Effective prediction of defect-prone software modules can enable software developers to focus quality assurance activities and allocate effort and resources more efficiently. Support vector machines (SVM) have been successfully applied for solving both classification and regression problems in many applications. This paper evaluates the capability of SVM in predicting defect-prone software modules and compares its prediction performance against eight statistical and machine learning models in the context of four NASA datasets. The results indicate that the prediction performance o
Abstract: During software development and maintenance, predicting software bugs becomes critical. De...
Software defect prediction (SDP) in the initial period of the software development life cycle (SDLC)...
Open Access: This article is distributed under the terms of the Creative Commons Attribution 4.0 Int...
The automated detection of defective modules within software systems could lead to reduced developme...
“The original publication is available at www.springerlink.com” Copyright Springer [Full text of thi...
Many studies have been carried out to predict the presence of software code defects using static cod...
The ongoing development of computer systems requires massive software projects. Running the componen...
Predicting the defect-prone modules when the previous defect labels of modules are limited is a chal...
Abstract—Defect prediction models help software quality as-surance teams to effectively allocate the...
Support Vector Machines (SVMs) are known as some of the best learning models for pattern recognition...
The feasibility of building a software defect prediction (SDP) model in the absence of previous reco...
Abstract—Software defect prediction strives to improve software quality and testing efficiency by co...
Data science is becoming more important for software engineering problems. Software defect predictio...
Since last decade, due to increasing demand, huge amount of software is being developed, whereas the...
Software defect prediction strives to improve software quality and testing efficiency by constructin...
Abstract: During software development and maintenance, predicting software bugs becomes critical. De...
Software defect prediction (SDP) in the initial period of the software development life cycle (SDLC)...
Open Access: This article is distributed under the terms of the Creative Commons Attribution 4.0 Int...
The automated detection of defective modules within software systems could lead to reduced developme...
“The original publication is available at www.springerlink.com” Copyright Springer [Full text of thi...
Many studies have been carried out to predict the presence of software code defects using static cod...
The ongoing development of computer systems requires massive software projects. Running the componen...
Predicting the defect-prone modules when the previous defect labels of modules are limited is a chal...
Abstract—Defect prediction models help software quality as-surance teams to effectively allocate the...
Support Vector Machines (SVMs) are known as some of the best learning models for pattern recognition...
The feasibility of building a software defect prediction (SDP) model in the absence of previous reco...
Abstract—Software defect prediction strives to improve software quality and testing efficiency by co...
Data science is becoming more important for software engineering problems. Software defect predictio...
Since last decade, due to increasing demand, huge amount of software is being developed, whereas the...
Software defect prediction strives to improve software quality and testing efficiency by constructin...
Abstract: During software development and maintenance, predicting software bugs becomes critical. De...
Software defect prediction (SDP) in the initial period of the software development life cycle (SDLC)...
Open Access: This article is distributed under the terms of the Creative Commons Attribution 4.0 Int...