Next Article in Journal
Monte Carlo Simulation of a Modified Chi Distribution with Unequal Variances in the Generating Gaussians. A Discrete Methodology to Study Collective Response Times
Next Article in Special Issue
Four-Quadrant Riemann Problem for a 2 × 2 System Involving Delta Shock
Previous Article in Journal
Optimal Portfolios for Different Anticipating Integrals under Insider Information
Previous Article in Special Issue
Towards a Vector Field Based Approach to the Proper Generalized Decomposition (PGD)
 
 
Font Type:
Arial Georgia Verdana
Font Size:
Aa Aa Aa
Line Spacing:
Column Width:
Background:
Article

Multiple Comparisons for Exponential Median Lifetimes with the Control Based on Doubly Censored Samples

Department of Statistics, Tamkang University, Tamsui, New Taipei City 251301, Taiwan
Mathematics 2021, 9(1), 76; https://doi.org/10.3390/math9010076
Submission received: 18 November 2020 / Revised: 23 December 2020 / Accepted: 28 December 2020 / Published: 31 December 2020
(This article belongs to the Special Issue Applications of Partial Differential Equations in Engineering)

Abstract

:
Under doubly censoring, the one-stage multiple comparison procedures with the control in terms of exponential median lifetimes are presented. The uniformly minimum variance unbiased estimator for median lifetime is found. The upper bounds, lower bounds and two-sided confidence intervals for the difference between each median lifetimes and the median lifetime of the control population are developed. Statistical tables of critical values are constructed for the practical use of our proposed procedures. Users can use these simultaneous confidence intervals to determine whether the performance of treatment populations is better than or worse than the control population in agriculture and pharmaceutical industries. At last, one practical example is provided to illustrate the proposed procedures.

1. Introduction

In reliability studies, the lifetimes of some products may not have normal distribution. The exponential distribution we focus on in this study is one type of frequently used lifetime distribution and some examples can be seen in Johnson et al. [1]. For this type of lifetime distribution, Ng et al. [2] proposed multiple comparisons with a control for location parameters when the scale parameters are equal. For the case of unequal scale parameters (heteroscedasticity), Lam and Ng [3] proposed design-oriented two-stage multiple comparison procedures for location parameters with the control. However, the additional sample size for the second stage may be large when scale parameters are large. Wu [4] proposed one-stage multiple comparison procedures with the control for location parameter based on the doubly censored sample. Wu [5] presented a modified procedure to improve the coverage probabilities and confidence length in Wu [4]. Instead of making multiple comparison with the control, Wu and Wu [6] investigated the multiple comparison procedures with the average for exponential location parameters using the two-stage sampling procedures. Wu et al. [7] considered one-stage procedures comparing with the average instead of two-stage procedures. Based on the doubly censored sample, Wu [8] proposed multiple comparisons with the average for exponential location parameters under heteroscedasticity. For multiply type II censored sample, Wu [9] proposed a prediction interval for the future observation using the estimator of general weighted moment estimator (GWME). If the experimenters are interested in comparing the mean lifetimes instead of location parameters, Wu [10] proposed the one-stage multiple comparisons for exponential mean lifetimes with the control. Wu [11] proposed the one-stage multiple comparison procedures for exponential mean lifetimes with the control based on the doubly type II censored sample. Since the shape of the distribution of exponential lifetime is a right-skewed, median lifetimes should be used to provide more robust measurements for the central tendency of exponential distribution. Therefore, Wu [12] proposed procedures to compare the median lifetimes of exponential lifetime distributions with the control. In some experiments, the experimenters are not able to collect a complete sample due to the financial budget limit or experimental difficulties. Thus the censoring occurred. In this research, we are focusing on type II censoring since it is a frequently used type of censoring. This type of censoring is briefly introduced as follows: Suppose that there are n items that are put in a life test. If the first r lifetimes and the last s lifetimes are missing, the middle observed lifetimes are called the doubly Type II censored sample, where r is the size of sample for left censoring and s is the size of sample for right censoring. In this research, k   ( 2 ) treatment populations denoted by π 1 , , π k are considered and the lifetime for the ith population has exponential distribution denoted by E ( θ i , σ i ) , i = 1 , , k , where the location parameters θ 1 , , θ k are unknown and scale parameters σ 1 , , σ k are unknown and unequal. The cdf (cumulative distribution function) of the ith exponentially distributed population is F ( x ) = 1 exp ( x θ i σ i ) . Letting F ( x ) = 0.5. Then the median δ i is found to be δ i = θ i + ln 2   σ i , i = 1 , , k . Let π k be the control population. The goal of this research is to find the uniformly minimum variance unbiased estimator (UMVUE) for the median lifetime and the results are presented in Section 2. The other goal is to provide the multiple comparisons of k-1 treatment median lifetimes with the control population and the research methods are presented in Section 3. In Section 4, an example of doing the multiple comparisons with the control by comparing the median duration time of remission under the treatment of four drugs is given to demonstrate the main results of this paper. In the end, we summarized the main conclusions in Section 5.

