An important decision in software projects is when to stop testing. Decision support tools for this have been built using causal models represented by Bayesian Networks (BNs), incorporating empirical data and expert judgement. Previously, this required a custom BN for each development lifecycle. We describe a more general approach that allows causal models to be applied to any lifecycle. The approach evolved through collaborative projects and captures significant commercial input. For projects within the range of the models, defect predictions are very accurate. This approach enables decision-makers to reason in a way that is not possible with regression-based models
In this paper, we propose a defect prediction approach centered on more robust evidences towards cau...
Bayesian belief network model was developed in authors' previous research that quantifies the n...
[Context] Defect Causal Analysis (DCA) represents an efficient practice to improve software processe...
Standard practice in building models in software engineering normally involves three steps: collecti...
Defect prediction and assessment are the essential steps in large organizations and industries where...
This project reviews the use of Bays Networks (BNs) in software defects Prediction. The idea allows ...
This paper reviews the use of Bayesian Networks (BNs) in predicting software defects and software re...
This paper reviews the use of Bayesian Networks (BNs) in predicting software defects and software re...
The lifetime of many software systems is surprisingly long, often far exceeding initial plans and ex...
The ability to reliably predict the end quality of software under development presents a significant...
Software testing is a crucial activity during software development and fault prediction models assis...
In this paper, we claim that software development will do well by explicit modeling of its uncertain...
Classifying a defect is an important activity for improving software quality. It is important to cla...
This paper develops a generic degradation model based on Dynamic Bayesian Networks (DBN) which predi...
In this paper a generic degradation model based on Dynamic Bayesian Networks (DBN) which predicts th...
In this paper, we propose a defect prediction approach centered on more robust evidences towards cau...
Bayesian belief network model was developed in authors' previous research that quantifies the n...
[Context] Defect Causal Analysis (DCA) represents an efficient practice to improve software processe...
Standard practice in building models in software engineering normally involves three steps: collecti...
Defect prediction and assessment are the essential steps in large organizations and industries where...
This project reviews the use of Bays Networks (BNs) in software defects Prediction. The idea allows ...
This paper reviews the use of Bayesian Networks (BNs) in predicting software defects and software re...
This paper reviews the use of Bayesian Networks (BNs) in predicting software defects and software re...
The lifetime of many software systems is surprisingly long, often far exceeding initial plans and ex...
The ability to reliably predict the end quality of software under development presents a significant...
Software testing is a crucial activity during software development and fault prediction models assis...
In this paper, we claim that software development will do well by explicit modeling of its uncertain...
Classifying a defect is an important activity for improving software quality. It is important to cla...
This paper develops a generic degradation model based on Dynamic Bayesian Networks (DBN) which predi...
In this paper a generic degradation model based on Dynamic Bayesian Networks (DBN) which predicts th...
In this paper, we propose a defect prediction approach centered on more robust evidences towards cau...
Bayesian belief network model was developed in authors' previous research that quantifies the n...
[Context] Defect Causal Analysis (DCA) represents an efficient practice to improve software processe...