For many clinical problems in patients the underlying pathophysiological process changes in the course of time as a result of medical interventions. In model building for such problems, the typical scarcity of data in a clinical setting has been often compensated by utilizing time homogeneous models, such as dynamic Bayesian networks. As a consequence, the specificities of the underlying process are lost in the obtained models. In the current work, we propose the new concept of partitioned dynamic Bayesian networks to capture distribution regime changes, i.e. time non-homogeneity, benefiting from an intuitive and compact representation with the solid theoretical foundation of Bayesian network models. In order to balance specificity and simp...
AbstractThe increasing prevalence of diabetes and its related complications is raising the need for ...
To represent the complex structure of intensive longitudinal data of multiple individuals, we propos...
In this chapter, we review the problem of network inference from time-course data, focusing on a cla...
For many clinical problems in patients the underlying pathophysiological process changes in the cour...
Abstract: Classical dynamic Bayesian networks (DBNs) are based on the homogeneous Markov assumption ...
Bayesian Networks are probabilistic graphical models that represent conditional independence relatio...
The focus of this PhD thesis has been on two well-known and widely applied statistical model classes...
Classical dynamic Bayesian networks (DBNs) are based on the homogeneous Markov assumption and cannot...
In the topical field of systems biology there is considerable interest in learning regulatory networ...
The time duration in continuous time Bayesian networks, i.e., the time that a variable stays in a st...
In this paper we present a formal treatment of nonhomogeneous Markov chains by introducing a hierarc...
This thesis investigates the use of Bayesian Networks (BNs), augmented by the Dynamic Dis- cretizati...
Dynamic Bayesian Networks (DBNs) are temporal probabilistic models for reasoning over time. They oft...
Studying interactions between different brain regions or neural components is crucial in understandi...
For the purpose of the further wide application of dynamic Bayesian networks (DBNs) to many real com...
AbstractThe increasing prevalence of diabetes and its related complications is raising the need for ...
To represent the complex structure of intensive longitudinal data of multiple individuals, we propos...
In this chapter, we review the problem of network inference from time-course data, focusing on a cla...
For many clinical problems in patients the underlying pathophysiological process changes in the cour...
Abstract: Classical dynamic Bayesian networks (DBNs) are based on the homogeneous Markov assumption ...
Bayesian Networks are probabilistic graphical models that represent conditional independence relatio...
The focus of this PhD thesis has been on two well-known and widely applied statistical model classes...
Classical dynamic Bayesian networks (DBNs) are based on the homogeneous Markov assumption and cannot...
In the topical field of systems biology there is considerable interest in learning regulatory networ...
The time duration in continuous time Bayesian networks, i.e., the time that a variable stays in a st...
In this paper we present a formal treatment of nonhomogeneous Markov chains by introducing a hierarc...
This thesis investigates the use of Bayesian Networks (BNs), augmented by the Dynamic Dis- cretizati...
Dynamic Bayesian Networks (DBNs) are temporal probabilistic models for reasoning over time. They oft...
Studying interactions between different brain regions or neural components is crucial in understandi...
For the purpose of the further wide application of dynamic Bayesian networks (DBNs) to many real com...
AbstractThe increasing prevalence of diabetes and its related complications is raising the need for ...
To represent the complex structure of intensive longitudinal data of multiple individuals, we propos...
In this chapter, we review the problem of network inference from time-course data, focusing on a cla...