2. The Uniformly Minimum Variance Unbiased Estimator (UMVUE) for the Median Lifetime

Firstly, we give a brief definition of the doubly censored samples as follows: Let X i 1 , , X i n be the random sample of size n   ( 2 ) from π i and X i ( 1 ) < < X i ( n ) are the ordered sample. Suppose that the first r lifetimes X i ( 1 ) , , X i ( r ) and the last s lifetimes X i ( n s + 1 ) , , X i ( n ) are censored. Then the middle n−s−r observations X i ( r + 1 ) , , X i ( n s ) are so-called the doubly Type II censored sample collected for population π i , i = 1, …, k. From Wu [8], after taking the standardizing transformation to each X i ( j ) as X i ( j ) * = X i ( j ) θ i σ i , j = r + 1 , , n s , we can obtain the doubly censored sample X i ( r + 1 ) * , , X i ( n s ) * from the standard exponential distribution. The generalized spacings Z i ( r + 2 ) = ( n r 1 ) ( X i ( r + 2 ) * X i ( r + 1 ) * ) , …, Z i ( n s ) = ( s + 1 ) ( X i ( n s ) * X i ( n s 1 ) * ) are independent and identically distributed from a standard exponential distribution and they are independent with X i ( r + 1 ) * . Let S ˜ i = j = r + 2 n s Z i ( j ) / ν = j = r + 2 n s ( X i ( j ) X i ( r + 1 ) ) / ν . It is well known that U i = 2 ν S ˜ i / σ i has a chi-squared distribution with 2 ν degrees of freedom, where ν = n r s 1 . Therefore S ˜ i is the unbiased estimator of σ i . From Kambo [13], it has shown that the complete sufficient statistics for ( θ i , σ i ) is ( X i ( r + 1 ) , S ˜ i ). Thus, the UMVUE for θ i is X i ( r + 1 ) + ν S ˜ i ln ( ( n r ) / n ) / ( n r s ) and the UMVUE for σ i is S ˜ i . Furthermore, the UMVUE for the ith median lifetime δ i = θ i + ln 2   σ i is δ ^ i = X i ( r + 1 ) + ν S ˜ i ln ( ( n r ) / n ) / ( n r s ) + ln 2 S ˜ i = X i ( r + 1 ) + ( ( ν + 1 ) ln 2 + ν ln ( ( n r ) / n ) ) S ˜ i / ( ν + 1 ) = X i ( r + 1 ) + ν * S ˜ i , where ν * = ( ( ν + 1 ) ln 2 + ν ln ( ( n r ) / n ) ) / ( ν + 1 ) . If we are interested in the difference between the ith treatment median lifetime with the control population (the kth population), i.e., δ i δ k , the UMVUE for this parameter is X i ( r + 1 ) X k ( r + 1 ) + ν * ( S ˜ i S ˜ k ) , i = 1, …, k−1.

3. Multiple Comparisons with the Control for Exponential Median Lifetimes Based on Doubly Censored Samples Using One-Stage Procedures

