Combinations. In Proceedings of the 34th IEEE Annual
Computer Software and Applications Conference
Workshops. Seoul, pp. 98–103. S6*
Idri, A. & Abran, A., 2001. A Fuzzy Logic Based Set of
Measures for Software Project Similarity: Validation
and Possible Improvements. In Proceedings of the
Seventh International Software Metrics Symposium.
London, pp. 85 – 96.
Idri, A., Amazal, F.A. & Abran, A., 2015. Analogy-based
software development effort estimation: A systematic
mapping and review. Information and Software
Technology, 58, pp.206–230.
Idri, A., Khoshgoftaar, T.M. & Abran, A., 2002.
Investigating soft computing in case-based reasoning
for software cost estimation. Engineering Intelligent
Systems for Electrical Engineering and
Communications, 10(3), pp.147–157.
Idri, A., Zahi, A. & Abran, A., 2006. Software Cost
Estimation by Fuzzy Analogy for Web Hypermedia
Applications. In Proceedings of International
Conference on Software Process and Product
Measurement. Cadiz, Spain, pp. 53–62.
Jorgensen, M. & Shepperd, M., 2007. A Systematic Review
of Software Development Cost Estimation Studies.
IEEE Transactions on Software Engineering, 33(1),
pp.33–53.
Kitchenham, B. & Charters, S., 2007. Guidelines for
performing Systematic Literature Reviews in Software
Engineering. Engineering, 2, p.1051.
Kocaguneli, E., Kultur, Y. & Bener, A.B., 2009. Combining
Multiple Learners Induced on Multiple Datasets for
Software Effort Prediction. In Proceedings of
International Symposium on Software Reliability
Engineering. S2*
Kocaguneli, E., Menzies, T. & Keung, J.W., 2012. On the
Value of Ensemble Effort Estimation. IEEE
Transactions on Software Engineering, 38(6),
pp.1403–1416. S9*
Kultur, Y., Turhan, B. & Bener, A., 2009. Ensemble of
neural networks with associative memory (ENNA) for
estimating software development costs. Knowledge-
Based Systems, 22(6), pp.395–402. S3*
Minku, L.L. & Yao, X., 2013a. An analysis of multi-
objective evolutionary algorithms for training ensemble
models based on different performance measures in
software effort estimation. In Proceedings of the 9th
International Conference on Predictive Models in
Software Engineering - PROMISE ’13. pp. 1–10. S13*
Minku, L.L. & Yao, X., 2013b. Ensembles and locality:
Insight on improving software effort estimation.
Information and Software Technology, 55(8), pp.1512–
1528. S11*
Minku, L.L. & Yao, X., 2013c. Software Effort Estimation
As a Multiobjective Learning Problem. ACM
Trans.Softw.Eng.Methodol., 22(4), pp.1–32. S14*
Petersen, K. et al., 2008. Systematic mapping studies in
software engineering. EASE’08 Proceedings of the 12th
international conference on Evaluation and Assessment
in Software Engineering, pp.68–77.
Seni, G. & Elder, J.F., 2010. Ensemble Methods in Data
Mining: Improving Accuracy Through Combining
Predictions,
Shepperd, M.J. & Kadoda, G., 2001. Comparing software
prediction techniques using simulation. IEEE
Transactions on Software Engineering, 27(11),
pp.1014–1022.
Song, L., Minku, L.L. & Yao, X., 2013. The impact of
parameter tuning on software effort estimation using
learning machines. In Proceedings of the 9th
International Conference on Predictive Models in
Software Engineering. S12*
Vinaykumar, M.C.K, Ravi, V., 2009. Software cost
estimation using soft computing approaches. In
Handbook of Research on Machine Learning
Applications and Trends, ed. Handbook of Research on
Machine Learning Applications and Trends. IGI-
global, pp. 499–518. S16*
Wen, J. et al., 2012. Systematic literature review of machine
learning based software development effort estimation
models. Information and Software Technology, 54(1),
pp.41–59.
Wu, D., Li, J. & Liang, Y., 2013. Linear combination of
multiple case-based reasoning with optimized weight
for software effort estimation. The Journal of
Supercomputing, 64(3), pp.898–918. S4*