Predicting the reliability of software systems based on a component-based approach is inherently difficult, in particular due to failure dependencies between software compo-nents. One possible way to assess and include dependency aspects in software reliability models is to find upper bounds for probabilities that software components fail simulta-neously and then include these into the reliability models. In earlier research, it has been shown that including partial dependency information may give substantial improvements in predicting the reliability of compound software compared to assuming independence between all software components. Furthermore, it has been shown that including de-pendencies between pairs of data-parallel components ma...
We study required numbers of tasks to be tested for a technical system, including systems with built...
In reliability engineering, data about failure events is often scarce. To arrive at meaningful estim...
Quantifying the quality of a logical system in a probabilistic manner is very difficult. Our goal is...
Predicting the reliability of software systems based on a component-based approach is inherently dif...
An imprecise Bayesian nonparametric approach to system reliability with multiple types of components...
AbstractAn imprecise Bayesian nonparametric approach to system reliability with multiple types of co...
The Gibbs sampling approach is developed for Bayesian inferences and predictions in software reliabi...
When assessing a software-based system, the results of Bayesian statistical inference on operational...
Predicting the reliability of software systems based on a component approach is inherently difficult...
There are many probabilistic and statistical approaches to modelling software reliability. Software ...
Predicting the reliability of software systems based on a component approach is in-herently difficul...
This paper presents Bayesian techniques for conservative claims about software reliability, particul...
Software reliability has become increasingly important, especially in life-critical situations. The ...
Abstract: We consider a software reliability model where the failure rate of each fault depends on t...
In this paper, we are concerned with predicting the number of faults N and the time to next failure ...
We study required numbers of tasks to be tested for a technical system, including systems with built...
In reliability engineering, data about failure events is often scarce. To arrive at meaningful estim...
Quantifying the quality of a logical system in a probabilistic manner is very difficult. Our goal is...
Predicting the reliability of software systems based on a component-based approach is inherently dif...
An imprecise Bayesian nonparametric approach to system reliability with multiple types of components...
AbstractAn imprecise Bayesian nonparametric approach to system reliability with multiple types of co...
The Gibbs sampling approach is developed for Bayesian inferences and predictions in software reliabi...
When assessing a software-based system, the results of Bayesian statistical inference on operational...
Predicting the reliability of software systems based on a component approach is inherently difficult...
There are many probabilistic and statistical approaches to modelling software reliability. Software ...
Predicting the reliability of software systems based on a component approach is in-herently difficul...
This paper presents Bayesian techniques for conservative claims about software reliability, particul...
Software reliability has become increasingly important, especially in life-critical situations. The ...
Abstract: We consider a software reliability model where the failure rate of each fault depends on t...
In this paper, we are concerned with predicting the number of faults N and the time to next failure ...
We study required numbers of tasks to be tested for a technical system, including systems with built...
In reliability engineering, data about failure events is often scarce. To arrive at meaningful estim...
Quantifying the quality of a logical system in a probabilistic manner is very difficult. Our goal is...