Based on this UMVUE for the ith median lifetime δ i = θ i + ln 2   σ i in Section 2, we could construct a pivotal quantity
G ˜ i = δ i δ ^ i 2 ν S ˜ i   =   δ i X i ( r + 1 ) ν * S ˜ i 2 ν S ˜ i   =   ( θ i + ln 2   σ i X i ( r + 1 ) ν * S ˜ i ) / σ i 2 ν S ˜ i / σ i = T i + ln 2 ν * S ˜ i / σ i 2 ν S ˜ i / σ i = T i + ln 2 U i ν * 2 υ ,   where   T i = X i ( r + 1 ) θ i σ i .
It is very hard to find the exact distribution of G ˜ i . The distribution of G ˜ i is only depending on random variables of T i and U i , where exp ( T i ) has a beta distribution with parameters nr and r + 1 and U i has a chi-squared distribution with 2 ν degrees of freedom, where ν = n r s 1 and they are independent. Therefore, we can generate independent random variables T i and U i to generate random variable G ˜ i . By the Monte-Carlo simulation method, we can find the empirical distribution of G ˜ i .
Making use of the pivotal quantities G ˜ i ’s, we can start to develop the multiple comparison procedures for each median lifetime with the control (the kth population is regarded as the control population), i.e., δ i δ k , i = 1 , , k 1 based on the doubly censored samples in the following theorem:
Theorem 1.
Let c ˜ = max i = 1 , , k   2 ν S ˜ i and ν * = ( ( ν + 1 ) ln 2 + ν ln ( ( n r ) / n ) ) / ( ν + 1 ) . For a given confidence coefficient 0 < P * < 1 , we have the upper confidence bounds, lower confidence bounds and simultaneous confidence intervals for δ i δ k , i = 1 , , k 1 as follows:
(a)
X i ( r + 1 ) X k ( r + 1 ) + ν * ( S ˜ i S ˜ k ) + c ˜ h ¨ U are the upper confidence bounds for δ i δ k , i = 1 , , k 1 with confidence level of P * , where h ¨ U is the 100 P t h percentile of the distribution of G 1 = max ( G ˜ i , G ˜ k , G ˜ i G ˜ k , i = 1 , , k 1 ).
(b)
X i ( r + 1 ) X k ( r + 1 ) + ν * ( S ˜ i S ˜ k ) c ˜ i h ¨ L are the lower confidence bounds for δ i δ k , i = 1 , , k 1 with confidence level of P * where h ¨ L is the 100 P t h percentile of the distribution of G 2 = max ( G ˜ i , G ˜ k , G ˜ i + G ˜ k , i = 1 , , k 1 ).
(c)
( Y i Y k + ν * ( S ˜ i S ˜ k ) ± c ˜ h ¨ t ) are simultaneous two-sided confidence intervals for δ i δ k , i = 1 , , k 1 with confidence coefficient P * where h ¨ t is the 100 P t h percentile of the distribution of G 3 = max ( | G ˜ i | , | G ˜ k | , | G ˜ k G ˜ i | , i = 1 , , k 1 ) .
Proof of Theorem 1.
 
