The ongoing development of computer systems requires massive software projects. Running the components of these huge projects for testing purposes might be a costly process; therefore, parameter estimation can be used instead. Software defect prediction models are crucial for software quality assurance. This study investigates the impact of dataset size and feature selection algorithms on software defect prediction models. We use two approaches to build software defect prediction models: a statistical approach and a machine learning approach with support vector machines (SVMs). The fault prediction model was built based on four datasets of different sizes. Additionally, four feature selection algorithms were used. We found that applying the...
Predicting software defects in the early stages of the software development life cycle, such as the ...
Abstract—Software defect prediction strives to improve software quality and testing efficiency by co...
Software defect prediction is an activity that aims at narrowing down the most likely defect-prone s...
Data science is becoming more important for software engineering problems. Software defect predictio...
Effective prediction of defect-prone software modules can enable software developers to focus qualit...
Software defect prediction (SDP) in the initial period of the software development life cycle (SDLC)...
Context. Software testing is the process of finding faults in software while executing it. The resul...
During the last 10 years, hundreds of different defect prediction models have been published. The pe...
Context: Software defect prediction plays a crucial role in estimating the most defect-prone compone...
Software fault prediction is widely used in the software development industry. Moreover, software de...
Abstract—Defect prediction models help software quality as-surance teams to effectively allocate the...
Software defect prediction is crucial used for detecting possible defects in software before they ma...
Software defect prediction strives to improve software quality and testing efficiency by constructin...
Background: Software defect prediction has been an active area of research for the last few decades....
Software defect prediction aims at detecting part of software that can likely contain faulty modules...
Predicting software defects in the early stages of the software development life cycle, such as the ...
Abstract—Software defect prediction strives to improve software quality and testing efficiency by co...
Software defect prediction is an activity that aims at narrowing down the most likely defect-prone s...
Data science is becoming more important for software engineering problems. Software defect predictio...
Effective prediction of defect-prone software modules can enable software developers to focus qualit...
Software defect prediction (SDP) in the initial period of the software development life cycle (SDLC)...
Context. Software testing is the process of finding faults in software while executing it. The resul...
During the last 10 years, hundreds of different defect prediction models have been published. The pe...
Context: Software defect prediction plays a crucial role in estimating the most defect-prone compone...
Software fault prediction is widely used in the software development industry. Moreover, software de...
Abstract—Defect prediction models help software quality as-surance teams to effectively allocate the...
Software defect prediction is crucial used for detecting possible defects in software before they ma...
Software defect prediction strives to improve software quality and testing efficiency by constructin...
Background: Software defect prediction has been an active area of research for the last few decades....
Software defect prediction aims at detecting part of software that can likely contain faulty modules...
Predicting software defects in the early stages of the software development life cycle, such as the ...
Abstract—Software defect prediction strives to improve software quality and testing efficiency by co...
Software defect prediction is an activity that aims at narrowing down the most likely defect-prone s...