Existing defect prediction models use product or process metrics and machine learning methods to identify defect-prone source code entities. Different classifiers (e.g., linear regression, logistic regression, or classification trees) have been investigated in the last decade. The results achieved so far are sometimes contrasting and do not show a clear winner. In this paper we present an empirical study aiming at statistically analyzing the equivalence of different defect predictors. We also propose a combined approach, coined as CODEP (COmbined DEfect Predictor), that employs the classification provided by different machine learning techniques to improve the detection of defect-prone entities. The study was conducted on 10 open source sof...
Software testing is the main method for finding software defects at present, and symmetric testing a...
Background: Cross-project defect prediction, which provides feasibility to build defect prediction m...
The paper presents an analysis of 83 versions of industrial, open-source and academic projects. We h...
Existing defect prediction models use product or process metrics and machine learning methods to ide...
Existing defect prediction models use product or process metrics and machine learning methods to ide...
Existing defect prediction models use product or process metrics and machine learning methods to ide...
Existing defect prediction models use product or process metrics and machine learning methods to ide...
The feasibility of building a software defect prediction (SDP) model in the absence of previous reco...
Cross-project defect prediction (CPDP) on projects with limited historical data has attracted much a...
Software defect prediction is one of the most active research areas in software engineering. Defect ...
Abstract—Cross-project defect prediction (CPDP) plays an important role in estimating the most likel...
Software code life cycle is characterized by continuous changes requiring a great effort to perform ...
Cross-project defect prediction is very appealing because (i) it allows predicting defects in projec...
Software code life cycle is characterized by continuous changes requiring a great effort to perform ...
The defect prediction models can be a good tool on organizing the project´s test resources. The mode...
Software testing is the main method for finding software defects at present, and symmetric testing a...
Background: Cross-project defect prediction, which provides feasibility to build defect prediction m...
The paper presents an analysis of 83 versions of industrial, open-source and academic projects. We h...
Existing defect prediction models use product or process metrics and machine learning methods to ide...
Existing defect prediction models use product or process metrics and machine learning methods to ide...
Existing defect prediction models use product or process metrics and machine learning methods to ide...
Existing defect prediction models use product or process metrics and machine learning methods to ide...
The feasibility of building a software defect prediction (SDP) model in the absence of previous reco...
Cross-project defect prediction (CPDP) on projects with limited historical data has attracted much a...
Software defect prediction is one of the most active research areas in software engineering. Defect ...
Abstract—Cross-project defect prediction (CPDP) plays an important role in estimating the most likel...
Software code life cycle is characterized by continuous changes requiring a great effort to perform ...
Cross-project defect prediction is very appealing because (i) it allows predicting defects in projec...
Software code life cycle is characterized by continuous changes requiring a great effort to perform ...
The defect prediction models can be a good tool on organizing the project´s test resources. The mode...
Software testing is the main method for finding software defects at present, and symmetric testing a...
Background: Cross-project defect prediction, which provides feasibility to build defect prediction m...
The paper presents an analysis of 83 versions of industrial, open-source and academic projects. We h...