M. Piera-martinez, Modélisation des comportements extrêmes en ingénierie, 2008.

M. Piera-martinez, E. Vazquez, E. Walter, and G. Fleury, RKHS classification for multivariate extreme-value analysis, Statistics for Data Mining, Learning and Knowledge Extraction, p.7, 2007.

1. C. Chevalier, J. Bect, D. Ginsbourger, Y. Richet, V. Picheny et al., Fast Parallel Kriging-Based Stepwise Uncertainty Reduction With Application to the Identification of an Excursion Set, Technometrics, vol.13, issue.4, pp.455-465, 2014.
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URL : https://hal.archives-ouvertes.fr/hal-00641108

J. Bect, D. Ginsbourger, L. Li, V. Picheny, and E. Vazquez, Sequential design of computer experiments for the estimation of a probability of failure, Statistics and Computing, vol.34, issue.4, pp.773-793, 2012.
DOI : 10.1007/s11222-011-9241-4

URL : https://hal.archives-ouvertes.fr/hal-00689580

E. Vazquez and J. Bect, Convergence properties of the expected improvement algorithm with fixed mean and covariance functions, Journal of Statistical Planning and Inference, vol.140, issue.11, pp.3088-3095, 2010.
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URL : https://hal.archives-ouvertes.fr/hal-00217562

A. Habachi, E. Conil, A. Hadjem, E. Vazquez, M. F. Wong et al., Statistical analysis of whole-body absorption depending on anatomical human characteristics at a frequency of 2.1 GHz, Physics in Medicine and Biology, vol.55, issue.7, p.551875, 2010.
DOI : 10.1088/0031-9155/55/7/006

S. Bilicz, M. Lambert, E. Vazquez, and S. Gyimóthy, Combination of Maximin and Kriging Prediction Methods for Eddy-Current Testing Database Generation, Journal of Physics: Conference Series, vol.255, issue.1, p.12003, 2010.
DOI : 10.1088/1742-6596/255/1/012003

URL : https://hal.archives-ouvertes.fr/hal-00447736

S. Bilicz, M. Lambert, E. Vazquez, and S. Gyimóthy, A new database generation method combining maximin method and kriging prediction for eddy-current testing, Studies in Applied Electromagnetics and Mechanics: Electromagnetic Nondestructive Evaluation (XIII), pp.199-206, 2010.
URL : https://hal.archives-ouvertes.fr/hal-00504952

S. Bilicz, E. Vazquez, S. Gyimóthy, J. Pávó, and M. Lambert, Kriging for Eddy-Current Testing Problems, IEEE Transactions on Magnetics, vol.46, issue.8, pp.463165-3168, 2010.
DOI : 10.1109/TMAG.2010.2043418

URL : https://hal.archives-ouvertes.fr/hal-00505001

S. Bilicz, E. Vazquez, M. Lambert, S. Gyimóthy, and J. Pávó, Characterization of a 3D defect using the expected improvement algorithm, COMPEL - The international journal for computation and mathematics in electrical and electronic engineering, vol.28, issue.4, pp.851-864, 2009.
DOI : 10.1108/03321640910958964

URL : https://hal.archives-ouvertes.fr/hal-01104089

J. Villemonteix, E. Vazquez, M. Sidorkiewicz, and E. Walter, Global optimization of expensive-to-evaluate functions: an empirical comparison of two sampling criteria, Journal of Global Optimization, vol.10, issue.2, pp.373-389, 2009.
DOI : 10.1007/s10898-008-9313-y

URL : https://hal.archives-ouvertes.fr/hal-00354656

J. A. Egea, E. Vazquez, J. R. Banga, and R. Marti, Improved scatter search for the global optimization of computationally expensive dynamic models, Journal of Global Optimization, vol.B, issue.50, pp.175-190, 2009.
DOI : 10.1007/s10898-007-9172-y

