Software defect prediction studies usually build models without analyzing the data used in the procedure. As a result, the same approach has different performances on different data sets. In this paper, we introduce discrimination analysis for providing a good method to give insight into the inherent property of the software data. Based on the analysis, we find that the data sets used in this field have nonlinearly separable and class-imbalanced problems. Unlike the prior works, we try to exploit the kernel method to nonlinearly map the data into a high-dimensional feature space. By combating these two problems, we propose an algorithm based on kernel discrimination analysis called KDC to build more effective prediction model. Experimental ...
If the software fails to perform its function, serious consequences may result. Software defect pred...
Software defect predictors are useful to maintain the high quality of software products effectively....
Many studies have been carried out to predict the presence of software code defects using static cod...
An automatic mode that increases sample stability is checked to verify the software design. Predict ...
Background: Software defect prediction has been an active area of research for the last few decades....
Software defect prediction is the process of locating defective modules in software. Software qualit...
Software testing using software defect prediction aims to detect as many defects as possible in soft...
Different data preprocessing methods and classifiers have been established and evaluated earlier for...
Since last decade, due to increasing demand, huge amount of software is being developed, whereas the...
Abstract—Defect prediction models help software quality as-surance teams to effectively allocate the...
Abstract—Finding defects in a software system is not easy. Effective detection of software defects i...
Software defect prediction is an activity that aims at narrowing down the most likely defect-prone s...
During the last 10 years, hundreds of different defect prediction models have been published. The pe...
Abstract — Predicting defect-prone software components is an economically important activity. Softwa...
Context: Although many papers have been published on software defect prediction techniques, machine ...
If the software fails to perform its function, serious consequences may result. Software defect pred...
Software defect predictors are useful to maintain the high quality of software products effectively....
Many studies have been carried out to predict the presence of software code defects using static cod...
An automatic mode that increases sample stability is checked to verify the software design. Predict ...
Background: Software defect prediction has been an active area of research for the last few decades....
Software defect prediction is the process of locating defective modules in software. Software qualit...
Software testing using software defect prediction aims to detect as many defects as possible in soft...
Different data preprocessing methods and classifiers have been established and evaluated earlier for...
Since last decade, due to increasing demand, huge amount of software is being developed, whereas the...
Abstract—Defect prediction models help software quality as-surance teams to effectively allocate the...
Abstract—Finding defects in a software system is not easy. Effective detection of software defects i...
Software defect prediction is an activity that aims at narrowing down the most likely defect-prone s...
During the last 10 years, hundreds of different defect prediction models have been published. The pe...
Abstract — Predicting defect-prone software components is an economically important activity. Softwa...
Context: Although many papers have been published on software defect prediction techniques, machine ...
If the software fails to perform its function, serious consequences may result. Software defect pred...
Software defect predictors are useful to maintain the high quality of software products effectively....
Many studies have been carried out to predict the presence of software code defects using static cod...