期刊名称:Journal of International Technology and Information Management
印刷版ISSN:1941-6679
出版年度:2007
卷号:16
期号:3
页码:6
出版社:California State University, San Bernardino
摘要:Discovering patterns that indicate software reliability provides valuable information to software project managers. Software Quality Classification (SQC) modeling is a methodology that can be used to discover reliability patterns of large software projects. However, the patterns found by SQC modeling may not be accurate and robust owing to insufficient information used in the training process. This study compares two genetic programming-based SQC models using different volumes of data. These data were extracted from seven different NASA software projects. The results demonstrate that combining data from different projects can produce more accurate and reliable patterns.