URL : https://hal.archives-ouvertes.fr/hal-00259278

E. Vazquez, J. Villemonteix, M. Sidorkiewicz, and E. Walter, Global optimization based on noisy evaluations: An empirical study of two statistical approaches, Journal of Physics: Conference Series, vol.135, issue.1, pp.8-10, 2008.
DOI : 10.1088/1742-6596/135/1/012100

URL : https://hal.archives-ouvertes.fr/hal-00278188

J. Villemonteix, E. Vazquez, and E. Walter, An informational approach to the global optimization of expensive-to-evaluate functions, Journal of Global Optimization, vol.10, issue.5, pp.509-534, 2009.
DOI : 10.1007/s10898-008-9354-2

URL : https://hal.archives-ouvertes.fr/hal-00354262

E. Vazquez, G. Fleury, and E. Walter, Kriging for Indirect Measurement With Application to Flow Measurement, IEEE Transactions on Instrumentation and Measurement, vol.55, issue.1, pp.343-349, 2006.
DOI : 10.1109/TIM.2005.861498

URL : https://hal.archives-ouvertes.fr/hal-00257729

E. Vazquez, E. Walter, and G. Fleury, Intrinsic Kriging and prior information, Applied Stochastic Models in Business and Industry, vol.4, issue.2, pp.215-226, 2005.
DOI : 10.1002/asmb.536

B. Conference-articles, B. H. Dutrieux, I. Aleksovska, J. Bect, F. Bruno et al., Conference articles 1 The informational approach to global optimization in presence of very noisy evaluation results. application to the optimization of renewable energy integration strategies, 47e Journées de Statistique, 2015.

J. Bect, R. Sueur, A. Gérossier, L. Mongellaz, S. Petit et al., Echantillonnage préférentiel et méta-modèles : méthodes bayésiennes optimale et défensive, 47e Journées de Statistique, 2015.

P. Féliot, J. Bect, and E. Vazquez, A Bayesian approach to constrained multi-objective optimization, Learning and Intelligent Optimization ? 9th International Conference, 2015.

J. Bect, N. Bousquet, B. Iooss, S. Liu, A. Mabille et al., Quantification et réduction de l'incertitude concernant les propriétés de monotonie d'un code de calcul coûteux à évaluer, 46e Journées de Statistique, 2014.

B. Jan, J. Bect, E. Vazquez, and P. Lefranc, Approche bayésienne pour l'estimation d'indices de sobol, 45e Journées de Statistique, 2013.

R. Benassi, J. Bect, and E. Vazquez, Bayesian Optimization Using Sequential Monte Carlo, Learning and Intelligent Optimization ? 6th International Conference, pp.339-342, 2012.
DOI : 10.1007/978-3-642-34413-8_24

URL : https://hal.archives-ouvertes.fr/hal-00717195

L. Li, J. Bect, and E. Vazquez, Bayesian Subset Simulation : a kriging-based subset simulation algorithm for the estimation of small probabilities of failure, Proceedings of PSAM 11 & ESREL 2012, 2012.
URL : https://hal.archives-ouvertes.fr/hal-00715316

R. Benassi, J. Bect, and E. Vazquez, Optimisation bayésienne par méthodes SMC, 44e Journées de Statistique, 2012.

L. Li, J. Bect, and E. Vazquez, A numerical comparison of Kriging-based sequential strategies for estimating a probability of failure, 11th International Conference on Applications of Statistics and Probability Civil Engeneering, 2011.
DOI : 10.1201/b11332-97

URL : https://hal.archives-ouvertes.fr/hal-00639430

E. Vazquez and J. Bect, Sequential search based on kriging: convergence analysis of some algorithms, ISI & 58th World Statistics Congress of the International Statistical Institute (ISI'11), 2011.
URL : https://hal.archives-ouvertes.fr/hal-00643159

R. Benassi, J. Bect, and E. Vazquez, Robust Gaussian Process-Based Global Optimization Using a Fully Bayesian Expected Improvement Criterion, Learning and Intelligent Optimization, 5th International Conference, pp.176-190, 2011.
DOI : 10.1002/qre.945

URL : https://hal.archives-ouvertes.fr/hal-00607816

A. Arnaud, J. Bect, M. Couplet, A. Pasanisi, and E. Vazquez, Évaluation d'un risque d'inondation fluviale par planification séquentielle d'expériences, 42e Journées de Statistique, 2010.

