Abstract—Bayesian decision theory is increasingly applied to support decision-making processes under environmental vari-ability and uncertainty. Researchers from application areas like psychology and biomedicine have applied these techniques successfully. However, in the area of software engineering and specifically in the area of self-adaptive systems (SASs), little progress has been made in the application of Bayesian decision theory. We believe that techniques based on Bayesian Networks (BNs) are useful for systems that dynamically adapt themselves at runtime to a changing environment, which is usually uncer-tain. In this paper, we discuss the case for the use of BNs, specifically Dynamic Decision Networks (DDNs), to support the decision...
Several mahemtaical models have been treated among which there has been a preference on Bayesian net...
Abstract. The ever-growing complexity of software systems coupled with their stringent availability ...
This dissertation discusses the mathematical modeling of dynamical systems under uncertainty, Bayesi...
Bayesian decision theory is increasingly applied to support decision-making processes under environm...
International audienceBayesian decision theory is increasingly applied to support decision-making pr...
International audienceIn recent years, there has been a growing interest towards the application of ...
[Context/Motivation] Different modeling techniques have been used to model requirements and decision...
Abstract. [Context / Motivation] Different modeling techniques have been used to model requirements ...
This paper is concerned with decision support system (DSS) development for aid in decision-making wi...
We live in an era where every human entity, from a simple citizen to the head of an entity as large ...
This dissertation deals with decision support in the context of clinical oncology. (Dynamic) Bayesia...
Dynamic decision-making for self-Adaptive systems (SAS) requires the runtime trade-off of multiple n...
This thesis investigates the use Dynamic Bayesian Networks for the purpose of real time diagnosis an...
Bayesian networks (BNs) have been increasingly applied to support management and decision-making pro...
summary:We propose a framework for building decision strategies using Bayesian network models and di...
Several mahemtaical models have been treated among which there has been a preference on Bayesian net...
Abstract. The ever-growing complexity of software systems coupled with their stringent availability ...
This dissertation discusses the mathematical modeling of dynamical systems under uncertainty, Bayesi...
Bayesian decision theory is increasingly applied to support decision-making processes under environm...
International audienceBayesian decision theory is increasingly applied to support decision-making pr...
International audienceIn recent years, there has been a growing interest towards the application of ...
[Context/Motivation] Different modeling techniques have been used to model requirements and decision...
Abstract. [Context / Motivation] Different modeling techniques have been used to model requirements ...
This paper is concerned with decision support system (DSS) development for aid in decision-making wi...
We live in an era where every human entity, from a simple citizen to the head of an entity as large ...
This dissertation deals with decision support in the context of clinical oncology. (Dynamic) Bayesia...
Dynamic decision-making for self-Adaptive systems (SAS) requires the runtime trade-off of multiple n...
This thesis investigates the use Dynamic Bayesian Networks for the purpose of real time diagnosis an...
Bayesian networks (BNs) have been increasingly applied to support management and decision-making pro...
summary:We propose a framework for building decision strategies using Bayesian network models and di...
Several mahemtaical models have been treated among which there has been a preference on Bayesian net...
Abstract. The ever-growing complexity of software systems coupled with their stringent availability ...
This dissertation discusses the mathematical modeling of dynamical systems under uncertainty, Bayesi...