Seminar
Steven L. Scott
Hidden Markov Models for Longitudinal Comparisons
Medical researchers interested in temporal, multivariate measurements of complex diseases have recently begun developing health state models which divide the space of patient characteristics into medically distinct clusters. The current state of the art in health services research uses k-means clustering to form the health states and a first order Markov chain to describe transitions between the states. This fitting procedure ignores information from temporally adjacent observations and prevents uncertainty from parameter estimation and cluster assignments from being incorporated into the analysis.