Heterogeneous Defect Prediction

@article{Nam2015HeterogeneousDP,
  title={Heterogeneous Defect Prediction},
  author={Jaechang Nam and Wei Fu and Sunghun Kim and Tim Menzies and Lin Tan},
  journal={IEEE Transactions on Software Engineering},
  year={2015},
  volume={44},
  pages={874-896}
}
Software defect prediction is one of the most active research areas in software engineering. We can build a prediction model with defect data collected from a software project and predict defects in the same project, i.e. within-project defect prediction (WPDP). Researchers also proposed cross-project defect prediction (CPDP) to predict defects for new projects lacking in defect data by using prediction models built by other projects. In recent studies, CPDP is proved to be feasible. However… CONTINUE READING

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