For (a), we have
P ( δ i δ k X i ( r + 1 ) X k ( r + 1 ) + ν * ( S ˜ i S ˜ k ) + c ˜ h ¨ U ,   i = 1 , , k 1 ) = P ( θ i + ln 2 σ i θ k ln 2 σ k X i ( r + 1 ) X k ( r + 1 ) + ν * ( S ˜ i S ˜ k ) + c ˜ h ¨ U ,   i = 1 , , k 1 )
= P ( 2 ν S ˜ i σ i S ˜ i ν * S ˜ i + ln 2 σ i + θ i Y i 2 ν σ i
2 ν S ˜ k σ k S ˜ k ν * S ˜ k + ln 2 σ k + θ k Y k 2 ν σ k + c ˜ h ¨ U ,   i = 1 , , k 1 )
= P ( 2 ν S ˜ k G ˜ k 2 ν S ˜ i G ˜ i c ˜ h ¨ U ,   i = 1 , , k 1 )
E S 1 , , S k P ( 2 ν S ˜ k G ˜ k 2 ν S ˜ i G ˜ i max ( 2 ν S ˜ i , 2 ν S ˜ k )   h ¨ U ,   i = 1 , , k 1 )
P (   G ˜ i h ¨ U ,   G ˜ k h ¨ U , G ˜ k G ˜ i h ¨ U ,   i = 1 , , k 1 )
(the above inequality holds by using the Lemma in Lam [14,15] by setting a = 2 ν S ˜ k and b = 2 ν S ˜ i .)
= P (   G ˜ i h ¨ U ,   G ˜ k h ¨ U , G ˜ i G ˜ k h ¨ U ,   i = 1 , , k 1 )
= P ( max ( G ˜ i , G ˜ k , G ˜ i G ˜ k ,   i = 1 , , k 1 ) h ¨ U ) = P ( G 1 h U ) = P * , where G 1 = max ( G ˜ i , G ˜ k , G ˜ i G ˜ k , i = 1 , , k 1 ).
Solving the above equation, we obtain h ¨ U as the 100 P t h percentile of the distribution of G1 and the proof is thus completed.
For (b), we have
P ( δ i δ k X i ( r + 1 ) X k ( r + 1 ) + ν * ( S ˜ i S ˜ k ) c ˜ h ¨ L ,   i = 1 , , k 1 )
= P ( θ i + ln 2 σ i θ k ln 2 σ k X i ( r + 1 ) X k ( r + 1 ) + ν * ( S ˜ i S ˜ k ) c ˜ h ¨ L ,   i = 1 , , k 1 )
= P ( 2 ν S ˜ i σ i S ˜ i ν * S ˜ i + ln 2 σ i + θ i Y i 2 ν σ i
2 ν S ˜ k σ k S ˜ k ν * S ˜ k + ln 2 σ k + θ k Y k ) 2 ν σ k c ˜ h ¨ L ,   i = 1 , , k 1 )
= P ( 2 ν S ˜ i G ˜ i 2 ν S ˜ k G ˜ k max ( S i m , S k m ) h ¨ L ,   i = 1 , , k 1 )
E S 1 , , S k P ( 2 ν S ˜ i G ˜ i 2 ν S ˜ k G ˜ k max ( S i m , S k m ) h ¨ L ,   i = 1 , , k 1 )
P ( G ˜ i h ¨ L ,   G ˜ k h ¨ L ,   G ˜ i G ˜ k h ¨ L ,   i = 1 , , k 1 )
(the above inequality holds by using the Lemma in Lam [14,15] by setting a = 2 ν S ˜ i and b = 2 ν S ˜ k .)
P ( G ˜ i h ¨ L ,   G ˜ k h ¨ L ,   G ˜ k G ˜ i h ¨ L ,   i = 1 , , k 1 )
= P ( G 2 h ¨ L ) = P*, where G 2 = max ( G ˜ i , G ˜ k , G ˜ i + G ˜ k , i = 1 , , k 1 ).
Solving the above equation, we obtain h ¨ L as the 100 P t h percentile of the distribution of G 2 and the proof is thus completed.
For (c), combining (a) and (b), we have
P ( X i ( r + 1 ) X k ( r + 1 ) + ν * ( S ˜ i S ˜ k ) c ˜ h ¨ t δ i δ k
X i ( r + 1 ) X k ( r + 1 ) + ν * ( S ˜ i S ˜ k ) + c ˜ h ¨ t ,   i = 1 , , k 1 )
= E S 1 , , S k P ( G ˜ i h ¨ t ,   G ˜ k h ¨ t ,   G ˜ k G ˜ i h ¨ t           G ˜ k h ¨ t ,   G ˜ i h ¨ t ,   G ˜ i G ˜ k h ¨ t ,   i = 1 , , k 1 )
P ( max ( | G ˜ i | , | G ˜ k | , | G ˜ k G ˜ i | , i = 1 , , k 1 ) h ¨ t ,   i = 1 , , k 1 ) = P ( G 3 h ¨ t ) = P * , where G 3 = max ( | G ˜ i | , | G ˜ k | , | G ˜ k G ˜ i | , i = 1 , , k 1 ) .
Solving the above equation, we obtain h ¨ t as the 100 P t h percentile of the distribution of G 3 and the proof is thus obtained. □
From Theorem 1, the critical values of h ¨ U , h ¨ L and h ¨ t are the 100 P t h percentiles of the distributions of G 1 , G 2 and G 3 . Using Monte-Carlo simulation methods, the critical values are the percentiles of the empirical distribution of G 1 , G 2 and G 3 . They are listed in the following table for k = 3(1)10, n = 20, 30, 60, r = 1, 2, 3, s = 0, 1, 2, and P* = 0.90, 0.95 and 0.975. The critical values for any given k, n, r, s and P* are available at the author’s site. Refer to part (c) of Theorem 1, the confidence length is L1 = 2 c ˜ h t . From Table 1, since h ¨ t is an increasing function of k, the length of simultaneous confidence interval (SCI) is getting larger when we compare more treatments for fixed n, r, s and P * .

