We discuss the main features of Generalized Continuous Time Bayesian Networks (GCTBN) as a dependability formalism: we resort to two specific case studies adapted from the literature, and we discuss modelling choices, analysis results and advantages with respect to other formalisms. From the modelling point of view, GTCBN allow the introduction of general probabilistic dependencies and conditional dependencies in state transition rates of system components. From the analysis point of view, any task ascribable to a posterior probability computation can be implemented, among which the computation of system unreliability, importance indices, system monitoring, prediction and diagnosis
The time duration in continuous time Bayesian networks, i.e., the time that a variable stays in a st...
Structured stochastic processes evolving in continuous time present a widely adopted framework to mo...
In this paper we investigate the use of the mean field technique to analyze Continuous Time Bayesian...
We discuss the main features of Generalized Continuous Time Bayesian Networks (GCTBN) as a dependabi...
We discuss the main features of Generalized Continuous Time Bayesian Networks (GCTBN) as a dependabi...
We discuss the main features of Generalized Continuous Time Bayesian Networks (GCTBN) as a reliabili...
An extension to Continuous Time Bayesian Networks (CTBN) called Generalized CTBN (GCTBN) is presente...
We present an extension to Continuous Time Bayesian Networks (CTBN) called Generalized CTBN (GCTBN)....
We present a continuous-time Bayesian network (CTBN) framework for dynamic systems reliability model...
We present a software tool for the analysis of Generalized Continuous Time Bayesian Networks (GCTBN...
A software tool for the analysis of Generalized Continuous Time Bayesian Networks (GCTBN) is present...
In this report we present an extension to Continuous Time Bayesian Networks (CTBN) called Generalize...
Bayesian Networks (BN) provide robust probabilistic methods of reasoning under uncertainty, but desp...
Abstract—Probabilistic graphical models are widely used in the context of fault diagnostics and prog...
Structured stochastic processes evolving in continuous time present a widely adopted framework to mo...
The time duration in continuous time Bayesian networks, i.e., the time that a variable stays in a st...
Structured stochastic processes evolving in continuous time present a widely adopted framework to mo...
In this paper we investigate the use of the mean field technique to analyze Continuous Time Bayesian...
We discuss the main features of Generalized Continuous Time Bayesian Networks (GCTBN) as a dependabi...
We discuss the main features of Generalized Continuous Time Bayesian Networks (GCTBN) as a dependabi...
We discuss the main features of Generalized Continuous Time Bayesian Networks (GCTBN) as a reliabili...
An extension to Continuous Time Bayesian Networks (CTBN) called Generalized CTBN (GCTBN) is presente...
We present an extension to Continuous Time Bayesian Networks (CTBN) called Generalized CTBN (GCTBN)....
We present a continuous-time Bayesian network (CTBN) framework for dynamic systems reliability model...
We present a software tool for the analysis of Generalized Continuous Time Bayesian Networks (GCTBN...
A software tool for the analysis of Generalized Continuous Time Bayesian Networks (GCTBN) is present...
In this report we present an extension to Continuous Time Bayesian Networks (CTBN) called Generalize...
Bayesian Networks (BN) provide robust probabilistic methods of reasoning under uncertainty, but desp...
Abstract—Probabilistic graphical models are widely used in the context of fault diagnostics and prog...
Structured stochastic processes evolving in continuous time present a widely adopted framework to mo...
The time duration in continuous time Bayesian networks, i.e., the time that a variable stays in a st...
Structured stochastic processes evolving in continuous time present a widely adopted framework to mo...
In this paper we investigate the use of the mean field technique to analyze Continuous Time Bayesian...