In this paper, the research and experimental analysis of cross-project application software defect prediction is carried out, and the TCA model is used to improve the application function of its prediction. The models pointed out in this paper usually include: normalization processing model and mathematical linear kernel mathematical statistics The difference between the functional SVM classifier and the extended migration component analysis TCA+ model is that the model pointed out in this paper not only satisfies the prediction of software defects within the project suitable for TCA, but also meets the prediction of software defects in the cross-project of TCA+, so the most appropriate normalization can be selected. Optimized processing options to improve cross-project software defect prediction capabilities.
Qing HeBiwen LiBeijun ShenYong Xia
Tianwei LeiJingfeng XueWeijie Han
Chao NiWangshu LiuXiang ChenQing GuDaoxu ChenQiguo Huang
Ahmed AbduZhengjun ZhaiHakim A. AbdoRedhwan AlgabriSungon Lee