Abstract
A General Multiconsequence Intervention Model class that describes the simultaneous occurrence of a change in the process mean and covariance structure is introduced. When the covariance change is negligible, this model class reduces to intervention models described by Box and Tiao (1975). Maximum Likelihood Estimators for the parameters of the multiconsequence model class are developed for various important modeling situations that result from different a priori information about the form of the mean shift function form and the model parameters. As a consequence of these estimation results, an identification procedure for determining an appropriate dynamic mean shift form is suggested. The necessary hypothesis tests and corresponding confidence intervals.