If the software fails to perform its function, serious consequences may result. Software defect prediction is one of the most useful tasks in the Software Development Life Cycle (SDLC) process where it can determine which modules of the software are prone to defects and need to be tested. Owing to its efficiency, machine learning techniques are growing rapidly in software defect prediction. K-Nearest Neighbors (KNN) classifier, a supervised classification technique, has been widely used for this problem. The number of neighbors, which measure by calculating the distance between the new data and its neighbors, has a significant impact on KNN performance. Therefore, the KNN’s classifier will perform better if the k hyperparameters are properl...
The software has turn into an imperious part of human’s life. In the recent computing era, many larg...
During the last 10 years, hundreds of different defect prediction models have been published. The pe...
The software development life cycle generally includes analysis, design, implementation, test and re...
Software Defect Prediction (SDP) provides insights that can help software teams to allocate their li...
Different data preprocessing methods and classifiers have been established and evaluated earlier for...
Software defect prediction is crucial used for detecting possible defects in software before they ma...
Nowadays, it is difficult for us to imagine a life without devices that iscontrolled by software. So...
To identify software modules that are more likely to be defective, machine learning has been used to...
Software defect prediction (SDP) in the initial period of the software development life cycle (SDLC)...
Background: Traditionally, machine learning algorithms have been simply applied for software defect ...
Software systems are increasingly being used in business or mission critical scenarios, where the pr...
Abstract It is natural for the developed software to contain some defects and errors. The importan...
Software testing is the main step of detecting the faults in Software through executing it. Therefor...
Nowadays it is difficult for us to imagine a lifewithout devices that is controlled by software. Sof...
Abstract—Software defect prediction can help to allocate testing resources efficiently through ranki...
The software has turn into an imperious part of human’s life. In the recent computing era, many larg...
During the last 10 years, hundreds of different defect prediction models have been published. The pe...
The software development life cycle generally includes analysis, design, implementation, test and re...
Software Defect Prediction (SDP) provides insights that can help software teams to allocate their li...
Different data preprocessing methods and classifiers have been established and evaluated earlier for...
Software defect prediction is crucial used for detecting possible defects in software before they ma...
Nowadays, it is difficult for us to imagine a life without devices that iscontrolled by software. So...
To identify software modules that are more likely to be defective, machine learning has been used to...
Software defect prediction (SDP) in the initial period of the software development life cycle (SDLC)...
Background: Traditionally, machine learning algorithms have been simply applied for software defect ...
Software systems are increasingly being used in business or mission critical scenarios, where the pr...
Abstract It is natural for the developed software to contain some defects and errors. The importan...
Software testing is the main step of detecting the faults in Software through executing it. Therefor...
Nowadays it is difficult for us to imagine a lifewithout devices that is controlled by software. Sof...
Abstract—Software defect prediction can help to allocate testing resources efficiently through ranki...
The software has turn into an imperious part of human’s life. In the recent computing era, many larg...
During the last 10 years, hundreds of different defect prediction models have been published. The pe...
The software development life cycle generally includes analysis, design, implementation, test and re...