 0.9433 0.8982 0.9237 0.7168 0.8753
80 60 I 0.7919 0.9293 0.8117 0.9180 0.6917 0.9527 0.7732 0.9230 0.5902 0.8700
II 0.8053 0.9283 0.7979 0.9293 0.7052 0.9520 0.7863 0.9272 0.6035 0.8800
70 I 0.7347 0.9317 0.7573 0.9396 0.6328 0.9500 0.7059 0.9252 0.5310 0.8847
II 0.7313 0.9247 0.7766 0.9380 0.6373 0.9487 0.6982 0.9228 0.5385 0.8773
4 30 20 I 1.3309 0.8943 1.3719 0.8897 1.2348 0.9007 1.3268 0.8903 1.1348 0.8367
II 1.3853 0.8810 1.3972 0.8967 1.3912 0.9150 1.3740 0.8800 1.1838 0.8273
25 I 1.1981 0.9020 1.2543 0.8980 1.1131 0.9257 1.1897 0.8983 1.0104 0.8243
II 1.2229 0.9050 1.2726 0.9113 1.1227 0.9190 1.1945 0.9015 1.0109 0.8387
50 40 I 0.9621 0.9200 0.9906 0.9115 0.8622 0.9510 0.9562 0.9149 0.7614 0.8453
II 0.9795 0.9230 0.9850 0.9160 0.8725 0.9487 0.9656 0.9202 0.7693 0.8513
45 I 0.9129 0.9223 0.9343 0.9267 0.8169 0.9467 0.9111 0.9183 0.7151 0.8680
II 0.9114 0.9217 0.9162 0.9273 0.8148 0.9500 0.8882 0.9183 0.7154 0.8760
80 60 I 0.7892 0.9340 0.8126 0.9438 0.6891 0.9467 0.7601 0.9314 0.5927 0.8673
II 0.8000 0.9210 0.8165 0.9247 0.7062 0.9560 0.7723 0.9154 0.6034 0.8647
70 I 0.7354 0.9300 0.7443 0.9173 0.6323 0.9580 0.7286 0.9281 0.5374 0.8727
II 0.7336 0.9310 0.7372 0.9333 0.6357 0.9520 0.7175 0.9258 0.5355 0.8713

Table A11.

The simulation results of five intervals for λ.

T n m Sch ACI boop-p boot-t HPD
non-infor infor
ML CR ML CR ML CR ML CR ML CR
2 30 20 I 1.1725 0.9757 1.2475 0.9683 1.1384 0.9727 1.1518 0.9740 0.9855 0.9333
II 1.1256 0.9760 1.1127 0.9720 1.0805 0.9767 1.1010 0.9757 0.9149 0.9343
25 I 1.0975 0.9670 1.1181 0.9683 1.0467 0.9700 1.0800 0.9662 0.8888 0.9310
II 1.0547 0.9737 1.0705 0.9660 1.0307 0.9737 1.0333 0.9691 0.8649 0.9290
50 40 I 0.8137 0.9563 0.9125 0.9570 0.7454 0.9665 0.8130 0.9531 0.8149 0.9165
II 0.7850 0.9600 0.7832 0.9593 0.7540 0.9697 0.7843 0.9599 0.6828 0.9167
45 I 0.7861 0.9610 0.7972 0.9620 0.7409 0.9687 0.7572 0.9583 0.5714 0.9127
II 0.7715 0.9540 0.7716 0.9533 0.7373 0.9597 0.7483 0.9474 0.5620 0.9207
80 60 I 0.6444 0.9553 0.6664 0.9560 0.6028 0.9680 0.6177 0.9524 0.4456 0.9180
II 0.6072 0.9543 0.6552 0.9467 0.5687 0.9510 0.5985 0.9509 0.4104 0.9213
70 I 0.6071 0.9533 0.6263 0.9593 0.5707 0.9503 0.5891 0.9521 0.4114 0.9193
II 0.6119 0.9547 0.6244 0.9613 0.5569 0.9507 0.5953 0.9486 0.3963 0.9120
4 30 20 I 1.1804 0.9730 1.2876 0.9690 1.0701 0.9767 1.1675 0.9673 0.9649 0.9340
II 1.1162 0.9670 1.1590 0.9730 1.0710 0.9773 1.1049 0.9643 0.9150 0.9300
25 I 1.0862 0.9660 1.1597 0.9707 1.0303 0.9750 1.0706 0.9621 0.8776 0.9260
II 1.0459 0.9667 1.0828 0.9703 1.0023 0.9793 1.0172 0.9643 0.8611 0.9293
50 40 I 0.8169 0.9573 0.9245 0.9595 0.7183 0.9745 0.7907 0.9543 0.6126 0.9153
II 0.7839 0.9553 0.7913 0.9620 0.7482 0.9727 0.7708 0.9530 0.5899 0.9193
45 I 0.7806 0.9543 0.7859 0.9627 0.7277 0.9613 0.7739 0.9525 0.5706 0.9113
II 0.7724 0.9610 0.7674 0.9513 0.7157 0.9760 0.7442 0.9548 0.5634 0.9180
80 60 I 0.6437 0.9593 0.6638 0.9520 0.5828 0.9647 0.6175 0.9584 0.4463 0.9167
II 0.6125 0.9473 0.6484 0.9547 0.5991 0.9600 0.5976 0.9432 0.4108 0.9107
70 I 0.6094 0.9550 0.6255 0.9587 0.5227 0.9687 0.5813 0.9493 0.4106 0.9067
II 0.6124 0.9523 0.5959 0.9600 0.5347 0.9667 0.6093 0.9471 0.3967 0.9187

Author Contributions

Investigation, Z.X.; Supervision, W.G. All authors have read and agreed to the published version of the manuscript.

Funding

This research was supported by Project 202210004001 which was supported by NationalTraining Program of Innovation and Entrepreneurship for Undergraduates.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

The data presented in this study are openly available in [20].

Conflicts of Interest

The authors declare no conflict of interest.

Footnotes

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Associated Data

This section collects any data citations, data availability statements, or supplementary materials included in this article.

Data Availability Statement

The data presented in this study are openly available in [20].


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