Title of article :
Parameter Identifiability Issues in a Latent Ma- rkov Model for Misclassified Binary Responses
Author/Authors :
Rosychuk, Rhonda J. University of Alberta - Aberhart Centre - Department of Pediatrics, Canada , Thompson, Mary E. University of Waterloo - Department of Statistics and Actuarial Science, Canada
Abstract :
Medical researchers may be interested in disease processes that are not directly observable. Imperfect diagnostic tests may be used repeatedly to monitor the condition of a patient in the absence of a gold standard. We consider parameter identifiability and estimability in a Markov model for alternating binary longitudinal responses that may be misclassified. Exactly two distinct sets of parameter values are shown to generate the distribution for the data in a common situation and we propose a restriction to distinguishes the two. Even with the restriction, parameters may not be estimable. Issues of sampling and correct model specification are discussed.
Keywords :
Estimability , hidden Markov models , identifiability , longitudinal data , misclassification
Journal title :
Journal of the Iranian Statistical Society (JIRSS)
Journal title :
Journal of the Iranian Statistical Society (JIRSS)