4. Example

One example of comparing the duration of remission under the use of four drugs in the treatment of leukemia was used in this section. For each drug, n = 20 patients were treated. The data of duration times by four drugs can be found in Table 1 of Wu and Wu [6] and they claimed that the data is exponentially distributed on the treatment of each drug and the scale parameters are unequal.
We applied Theorem 1 to this example to compare the median duration of remission times by using Drugs 1–3 with Drug 4 (the control population) denoted by δ i δ 4 , i = 1, 2, 3. Three cases of censoring schemes of (r,s) = (1,1), (2,1), (1,2) are considered for demonstration. The design variable c ˜ = 150.7832 under (r,s) = (1,1); c ˜ = 150.0608 under (r,s) = (2,1); c ˜ = 136.9536 under (r,s) = (1,2). The critical values h ¨ U , h ¨ L and h ¨ t for P * = 0.90 ,   0.95   and   0.975 can be found in Table 1 For example when P * = 0.90 , the critical values h ¨ U = 0.0140, h ¨ L = 0.0121 and h ¨ t = 0.016 under (r,s) = (1,1); h ¨ U = 0.0149, h ¨ L = 0.0133 and h ¨ t = 0.0172 under (r,s) = (2,1); h ¨ U = 0.0154, h ¨ L = 0.0132 and h ¨ t = 0.0176 under (r,s) = (1,2). The UMVUE for δ i δ 4 , i = 1, 2, 3 are X i ( r + 1 ) X 4 ( r + 1 ) + ν * ( S ˜ i S ˜ 4 ) = −5.5, −4.0817 and −1.9723 under (r,s) = (1,1); X i ( r + 1 ) X 4 ( r + 1 ) + ν * ( S ˜ i S ˜ 4 ) = −5.3410, −3.9415 and −1.9252 under (r,s) = (2,1); X i ( r + 1 ) X 4 ( r + 1 ) + ν * ( S ˜ i S ˜ 4 ) = −5.4049, −4.1248 and −1.8676 under (r,s) = (1,2).
Applying parts (a) and (b) of Theorem 1 to this example, we could obtain the upper and lower confidence bounds for δ i δ 4 , i = 1 , 2 , 3 with confidence levels of 0.90, 0.95 and 0.975 in Table 2. Since the upper bounds for Drugs 1 and 2 were negative, these two drugs were selected in a subset of worse than the control populations to reach the probabilities of correct selection P* = 0.9, 0.95 and 0.975. Since all lower bounds were negative, no drugs were selected in a subset of better than the Drug 4 by comparing their median lifetimes
Applying part (c) of Theorem 1 to this example, we could obtain the two-sided confidence intervals for δ i δ 4 , i = 1 , 2 , 3 under confidence levels of 0.90, 0.95 and 0.975 in Table 3. Since the upper limits for Drugs 1 and 2 were negative, we could conclude that the median lifetimes of these two drugs were worse than Drug 4. Looking at the UMVUE for the difference between these two drugs with Drug 4 under three censoring cases, the performance of Drug 1 was worse than Drug 2 comparing with Drug 4. Since the confidence interval for Drug 3 contained zero, we could claim that the median lifetime of Drug 3 was not much different from drug 4.

5. Conclusions

When a sampling procedure in an experiment was unexpectedly terminated earlier so that the additional sample for the two-stage sample was not available, the one-stage procedure could be employed for the multiple comparison with the control. Applying Lam’s [14,15] technique, we developed multiple comparison procedures with a control for exponential median lifetimes under heteroscedasticity based on doubly censored sample. At last, we used one example in the treatment of leukemia to find the upper and lower confidence bounds and for each median lifetime of treatment populations compared to the control population. The two-sided confidence intervals were also obtained and analyzed.

Funding

This research was funded by [Ministry of Science and Technology, Taiwan] MOST 108-2118-M-032-001-and MOST 109-2118-M-032-001-MY2 and the APC was funded by MOST 109-2118-M-032-001-MY2.

Informed Consent Statement

Not applicable.

Data Availability Statement

Data available in a publicly accessible repository The data presented in this study are openly available in Wu and Wu [6].

Conflicts of Interest

The authors declare no conflict of interest.

