Defect prediction has been a major research problem in the software engineering domain for the last five decades. In recent years, large deep-learning models have shifted the performance of software engineering tasks to new limits and are gaining usage in defect prediction. However, these defect prediction models are often limited by the quality of their datasets, which are not large or diverse enough. In this paper, we present Defectors, a large dataset for both line-level and just-in-time defect prediction. Defectors consist of $\approx$ 213K source code files ($\approx$ 93K defective and $\approx$ 120K defect-free files) from 25 popular python projects from various domains and organizations. These projects come from a diverse set of doma...
Defect prediction models focus on identifying defect-prone code elements, for example to allow pract...
Delivering a reliable and high-quality software system to client is a big challenge in software dev...
Background: Software defect prediction has been an active area of research for the last few decades....
Defect prediction has been a major research problem in the software engineering domain for the last ...
This is a collection of defect datasets for the software engineering research community. This collec...
Context: Automated software defect prediction (SDP) methods are increasingly applied, often with the...
Existing defect prediction models use product or process metrics and machine learning methods to ide...
Abstract—Defect prediction is a very meaningful topic, par-ticularly at change-level. Change-level d...
To improve software reliability, software defect prediction is used to find software bugs and priori...
Software defect prediction (SDP) seeks to estimate fault-prone areas of the code to focus testing ac...
Background: The software industry spends a lot of money on finding and fixing defects. It utilises ...
During the last 10 years, hundreds of different defect prediction models have been published. The pe...
Replication Package: Mining Software Defects: Should We Consider Affected Releases? With the rise o...
Defect prediction models focus on identifying defect-prone code elements, for example to allow pract...
Software defect prediction is one of the most active research areas in software engineering. Defect ...
Defect prediction models focus on identifying defect-prone code elements, for example to allow pract...
Delivering a reliable and high-quality software system to client is a big challenge in software dev...
Background: Software defect prediction has been an active area of research for the last few decades....
Defect prediction has been a major research problem in the software engineering domain for the last ...
This is a collection of defect datasets for the software engineering research community. This collec...
Context: Automated software defect prediction (SDP) methods are increasingly applied, often with the...
Existing defect prediction models use product or process metrics and machine learning methods to ide...
Abstract—Defect prediction is a very meaningful topic, par-ticularly at change-level. Change-level d...
To improve software reliability, software defect prediction is used to find software bugs and priori...
Software defect prediction (SDP) seeks to estimate fault-prone areas of the code to focus testing ac...
Background: The software industry spends a lot of money on finding and fixing defects. It utilises ...
During the last 10 years, hundreds of different defect prediction models have been published. The pe...
Replication Package: Mining Software Defects: Should We Consider Affected Releases? With the rise o...
Defect prediction models focus on identifying defect-prone code elements, for example to allow pract...
Software defect prediction is one of the most active research areas in software engineering. Defect ...
Defect prediction models focus on identifying defect-prone code elements, for example to allow pract...
Delivering a reliable and high-quality software system to client is a big challenge in software dev...
Background: Software defect prediction has been an active area of research for the last few decades....