Confidence Intervals Utilizing Uncertain Prior Information
Computes the known correlation between and $...
Computes the the functions and that specify the CIUUPI for all ...
Evaluate the functions and at x
For given observed response vector , compute the standard $1 - \alp...
For given observed response vector , compute the confidence interva...
Compute the coverage probability of the CIUUPI
Plot the graph of the odd function used in the specification of th...
Plot the graph of the coverage probability of the CIUUPI
Plot the graph of the even function used in the specification of t...
Plot the graph of the squared scaled expected length of the CIUUPI
Compute the scaled expected length of the CIUUPI
Computes a confidence interval for a specified linear combination of the regression parameters in a linear regression model with iid normal errors with known variance when there is uncertain prior information that a distinct specified linear combination of the regression parameters takes a given value. This confidence interval, found by numerical nonlinear constrained optimization, has the required minimum coverage and utilizes this uncertain prior information through desirable expected length properties. This confidence interval has the following three practical applications. Firstly, if the error variance has been accurately estimated from previous data then it may be treated as being effectively known. Secondly, for sufficiently large (dimension of the response vector) minus (dimension of regression parameter vector), greater than or equal to 30 (say), if we replace the assumed known value of the error variance by its usual estimator in the formula for the confidence interval then the resulting interval has, to a very good approximation, the same coverage probability and expected length properties as when the error variance is known. Thirdly, some more complicated models can be approximated by the linear regression model with error variance known when certain unknown parameters are replaced by estimates. This confidence interval is described in Mainzer, R. and Kabaila, P. (2019) <doi:10.32614/RJ-2019-026>, and is a member of the family of confidence intervals proposed by Kabaila, P. and Giri, K. (2009) <doi:10.1016/j.jspi.2009.03.018>.