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of Organizational Structure on Software Quality:An surveys.In annual meeting of the Florida Association Empirical Case Study.In Proceedings of the 30th of Institutional Research,pages 1-33,2006. International Conference on Software Engineering, [36 D.J.Sheskin.Handbook of Parametric and ICSE '08,pages 521-530,New York,NY,USA,2008. Nonparametric Statistical Procedures:Third Edition ACM. CRC Press,Aug.2003. [30]R.Ott and M.Longnecker.An Introduction to [37 S.Wasserman and K.Faust.Social Network Analysis: Statistical Methods and Data Analysis.Cengage Methods and Applications.Cambridge University Press Learning,Dec.2008. Now.1994. [31]T.D.Oyetoyan,D.S.Cruzes,and R.Conradi.A study [38 Y.Yang,Y.Zhou,H.Lu,L.Chen,Z.Chen,B.Xu, of cyclic dependencies on defect profile of software H.Leung,and Z.Zhang.Are Slice-Based Cohesion components.Journal of Systems and Software, Metrics Actually Useful in Effort-Aware Post-Release 86(12):3162-3182,Dec.2013. Fault-Proneness Prediction?An Empirical Study. 32]M.Pinzger,N.Nagappan,and B.Murphy.Can IEEE Transactions on Software Engineering, Developer-module Networks Predict Failures?In 41(4):331-357,Apr.2015. Proceedings of the 16th ACM SIGSOFT International [39]Y.Zhou,H.Leung,and B.Xu.Examining the Symposium on Foundations of Software Engineering, Potentially Confounding Effect of Class Size on the SIGSOFT'08/FSE-16,pages 2-12,New York,NY, Associations between Object-Oriented Metrics and USA.2008.ACM. Change-Proneness.IEEE Transactions on Software 33 F.Rahman and P.Devanbu.How,and Why,Process Engineering,35(5):607-623.2009. Metrics Are Better.In Proceedings of the 2013 [40]Y.Zhou,B.Xu,H.Leung,and L.Chen.An In-depth International Conference on Software Engineering. Study of the Potentially Confounding Effect of Class ICSE'13,pages 432-441,Piscataway,NJ,USA,2013. Size in Fault Prediction.ACM Trans.Softw.Eng. IEEE Press. Methodol.,23(1):10:1-10:51,Feb.2014. [34]F.Rahman,D.Posnett,and P.Devanbu.Recalling the [41 T.Zimmermann and N.Nagappan.Predicting Defects "Imprecision"of Cross-project Defect Prediction.In Using Network Analysis on Dependency Graphs.In Proceedings of the ACM SIGSOFT 20th International Proceedings of the 30th International Conference on Symposium on the Foundations of Software Software Engineering,ICSE'08,pages 531-540,New Engineering,FSE'12,pages 61:1-61:11,New York,NY, York,NY,USA,2008.ACM. USA.2012.ACM. [42]T.Zimmermann,R.Premraj,and A.Zeller.Predicting [35]J.Romano,J.D.Kromrey,J.Coraggio,and Defects for Eclipse.In Proceedings of the Third J.Skowronek.Appropriate statistics for ordinal level International Workshop on Predictor Models in data:Should we really be using t-test and cohen's d for Software Engineering,PROMISE '07,pages 9-, evaluating group differences on the nsse and other Washington,DC,USA,2007.IEEE Computer Society 307of Organizational Structure on Software Quality: An Empirical Case Study. In Proceedings of the 30th International Conference on Software Engineering, ICSE ’08, pages 521–530, New York, NY, USA, 2008. ACM. [30] R. Ott and M. Longnecker. An Introduction to Statistical Methods and Data Analysis. Cengage Learning, Dec. 2008. [31] T. D. Oyetoyan, D. S. Cruzes, and R. Conradi. A study of cyclic dependencies on defect profile of software components. Journal of Systems and Software, 86(12):3162–3182, Dec. 2013. [32] M. Pinzger, N. Nagappan, and B. Murphy. Can Developer-module Networks Predict Failures? In Proceedings of the 16th ACM SIGSOFT International Symposium on Foundations of Software Engineering, SIGSOFT ’08/FSE-16, pages 2–12, New York, NY, USA, 2008. ACM. [33] F. Rahman and P. Devanbu. How, and Why, Process Metrics Are Better. In Proceedings of the 2013 International Conference on Software Engineering, ICSE ’13, pages 432–441, Piscataway, NJ, USA, 2013. IEEE Press. [34] F. Rahman, D. Posnett, and P. Devanbu. Recalling the ”Imprecision” of Cross-project Defect Prediction. In Proceedings of the ACM SIGSOFT 20th International Symposium on the Foundations of Software Engineering, FSE ’12, pages 61:1–61:11, New York, NY, USA, 2012. ACM. [35] J. Romano, J. D. Kromrey, J. Coraggio, and J. Skowronek. Appropriate statistics for ordinal level data: Should we really be using t-test and cohen’s d for evaluating group differences on the nsse and other surveys. In annual meeting of the Florida Association of Institutional Research, pages 1–33, 2006. [36] D. J. Sheskin. Handbook of Parametric and Nonparametric Statistical Procedures: Third Edition. CRC Press, Aug. 2003. [37] S. Wasserman and K. Faust. Social Network Analysis: Methods and Applications. Cambridge University Press, Nov. 1994. [38] Y. Yang, Y. Zhou, H. Lu, L. Chen, Z. Chen, B. Xu, H. Leung, and Z. Zhang. Are Slice-Based Cohesion Metrics Actually Useful in Effort-Aware Post-Release Fault-Proneness Prediction? An Empirical Study. IEEE Transactions on Software Engineering, 41(4):331–357, Apr. 2015. [39] Y. Zhou, H. Leung, and B. Xu. Examining the Potentially Confounding Effect of Class Size on the Associations between Object-Oriented Metrics and Change-Proneness. IEEE Transactions on Software Engineering, 35(5):607–623, 2009. [40] Y. Zhou, B. Xu, H. Leung, and L. Chen. An In-depth Study of the Potentially Confounding Effect of Class Size in Fault Prediction. ACM Trans. Softw. Eng. Methodol., 23(1):10:1–10:51, Feb. 2014. [41] T. Zimmermann and N. Nagappan. Predicting Defects Using Network Analysis on Dependency Graphs. In Proceedings of the 30th International Conference on Software Engineering, ICSE ’08, pages 531–540, New York, NY, USA, 2008. ACM. [42] T. Zimmermann, R. Premraj, and A. Zeller. Predicting Defects for Eclipse. In Proceedings of the Third International Workshop on Predictor Models in Software Engineering, PROMISE ’07, pages 9–, Washington, DC, USA, 2007. IEEE Computer Society. 307
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