M. A. Ahmed and Z. Muzaffar, Handling imprecision and uncertainty in software development effort prediction: A type-2 fuzzy logic based framework, formation and Software Technology, vol.51, pp.640-654, 2009.

L. Angelis and I. Stamelos, A simulation tool for efficient analogy based cost estimation, Empirical software engineering, vol.5, issue.1, pp.35-68, 2000.

S. Basha and D. Ponnurangam, Analysis of Empirical Software Effort Estimation Models, vol.7, pp.68-77, 2010.

B. Boehm, Software Cost Estimation with Cocomo II, 2000.

G. Boetticher, An assessment of metric contribution in the construction of a neural network-based effort estimator, Second International Workshop on Soft Computing Applied to Software Engineering, 2001.

V. S. Dave and K. Dutta, Neural network based models for software effort estimation: a review, Artificial Intelligence Review, vol.42, pp.295-307, 2012.

B. Efron and R. J. Tibshirani, An Introduction to the Bootstrap, 1994.

S. Garavaglia and A. Sharma, A smart guide to dummy variables: four applications and a macro, Proceedings of the Northeast SAS Users Group Conference, 1998.

S. S. Haykin, Neural Networks: A Comprehensive Foundation, 1999.

S. J. Huang and W. M. Han, Exploring the relationship between software project duration and risk exposure: A cluster analysis, Information & Management, vol.45, issue.3, pp.175-182, 2008.

A. Idri, A. Zakrani, and A. Zahi, Design of radial basis function neural networks for software effort estimation, IJCSI International Journal of Computer Science Issues, vol.7, issue.4, pp.11-17, 2010.

M. Jorgensen, A review of studies on expert estimation of software development effort, Journal of Systems and Software, vol.70, issue.1, pp.37-60, 2004.

M. Jorgensen and D. I. Sjoeberg, An effort prediction interval approach based on the empirical distribution of previous estimation accuracy, Information and Software Technology, vol.45, issue.3, pp.123-136, 2003.

M. Jorgensen, K. H. Teigen, and K. Molkken, Better sure than safe? Over-confidence in judgement based software development effort prediction intervals, Journal of Systems and Software, vol.70, issue.1-2, pp.79-93, 2004.

B. Karlik and A. V. Olgac, Performance analysis of various activation functions in generalized MLP architectures of neural networks, International Journal of Artificial Intelligence and Expert Systems, vol.1, issue.4, pp.111-122, 2011.

B. Kitchenham and S. Linkman, Estimates, uncertainty, and risk, IEEE Software, vol.14, issue.3, pp.69-74, 1997.

M. Klas, A. Trendowicz, Y. Ishigai, and H. Nakao, Handling estimation uncertainty with boot-INCOM, 2011.

, Ottawa, Canada strapping: Empirical evaluation in the context of hybrid prediction methods, Empirical Software Engineering and Measurement (ESEM), 2011 International Symposium on, pp.245-254, 2015.

S. Laqrichi, F. Marmier, and D. Gourc, Toward an effort estimation model for information system project integrating risk, Proc. 22nd International Conference on Production Research (ICPR22), 2013.

A. Lee, C. H. Cheng, and J. Balakrishnan, Software development cost estimation: Integrating neural network with cluster analysis. Information & Management, vol.34, pp.1-9, 1998.

F. Marmier, D. Gourc, and F. Laarz, A risk oriented model to assess strategic decisions in new product development projects. Decision Support Systems, vol.56, pp.74-82, 2013.
URL : https://hal.archives-ouvertes.fr/hal-00827046

N. Mittas and L. Angelis, Bootstrap Confidence Intervals for Regression Error Characteristic Curves Evaluating the Prediction Error of Software Cost Estimation Models, AIAI Workshops, pp.221-230, 2009.

K. Molokken and M. Jorgensen, A review of software surveys on software effort estimation, International Symposium on Empirical Software Engineering (ISESE), pp.223-230, 2003.

C. Z. Mooney, , 1997.

, Monte Carlo Simulation

O. Morgenshtern, T. Raz, and D. Dvir, Factors affecting duration and effort estimation errors in software development projects, Information and Software Technology, vol.49, issue.8, pp.827-837, 2007.

G. Papadopoulos, P. Edwards, M. , and A. , Confidence estimation methods for neural networks: a practical comparison, IEEE Transactions on Neural Networks, vol.12, issue.6, pp.1278-1287, 2001.

H. Park and S. Baek, An empirical validation of a neural network model for software effort estimation, Expert Systems with Applications, vol.35, issue.3, pp.929-937, 2008.

P. Refaeilzadeh, L. Tang, and H. Liu, CrossValidation, Encyclopedia of Database Systems, pp.532-538, 2009.

F. Rosenblatt, Principles of neurodynamics: perceptrons and the theory of brain mechanisms, 1962.

R. Setiono, K. Dejaeger, W. Verbeke, D. Martens, and B. Baesens, Software Effort Prediction Using Regression Rule Extraction from Neural Networks, pp.45-52, 2010.

M. Shepperd, C. Schofield, and B. Kitchenham, Effort estimation using analogy, Proceedings of the 18th international conference on Software engineering, pp.170-178, 1996.

K. Srinivasan and D. Fisher, Machine learning approaches to estimating software development effort, IEEE Transactions on Software Engineering, vol.21, issue.2, pp.126-137, 1995.

M. K. Tiwari and C. Chatterjee, Uncertainty assessment and ensemble flood forecasting using bootstrap based artificial neural networks (BANNs), Journal of Hydrology, vol.382, issue.14, pp.20-33, 2010.

S. Trenn, Multilayer perceptrons: approximation order and necessary number of hidden units, IEEE transactions on neural networks, vol.19, issue.5, pp.836-844, 2008.