Reliably predicting software defects is one of the holy grails of software engineering. Researchers have devised and implemented a plethora of defect/bug prediction approaches varying in terms of accuracy, complexity and the input data they require. However, the absence of an established benchmark makes it hard, if not impossible, to compare approaches. We present a benchmark for defect prediction, in the form of a publicly available dataset consisting of several software systems, and provide an extensive comparison of well-known bug prediction approaches, together with novel approaches we devised. We evaluate the performance of the approaches using different performance indicators: classification of entities as defect-prone or not, ranking...
Abstract Bug prediction is aimed at identifying software artifacts that are more likely to be defect...
Software defect prediction is the process of improving software testing process by identifying defec...
Bug prediction is aimed at supporting developers in the identification of code artifacts more likely...
During the last 10 years, hundreds of different defect prediction models have been published. The pe...
Software defect prediction strives to improve software quality and testing efficiency by constructin...
Open Access: This article is distributed under the terms of the Creative Commons Attribution 4.0 Int...
Abstract—Software defect prediction strives to improve software quality and testing efficiency by co...
Software defect prediction is motivated by the huge costs incurred as a result of software failures...
During the last 10 years, hundreds of different defect prediction models have been published. The p...
Software defect prediction is one of the most active research areas in software engineering. Defect ...
Bug prediction is aimed at identifying software artifacts that are more likely to be defective in th...
Software defect prediction research has adopted various evaluation measures to assess the performanc...
This is a collection of defect datasets for the software engineering research community. This collec...
It is crucial for a software manager to know whether or not one can rely on a bug prediction model. ...
Context. Reports suggest that defects in code cost the US in excess of $50billion per year to put ri...
Abstract Bug prediction is aimed at identifying software artifacts that are more likely to be defect...
Software defect prediction is the process of improving software testing process by identifying defec...
Bug prediction is aimed at supporting developers in the identification of code artifacts more likely...
During the last 10 years, hundreds of different defect prediction models have been published. The pe...
Software defect prediction strives to improve software quality and testing efficiency by constructin...
Open Access: This article is distributed under the terms of the Creative Commons Attribution 4.0 Int...
Abstract—Software defect prediction strives to improve software quality and testing efficiency by co...
Software defect prediction is motivated by the huge costs incurred as a result of software failures...
During the last 10 years, hundreds of different defect prediction models have been published. The p...
Software defect prediction is one of the most active research areas in software engineering. Defect ...
Bug prediction is aimed at identifying software artifacts that are more likely to be defective in th...
Software defect prediction research has adopted various evaluation measures to assess the performanc...
This is a collection of defect datasets for the software engineering research community. This collec...
It is crucial for a software manager to know whether or not one can rely on a bug prediction model. ...
Context. Reports suggest that defects in code cost the US in excess of $50billion per year to put ri...
Abstract Bug prediction is aimed at identifying software artifacts that are more likely to be defect...
Software defect prediction is the process of improving software testing process by identifying defec...
Bug prediction is aimed at supporting developers in the identification of code artifacts more likely...