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Sequential Analysis
Design Methods and Applications
Volume 38, 2019 - Issue 1
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Articles

Two-sample two-stage and purely sequential methodologies for tests of hypotheses with applications: comparing normal means when the two variances are unknown and unequal

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Pages 69-114 | Received 12 Aug 2018, Accepted 13 Jan 2019, Published online: 13 May 2019
 

Abstract

In this paper, we develop appropriate sampling methodologies for testing hypotheses regarding the difference of mean values from two independent (or dependent) normal populations when their variances are unknown and unequal. We design two-stage and purely sequential testing methodologies of hypotheses for comparing the unknown means by determining the appropriate sample sizes while controlling both type-I and type-II error probabilities at or below preassigned levels α, β respectively. Such methodologies are constructed under both unequal and equal sample size designs. We prove that both two-stage and purely sequential testing strategies enjoy a number of practically appealing properties. Extensive sets of computer simulations and real data analyses empirically validate our theoretical findings.

ACKNOWLEDGMENTS

We are grateful to the Associate Editor and the reviewers for their enthusiastic commentaries. Thanks to them for sharing a number helpful comments.

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