DOI: 10.33915/etd.6410
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LACE: Supporting Privacy-Preserving Data Sharing in Transfer Defect Learning

Abstract: LACE: Supporting Privacy-Preserving Data Sharing in Transfer Defect Learning Cross Project Defect Prediction (CPDP) is a field of study where an organization lacking enough local data can use data from other organizations or projects for building defect predictors. Research in CPDP has shown challenges in using "other" data, therefore transfer defect learning has emerged to improve on the quality of CPDP results. With this new found success in CPDP, it is now increasingly important to focus on the privacy conc… Show more

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