DocumentCode
702859
Title
Measuring defect potentials and minimizing the difficulty of SQA by automated techniques
Author
Rao, H.K.Gundu ; Rao, L.Manjunatha ; Reddy, N.Rajasekhar
Author_Institution
Dept of Computer Science, Vijaya College, R.V. Road, Basavangudi, Bangalore, 560004, India
fYear
2012
fDate
19-20 Oct. 2012
Firstpage
25
Lastpage
30
Abstract
The present paper proposes a Machine learning technique for defect forecasting and handling for SQA called appendage log training and analysis, can be referred as ALTA. The proposed defect forecasting of in-appendage software development logs works is to deal the forecasted defects accurately and spontaneously while developing the software. The present proposed mechanism helps in minimizing the difficulty of SQA. The overall study is conducted on evaluating the proposed model which indicates the defect forecasting in-appendage software development log training and analysis is significant growth to lessen the complexity of Software Quality Assessment.
Keywords
Hybrid software development method; Software Engineering; agile software development methods; conventional software development methods;
fLanguage
English
Publisher
iet
Conference_Titel
Communication and Computing (ARTCom2012), Fourth International Conference on Advances in Recent Technologies in
Conference_Location
Bangalore, India
Type
conf
DOI
10.1049/cp.2012.2487
Filename
7087776
Link To Document