References

  1. Johnson, N.L.; Kotz, S.; Balakrishnan, N. Continuous Univariate Distributions; Wiley: New York, NY, USA, 1994. [Google Scholar]
  2. Ng, C.K.; Lam, K.; Chen, H.J. Multiple comparison of exponential location parameters with the best under type II censoring. Am. J. Math. Manag. Sci. 1993, 12, 383–402. [Google Scholar] [CrossRef]
  3. Lam, K.; Ng, C.K. Two-stage procedures for comparing several exponential populations with a control when the scale parameters are unknown and unequal. Seq. Anal. 1990, 9, 151–164. [Google Scholar] [CrossRef]
  4. Wu, S.F. Multiple comparisons of exponential location parameters with a control based on doubly censored sample under heteroscedasticity. Commun. Stat. Simul. Comput. 2017, 46, 1858–1870. [Google Scholar] [CrossRef]
  5. Wu, S.F. A modified multiple comparisons with a control for exponential location parameters based on doubly censored sample under heteroscedasticity. Commun. Stat. Simul. Comput. 2019, 48, 2056–2064. [Google Scholar] [CrossRef]
  6. Wu, S.F.; Wu, C.C. Two Stage Multiple Comparisons with the Average for Exponential Location Parameters under Heteroscedasticity. J. Stat. Plan. Inference 2005, 134, 392–408. [Google Scholar] [CrossRef]
  7. Wu, S.F. One stage multiple comparisons with the average for exponential location parameters under heteroscedasticity. Comput. Stat. Data Anal. 2013, 68, 352–360. [Google Scholar] [CrossRef]
  8. Wu, S.F. Multiple comparisons with the average for exponential location parameters based on doubly censored sample under heteroscedasticity. Commun. Stat. Simul. Comput. 2018, 47, 1529–1539. [Google Scholar] [CrossRef]
  9. Wu, S.F. Prediction Interval of the Future Observations of the two-parameter Exponential distribution under Multiply Type II Censoring. ICIC Express Lett. 2019, 13, 1073–1077. [Google Scholar]
  10. Wu, S.F. One stage multiple comparisons of k-1 treatment mean lifetimes with the control for exponential distributions under heteroscedasticity. Commun. Stat. Simul. Comput. 2018, 47, 2968–2978. [Google Scholar] [CrossRef]
  11. Wu, S.F. One stage multiple comparisons with the control for exponential mean lifetimes based on doubly censored samples under heteroscedasticity. Commun. Stat. Simul. Comput. 2019, 1–11. [Google Scholar] [CrossRef]
  12. Wu, S.F. One stage multiple comparisons with the control for exponential median lifetimes under heteroscedasticity. Mathematics 2020, 8, 1405. [Google Scholar] [CrossRef]
  13. Kambo, N.S. Estimation of a linear function of the parameters of an exponential distribution from doubly censored samples. Stat. Probab. Lett. 1978, 36, 251–259. [Google Scholar]
  14. Lam, K. Subset Selection of Normal Populations under Heteroscedasticity. IPASRAS-II: Proceedings and Discussions of the Second International Conference on Inference Procedures Associated with Statistal Ranking and Selection on the Frontiers of Modern Statistical Inference Procedures, II; ACM: New York, NY, USA, 1992; pp. 307–344. [Google Scholar]
  15. Lam, K. An improved two-stage selection procedure. Commun. Stat. Simul. Comput. 1988, 17, 995–1006. [Google Scholar] [CrossRef]
Table 1. Critical values h ¨ U , h ¨ L and h ¨ t .
Table 1. Critical values h ¨ U , h ¨ L and h ¨ t .
P* = 0.90P* = 0.95P* = 0.975
knrs h ¨ U h ¨ L h ¨ t h ¨ U h ¨ L h ¨ t h ¨ U h ¨ L h ¨ t
320100.01130.01040.01350.01400.01300.01600.01650.01550.0185
20.01210.01130.01450.01500.01400.01720.01770.01660.0199
30.01310.01240.01570.01610.01530.01860.01900.01800.0214
110.01240.01130.01470.01530.01410.01750.01810.01680.0203
