Statistical inference for start-up demonstration tests with rejection of units upon observing d failures |
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Authors: | P. S. Chan N. Balakrishnan |
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Affiliation: | 1. Department of Statistics , The Chinese University of Hong Kong , Shatin , Hong Kong;2. Department of Mathematics and Statistics , McMaster University , Hamilton , Ontario , Canada |
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Abstract: | In this paper, we consider the statistical inference for the success probability in the case of start-up demonstration tests in which rejection of units is possible when a pre-fixed number of failures is observed before the required number of consecutive successes are achieved for acceptance of the unit. Since the expected value of the stopping time is not a monotone function of the unknown parameter, the method of moments is not useful in this situation. Therefore, we discuss two estimation methods for the success probability: (1) the maximum likelihood estimation (MLE) via the expectation-maximization (EM) algorithm and (2) Bayesian estimation with a beta prior. We examine the small-sample properties of the MLE and Bayesian estimator. Finally, we present an example to illustrate the method of inference discussed here. |
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Keywords: | start-up demonstration test maximum likelihood estimator EM-algorithm runs Bayesian estimation probability generating function |
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