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A Retrospective Study of Software Analytics Projects: In-Depth Interviews with Practitioners.

, , , and . IEEE Softw., 30 (5): 54-61 (2013)

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Empirical evaluation of the effects of mixed project data on learning defect predictors, , and . Information and Software Technology, 55 (6): 1101 - 1118 (2013)A survey on project factors that motivate Finnish software engineers., , , and . RCIS, page 1-9. IEEE, (2014)Field Studies - A Methodology for Construction and Evaluation of Recommendation Systems in Software Engineering, , , , and . Recommendation Systems in Software Engineering, Springer Berlin Heidelberg, (2014)Towards an operationalization of test-driven development skills: An industrial empirical study, , , , , and . Information and Software Technology, (2015)A Retrospective Study of Software Analytics Projects: In-Depth Interviews with Practitioners, , , and . IEEE SOFTWARE, 30 (5): 54--61 (2013)Dione: an integrated measurement and defect prediction solution, , , , , and . 20th ACM SIGSOFT Symposium on the Foundations of Software Engineering (FSE-20), SIGSOFT/FSE'12, Cary, NC, USA - November 11 - 16, 2012, page 20. (2012)Factors characterizing reopened issues: a case study, , , , and . Proceedings of the 8th International Conference on Predictive Models in Software Engineering, PROMISE '12, Lund, Sweden, September 21-22, 2012, page 1--10. (2012)Dione: an integrated measurement and defect prediction solution., , , , , and . SIGSOFT FSE, page 20. ACM, (2012)Field Studies - A Methodology for Construction and Evaluation of Recommendation Systems in Software Engineering., , , , and . Recommendation Systems in Software Engineering, Springer, (2014)A mapping study on bayesian networks for software quality prediction., and . RAISE, page 7-11. ACM, (2014)