Context: The adequacy of fault-proneness prediction models in representing the relationship between the internal quality of classes and their fault-proneness relies on several factors. One of these factors is the completeness of the fault data. A fault-proneness prediction model that is built using fault data collected during testing or after a relatively short period of time after release may be inadequate and may not be reliable enough in predicting faulty classes. Objective: We empirically study the relationship between the time interval since a system is released and the performance of the fault-proneness prediction models constructed based on the fault data reported within the time interval. Method: We construct prediction models using...
Context: Software fault prediction has been an important research topic in the software engineering ...
As users continually request additional functionality, software systems will continue to grow in the...
ContextDefect prediction can help at prioritizing testing tasks by, for instance, ranking a list of ...
Context: The adequacy of fault-proneness prediction models in representing the relationship between ...
Assuring high quality software is perceived as a key factor to succeed in the software industry. How...
The research community in software engineering is trying to find a way on how to achieve the goal of...
Context. Quality assurance plays a vital role in the software engineering development process. It ca...
Abstract: Complexity metrics have been intensively studied in predicting fault-prone software module...
This is a post-print of the article accepted for publication. The definitive version can be accessed...
Defect prediction approaches use software metrics and fault data to learn which software properties ...
Defect prediction approaches use software metrics and fault data to learn which software properties ...
In the last decade, empirical studies on object-oriented design metrics have shown some of them to b...
This paper reports on the construction and validation of fault-proneness prediction models in the co...
System and class level software metrics are often considered for predicting fault-prone modules in a...
Background: Fault prediction is a key problem in software engineering domain. In recent years, an in...
Context: Software fault prediction has been an important research topic in the software engineering ...
As users continually request additional functionality, software systems will continue to grow in the...
ContextDefect prediction can help at prioritizing testing tasks by, for instance, ranking a list of ...
Context: The adequacy of fault-proneness prediction models in representing the relationship between ...
Assuring high quality software is perceived as a key factor to succeed in the software industry. How...
The research community in software engineering is trying to find a way on how to achieve the goal of...
Context. Quality assurance plays a vital role in the software engineering development process. It ca...
Abstract: Complexity metrics have been intensively studied in predicting fault-prone software module...
This is a post-print of the article accepted for publication. The definitive version can be accessed...
Defect prediction approaches use software metrics and fault data to learn which software properties ...
Defect prediction approaches use software metrics and fault data to learn which software properties ...
In the last decade, empirical studies on object-oriented design metrics have shown some of them to b...
This paper reports on the construction and validation of fault-proneness prediction models in the co...
System and class level software metrics are often considered for predicting fault-prone modules in a...
Background: Fault prediction is a key problem in software engineering domain. In recent years, an in...
Context: Software fault prediction has been an important research topic in the software engineering ...
As users continually request additional functionality, software systems will continue to grow in the...
ContextDefect prediction can help at prioritizing testing tasks by, for instance, ranking a list of ...