Research Article Volume 8 Issue 3
Department of Mathematics and Statistics, University of Missouri-Kansas City, USA
Correspondence: Kamel Rekab, Department of Mathematics and Statistics, University of Missouri-Kansas City, Kansas City, MO, USA, Tel 8162694432
Received: April 30, 2019 | Published: May 13, 2019
Citation: Xia X, Rekab K. Second-order efficiency of fully sequential designs for estimating the product of two means with application in reliability estimation. Biom Biostat Int J. 2019;8(3):81?83. DOI: 10.15406/bbij.2019.08.00275
For estimating the product of two means from the general one parameter exponential family, we consider a fully Bayesian approach with conjugate priors. We derive a sharp lower bound for the Bayes Risk. We also propose a fully sequential design with an incurred Bayes Risk near the second order lower bound. An application to reliability estimation is performed analytically and through Monte Carlo simulation.
Keywords: Bayesian estimation, sequential designs, second-order optimality, one-parameter exponential family, reliability estimation
In this article, we will derive a sharper lower bound for the Bayes Risk and propose a sequential design that will achieve it at least asymptotically. Such a design will be referred to as second order efficient design.
The problem of estimating system reliability is the same as estimating the product of means of independent Bernoulli populations. We use independent Beta priors for the means and propose a sequential design that is second order efficient, it converges faster to the optimal ratio than the first order designs. Second order sequential designs are sought and show the optimality of the fully sequential design through an application of reliability estimation using Monte Carlo simulation.
where is real-valued function, is a continuously differentiable, real-valued function, is a non-degenerate sigma-finite measure and , , is a non-empty open interval, . Using the square error loss, and by adopting the Bayesian approach, the conjugate prior and the posterior density are both the one-parameter exponential family. The prior density as derived by Diaconis & Ylvisaker.4
(2.2)
Where(2.3)
Consider the problem of allocating a fixed total number of observations from the independent populations, where , is the sample size of component .
The Bayes Risk for estimating the product of two means
(2.4)
where is the sigma algebra generated by a total of T observations.To ease the notation, let
Next, we derive the second order lower bound for the Bayes Risk.
Theorem 2.1: For any sequential procedure, that satisfies the following conditions:
in probability, as ,
in probability, as ,
(2.5)
Proof: The first two terms establish the first order lower bound for the Bayes Risk, whereas the third term establishes the second order lower bound for the Bayes Risk.
Consider a series system with two independent components with unknown system reliability. The problem is to determine the optimal number units to be tested from each component. Each tested unit can be considered a Bernoulli trial. That is, suppose and , where
Then the Bayes Risk incurred after T units have been tested is:
(3.1)
as the second-order lower bound of Bayes Risk. We also need to rely on the optimal ratio indicated in Theorem 2.1, that is(3.2)
We proceed with the test as follows:
Step 1: Collect one sample case () from each component, and.
Step 2: We collect sample cases from component , where,
If(3.3)
where . Then , where are the cumulative sample cases from component ;
Otherwise, , where is the cumulative sample cases from component .Step 3: We stop the iteration in step 2 when , which is the fixed total sample size. It should be noted that when both components have equal prior. The following example through Monte Carlo simulation with 5000 iterations shows that the expected number of units to be tested from each component is approximately which agrees with (3.2) (Table 1). Next, we establish the rate of convergence of . Let the speed be defined as . It is clear that . See Table 2. It is also clear that is bounded as , where (Figure 1).6–17
|
50 |
70 |
100 |
200 |
400 |
600 |
800 |
1000 |
3000 |
|
26 |
36 |
51 |
101 |
200 |
301 |
400 |
498 |
1504 |
|
24 |
34 |
49 |
99 |
200 |
299 |
400 |
502 |
1496 |
Table 1 Fully sequential sampling design with uniform priors
|
50 |
70 |
100 |
200 |
400 |
600 |
800 |
1000 |
3000 |
|
0.02 |
0.019 |
0.026 |
0.029 |
0.033 |
0.025 |
0.034 |
0.031 |
0.032 |
|
0.138 |
0.159 |
0.262 |
0.415 |
0.662 |
0.619 |
0.955 |
0.969 |
1.776 |
|
0.976 |
1.329 |
2.62 |
5.863 |
13.231 |
15.169 |
27.001 |
30.627 |
97.281 |
Table 2 Amplitude in mill volts of the Lead-1 of electrocardiography in sheep
*Significant (P≤0.05); NSNot significant (P>0.05)
The data used to support the findings of this study have been produced by Monte Carlo simulation from Bernoulli trials with 5000 replications.
None.
Author declares that there is no conflict of interest.
©2019 Xia, et al. This is an open access article distributed under the terms of the, which permits unrestricted use, distribution, and build upon your work non-commercially.
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