20.01330.01230.01580.01640.01520.01880.01940.01820.0218
30.01440.01350.01720.01770.01670.02040.02100.01980.0237
120.01360.01230.01610.01680.01540.01930.02000.01850.0224
20.01460.01340.01740.01810.01670.02080.02150.02000.0241
30.01590.01480.01900.01960.01840.02270.02330.02190.0263
30100.00570.00530.00670.00700.00650.00790.00820.00770.0091
20.00600.00560.00700.00730.00680.00830.00850.00810.0095
30.00620.00590.00740.00760.00720.00870.00890.00850.0099
110.00600.00560.00710.00740.00690.00840.00860.00820.0096
20.00630.00590.00750.00770.00720.00880.00900.00850.0100
30.00660.00620.00780.00810.00760.00920.00940.00890.0105
120.00640.00590.00760.00780.00730.00890.00920.00860.0102
20.00670.00620.00790.00820.00760.00930.00960.00900.0107
30.00700.00660.00830.00860.00800.00980.01000.00950.0112
60100.00190.00180.00220.00230.00220.00260.00260.00250.0029
20.00190.00180.00230.00230.00220.00260.00270.00260.0030
30.00200.00190.00230.00240.00220.00270.00270.00260.0030
110.00190.00180.00230.00230.00220.00260.00270.00260.0030
20.00200.00190.00230.00240.00230.00270.00270.00260.0030
30.00200.00190.00240.00240.00230.00270.00280.00270.0031
120.00200.00190.00230.00240.00230.00270.00280.00270.0031
20.00200.00190.00240.00240.00230.00280.00280.00270.0031
30.00210.00200.00240.00250.00240.00280.00290.00280.0032
P* = 0.90P* = 0.95P* = 0.975
knrs h ¨ U h ¨ L h ¨ t h ¨ U h ¨ L h ¨ t h ¨ U h ¨ L h ¨ t
420100.01280.01120.01460.01550.01370.01720.01800.01620.0197
20.01360.01220.01570.01650.01490.01840.01920.01750.0211
30.01460.01350.01700.01770.01630.02000.02070.01920.0228
110.01400.01210.01600.01690.01490.01880.01970.01770.0216
20.01490.01330.01720.01810.01620.02030.02120.01920.0233
30.01610.01460.01860.01950.01780.02190.02280.02090.0252
120.01540.01320.01760.01860.01630.02080.02180.01940.0240
20.01650.01440.01900.02000.01780.02240.02350.02110.0258
30.01780.01600.02060.02170.01950.02430.02540.02300.0280
30100.00640.00570.00730.00760.00690.00850.00880.00810.0096
20.00670.00600.00760.00790.00730.00890.00920.00850.0100
30.00690.00630.00800.00830.00760.00930.00960.00890.0105
110.00680.00600.00770.00810.00730.00900.00940.00860.0102
20.00700.00630.00810.00840.00770.00940.00970.00900.0106
30.00740.00670.00850.00880.00810.00980.01020.00940.0112
120.00720.00630.00820.00860.00770.00950.00990.00910.0108
20.00750.00670.00860.00900.00810.01000.01040.00950.0113
30.00780.00710.00900.00930.00860.01040.01080.01000.0119
60100.00210.00190.00240.00250.00230.00270.00280.00260.0031
20.00210.00190.00240.00250.00230.00280.00290.00270.0031
30.00220.00200.00250.00250.00240.00280.00290.00280.0032
110.00210.00200.00240.00250.00230.00280.00290.00270.0031
20.00220.00200.00250.00260.00240.00290.00290.00280.0032
30.00220.00200.00250.00260.00250.00290.00300.00280.0033
120.00220.00200.00250.00260.00240.00290.00300.00280.0032
20.00220.00210.00260.00260.00250.00290.00300.00290.0033
30.00230.00210.00260.00270.00250.00300.00310.00290.0034
P* = 0.90P* = 0.95P* = 0.975
ssss h ¨ U h ¨ L h ¨ t h ¨ U h ¨ L h ¨ t h ¨ U h ¨ L h ¨ t
620100.01460.01210.01610.01720.01470.01870.01980.01720.0212
20.01550.01330.01730.01840.01590.02000.02120.01860.0228
30.01670.01470.01870.01980.01750.02170.02280.02040.0246
110.01590.01310.01760.01890.01590.02050.02180.01870.0233
20.01700.01440.01890.02020.01730.02200.02330.02030.0251
30.01840.01590.02060.02180.01910.02390.02520.02220.0272
120.01760.01430.01940.02080.01740.02260.02410.02050.0257
20.01890.01570.02090.02240.01900.02430.02590.02230.0278
30.02040.01740.02270.02430.02090.02650.02810.02450.0302
30100.00720.00620.00800.00850.00740.00920.00960.00860.0103
