With the availability of high-speed Internet and the advent of Internet of Things devices, modern software systems are growing in both size and complexity. Software defect prediction (SDP) guarantees the high quality of such complex systems. However, the characteristics of imbalanced distribution of defect data sets have led to the deviation and loss of accuracy of most software defect prediction methods. This paper presents two novel approaches for learning from imbalanced data sets to produce a higher predictive accuracy over the minority class. These two methods differ in whether the oversampling and the misclassification cost information are utilized during training stage, and they are good at different aspects of imbalanced classificat...
The software has turn into an imperious part of human’s life. In the recent computing era, many larg...
Mining software repositories is a growing research field where rich data available in the different ...
Background: Ensemble techniques have gained attention in various scientific fields. Defect predictio...
Fault prediction problem has a crucial role in the software development process because it contribut...
Imbalanced data is a common problem in data mining when dealing with classi cation problems, where ...
Recent advances in the domain of software defect prediction (SDP) include the integration of multipl...
Software defect predictors are useful to maintain the high quality of software products effectively....
Identifying defective software entities is essential to ensure software quality during software deve...
Machine learning techniques are frequent for the complicated task of predicting software defects. Of...
To identify software modules that are more likely to be defective, machine learning has been used to...
Abstract—Software faults could cause serious system errors and failures, leading to huge economic lo...
Software defect prediction refers to the automatic identification of defective parts of software thr...
A software defect is an error, flaw, mistake, or fault in a computer program or system that produces...
Software defect prediction performance varies over a large range. Menzies suggested there is a ceili...
Context: Generally, there are more non-defective instances than defective instances in the datasets ...
The software has turn into an imperious part of human’s life. In the recent computing era, many larg...
Mining software repositories is a growing research field where rich data available in the different ...
Background: Ensemble techniques have gained attention in various scientific fields. Defect predictio...
Fault prediction problem has a crucial role in the software development process because it contribut...
Imbalanced data is a common problem in data mining when dealing with classi cation problems, where ...
Recent advances in the domain of software defect prediction (SDP) include the integration of multipl...
Software defect predictors are useful to maintain the high quality of software products effectively....
Identifying defective software entities is essential to ensure software quality during software deve...
Machine learning techniques are frequent for the complicated task of predicting software defects. Of...
To identify software modules that are more likely to be defective, machine learning has been used to...
Abstract—Software faults could cause serious system errors and failures, leading to huge economic lo...
Software defect prediction refers to the automatic identification of defective parts of software thr...
A software defect is an error, flaw, mistake, or fault in a computer program or system that produces...
Software defect prediction performance varies over a large range. Menzies suggested there is a ceili...
Context: Generally, there are more non-defective instances than defective instances in the datasets ...
The software has turn into an imperious part of human’s life. In the recent computing era, many larg...
Mining software repositories is a growing research field where rich data available in the different ...
Background: Ensemble techniques have gained attention in various scientific fields. Defect predictio...