The p-values for one-sided hypothesis testing in univariate linear calibration |
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Authors: | Guimei Zhao |
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Affiliation: | Department of Statistics, North China University of Technology, Beijing, China |
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Abstract: | In this article, we focus on the one-sided hypothesis testing for the univariate linear calibration, where a normally distributed response variable and an explanatory variable are involved. The observations of the response variable corresponding to known values of the explanatory variable are used to make inferences on a single unknown value of the explanatory variable. We apply the generalized inference to the calibration problem, and take the generalized p-value as the test statistic to develop a new p-value for one-sided hypothesis testing, which we refer to as the one-sided posterior predictive p-value. The behavior of the one-sided posterior predictive p-value is numerically compared with that of the generalized p-value, and simulations show that the proposed p-value is quite satisfactory in the frequentist performance. |
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Keywords: | Generalized p-value One-sided posterior predictive p-value Posterior predictive distribution Univariate linear calibration |
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