학술논문

The information domain confidence intervals in univariate linear calibration.
Document Type
Article
Source
Communications in Statistics: Simulation & Computation. 2022, Vol. 51 Issue 10, p5620-5630. 11p.
Subject
*CONFIDENCE intervals
*UNIVARIATE analysis
*PROBABILITY theory
Language
ISSN
0361-0918
Abstract
We consider the confidence interval for the univariate linear calibration, where a response variable is related to an explanatory variable by a simple linear model, and the observations of the response variable and known values of the explanatory variable are used to make inferences on a single unknown value of the explanatory variable. Since the univariate linear calibration suffers from a problem of local unidentifiability, which results in the confidence coefficient of every confidence interval with finite length being zero, we propose new confidence intervals in terms of information domain, which are verified to be 1 − α confidence intervals for a specified range of the interesting parameter. The proposed intervals are numerically compared with two existing methods, and simulations show that our confidence intervals have good behavior in the coverage probability and the expected length. We also illustrate the results using an example. [ABSTRACT FROM AUTHOR]