作者
B Dhanalaxmi, G Apparao Naidu, K Anuradha
发表日期
2016/9
来源
International Journal of Engineering Science Invention
卷号
5
期号
9
页码范围
57-61
简介
Defect prediction models are used to pinpoint risky software modules and understand past pitfalls that lead to defective modules. The predictions and insights that are derived from defect prediction models may not be accurate and reliable if researchers do not consider the impact of experimental components (eg, datasets, metrics, and classifiers) of defect prediction modeling. Therefore, a lack of awareness and practical guidelines from previous research can lead to invalid predictions and unreliable insights. Through case studies of systems that span both proprietary and open-source domains, find that (1) noise in defect datasets;(2) parameter settings of classification techniques; and (3) model validation techniques have a large impact on the predictions and insights of defect prediction models, suggesting that researchers should carefully select experimental components in order to produce more accurate and reliable defect prediction models.
引用总数
201720182019202020211214
学术搜索中的文章
B Dhanalaxmi, GA Naidu, K Anuradha - International Journal of Engineering Science Invention, 2016