20.00750.00650.00830.00880.00780.00960.01000.00900.0107
30.00790.00690.00870.00920.00820.01000.01050.00940.0112
110.00770.00650.00850.00900.00780.00970.01020.00910.0109
20.00800.00680.00880.00930.00820.01010.01060.00950.0114
30.00830.00720.00930.00980.00860.01060.01110.01000.0119
120.00810.00680.00900.00950.00820.01030.01080.00960.0116
20.00850.00720.00940.00990.00860.01080.01130.01000.0121
30.00880.00760.00980.01040.00910.01130.01180.01060.0127
60100.00230.00210.00260.00270.00250.00290.00300.00280.0033
20.00240.00210.00260.00270.00250.00300.00310.00290.0033
30.00240.00220.00270.00280.00260.00310.00320.00290.0034
110.00240.00210.00270.00280.00250.00300.00310.00290.0033
20.00240.00220.00270.00280.00260.00310.00320.00290.0034
30.00250.00220.00280.00290.00260.00310.00320.00300.0035
120.00250.00220.00270.00280.00260.00310.00320.00300.0034
20.00250.00220.00280.00290.00260.00320.00330.00300.0035
30.00260.00230.00280.00300.00270.00320.00330.00310.0036
Table 2. The upper and lower confidence bounds for three drugs compared with the control drug (drug 4).
Table 2. The upper and lower confidence bounds for three drugs compared with the control drug (drug 4).
(r,s) = (1,1)   X i ( r + 1 ) X 4 ( r + 1 ) + ν * ( S ˜ i S ˜ 4 ) + c ˜ h ¨ U X i ( r + 1 ) X 4 ( r + 1 ) + ν * ( S ˜ i S ˜ 4 ) c ˜ h ¨ L ,   i   =   1 , 2 , 3
90%95%97.5%
δ 1 δ 4 −3.389, −7.324−2.982, −7.747−2.530, −8.169
δ 2 δ 4 −1.971, −5.906−1.564, −6.328−1.111, −6.751
δ 3 δ 4 0.139, −3.7970.546, −4.2190.998, −4.641
(r,s) = (2,1)90%95%97.5%
δ 1 δ 4 −3.105, −7.337−2.625, −7.772−2.160, −8.222
δ 2 δ 4 −1.706, −5.937−1.225, −6.372−0.760, −6.823
δ 3 δ 4 0.311, −3.9210.791, −4.3561.256, −4.806
(r,s) = (1,2)90%95%97.5%
δ 1 δ 4 −3.296, −7.213−2.858, −7.637−2.419, −8.062
δ 2 δ 4 −2.016, −5.933−1.577, −6.357−1.139, −6.782
δ 3 δ 4 0.241, −3.6750.680, −4.1001.118, −4.524
Table 3. The two-sided confidence intervals for three drugs compared with the control drug (drug 4).
Table 3. The two-sided confidence intervals for three drugs compared with the control drug (drug 4).
(r,s) = (1,1) ( X i ( r + 1 ) X 4 ( r + 1 ) + ν * ( S ˜ i S ˜ 4 ) ± c ˜ h ¨ t ) , i = 1, 2, 3
90%95%97.5%
δ 1 δ 4 (−7.913, −3.087)(−8.335, −2.665)(−8.757, −2.243)
δ 2 δ 4 (−6.494, −1.669)(−6.916, −1.247)(−7.339, −0.825)
δ 3 δ 4 (−4.385, 0.440)(−4.807, 0.862)(−5.229, 1.285)
(r,s) = (2,1)90%95%97.5%
δ 1 δ 4 (−7.922, −2.760)(−8.387, −2.295)(−8.837, −1.845)
δ 2 δ 4 (−6.523, −1.360)(−6.988, −0.895)(−7.438, −0.445)
δ 3 δ 4 (−4.506, 0.656)(−4.971, 1.121)(−5.422, 1.571)
(r,s) = (1,2)90%97.5%95%
δ 1 δ 4 (−7.815, −2.995)(−8.254, −2.556)(−8.692, −2.118)
δ 2 δ 4 (−6.535, −1.714)(−6.973, −1.276)(−7.412, −0.838)
δ 3 δ 4 (−4.278, 0.543)(−4.716, 0.981)(−5.154, 1.419)
Publisher’s Note: MDPI stays neutral with regard to jurisdictional claims in published maps and institutional affiliations.

Share and Cite

MDPI and ACS Style

Wu, S.-F. Multiple Comparisons for Exponential Median Lifetimes with the Control Based on Doubly Censored Samples. Mathematics 2021, 9, 76. https://doi.org/10.3390/math9010076

AMA Style

Wu S-F. Multiple Comparisons for Exponential Median Lifetimes with the Control Based on Doubly Censored Samples. Mathematics. 2021; 9(1):76. https://doi.org/10.3390/math9010076

Chicago/Turabian Style

Wu, Shu-Fei. 2021. "Multiple Comparisons for Exponential Median Lifetimes with the Control Based on Doubly Censored Samples" Mathematics 9, no. 1: 76. https://doi.org/10.3390/math9010076

Note that from the first issue of 2016, this journal uses article numbers instead of page numbers. See further details here.

Article Metrics

Back to TopTop