Statistical flowgraphs model multistate semi-Markov processes and provide a way to perform inference for these processes. This methodology provides powerful results that significantly impact the study of multistate semi-Markov processes. This dissertation extends previous work in several ways. First, by demonstrating how any "smooth" transition distribution can be incorporated into a statistical flowgraph model (SFGM), we provide a method to use popular distributions, such as the lognormal, that have not been used in the past. Next, we propose an alternate way to consider Bayesian SFGMs by showing how computation can be accomplished when the traditional methods of SFGMs fail to be computationally feasible. We demonstrate this metho...
In the analysis of a multi-state process with a finite number of states, a semi-Markov model allows ...
Multistate models are increasingly being used to model complex disease profiles. By modelling transi...
Continuous-time multi-state models are widely used for categorical response data, particularly in th...
Statistical flowgraphs represent multistate semi-Markov processes using integral transforms of trans...
Flowgraph models are directed graph models for describing the dynamic changes in a stochastic proces...
Healthcare systems have multistate processes. Such processes may be modeled using flowgraphs, which ...
Semi-Markov processes are gaining popularity as models of disease progression in survival analysis. ...
Multi-state models provide a unified framework for the description of the evolu-tion of discrete phe...
This thesis considers processes that jump among a finite set of states, with a random amount of time...
Multi-state models provide a unified framework for the description of the evolution of discrete phen...
Semi-Markov models are widely used for survival analysis and reliability analysis. In general, there...
In longitudinal studies of disease, patients can experience several events across a follow-up perio...
Thesis (Ph.D.)--University of Washington, 2016-08Markov branching processes are a class of continuou...
Statistical Flowgraph Models are an efficient tool to model multi-state stochastic processes. They s...
We consider models based on multivariate counting processes, including multi-state models. These mod...
In the analysis of a multi-state process with a finite number of states, a semi-Markov model allows ...
Multistate models are increasingly being used to model complex disease profiles. By modelling transi...
Continuous-time multi-state models are widely used for categorical response data, particularly in th...
Statistical flowgraphs represent multistate semi-Markov processes using integral transforms of trans...
Flowgraph models are directed graph models for describing the dynamic changes in a stochastic proces...
Healthcare systems have multistate processes. Such processes may be modeled using flowgraphs, which ...
Semi-Markov processes are gaining popularity as models of disease progression in survival analysis. ...
Multi-state models provide a unified framework for the description of the evolu-tion of discrete phe...
This thesis considers processes that jump among a finite set of states, with a random amount of time...
Multi-state models provide a unified framework for the description of the evolution of discrete phen...
Semi-Markov models are widely used for survival analysis and reliability analysis. In general, there...
In longitudinal studies of disease, patients can experience several events across a follow-up perio...
Thesis (Ph.D.)--University of Washington, 2016-08Markov branching processes are a class of continuou...
Statistical Flowgraph Models are an efficient tool to model multi-state stochastic processes. They s...
We consider models based on multivariate counting processes, including multi-state models. These mod...
In the analysis of a multi-state process with a finite number of states, a semi-Markov model allows ...
Multistate models are increasingly being used to model complex disease profiles. By modelling transi...
Continuous-time multi-state models are widely used for categorical response data, particularly in th...