E. Vazquez and J. Bect, Pointwise consistency of the kriging predictor with known mean and covariance functions In mODa 9 ? Advances in Model-Oriented Design and Analysis, Proc. of the 9th Int. Workshop in Model-Oriented Design and Analysis, Physica-Verlag, Contributions to Statistics, pp.221-228, 2010.

E. Vazquez and J. Bect, A sequential Bayesian algorithm to estimate a probability of failure, 15th IFAC Symposium on System Identification, SYSID09, p.546, 2009.
DOI : 10.3182/20090706-3-FR-2004.00090

URL : https://hal.archives-ouvertes.fr/hal-00368158

J. Villemonteix, E. Vazquez, and E. Walter, Bayesian optimization for parameter identification on a small simulation budget, 15th IFAC Symposium on System Identification, SYSID09, pp.1603-1608, 2009.
DOI : 10.3182/20090706-3-FR-2004.00266

URL : https://hal.archives-ouvertes.fr/hal-00368152

S. Bilicz, E. Vazquez, J. Pávó, M. Lambert, and S. Gyimóthy, Eddy-current testing with the Expected Improvement optimization algorithm, 15th IFAC Symposium on System Identification , SYSID09, pp.1750-1755, 2009.
DOI : 10.3182/20090706-3-FR-2004.00291

URL : https://hal.archives-ouvertes.fr/hal-00446202

P. Féliot, J. Bect, and E. Vazquez, A Bayesian approach to constrained multi-objective optimization of expensive-to-evaluate functions, Journées annuelles du MASCOT-NUM 2015, 2015.

P. Féliot, J. Bect, and E. Vazquez, A Bayesian subset simulation approach to constrained global optimization of expensive-to-evaluate black-box functions, Conference on Optimization and Practices in Industry : PGMO-COPI'14, 2014.

J. Bect, N. Bousquet, B. Iooss, S. Liu, A. Mabille et al., Uncertainty quantification and reduction for the monotonicity properties of expensive-to-evaluate computer models, Uncertainty in Computer Models 2014 Conference, 2013.
URL : https://hal.archives-ouvertes.fr/hal-01103724

J. Bect and E. Vazquez, Bayes-optimal importance sampling for computer experiments, 7th International Workshop on Simulation, IWS 2013, 2013.
URL : https://hal.archives-ouvertes.fr/hal-00933660

B. Jan, J. Bect, and E. Vazquez, Fully bayesian approach for the estimation of (first-order) Sobol indices, 7th International Conference on Sensitivity Analysis of Model Output, MASCOT-SAMO 2013, 2013.
URL : https://hal.archives-ouvertes.fr/hal-00846727

R. Benassi, J. Bect, and E. Vazquez, Optimisation bayésienne par méthodes SMC, Journées annuelles du GdR MASCOT-NUM 2012, 2012.

N. Fischer, E. Georgin, A. Ismail, E. Vazquez, L. Brusquet et al., A nonparametric model for sensors used in a dynamical context, 7th International Workshop on Analysis of Dynamical Measurements, 2012.

R. Benassi, J. Bect, and E. Vazquez, étude d'un nouveau critère d'optimisation bayésienne, Journées annuelles du GdR MASCOT-NUM 2010, 2010.

L. Li, J. Bect, and E. Vazquez, A numerical comparison of two sequential kriging-based algorithms to estimate a probability of failure, Uncertainty in Computer Model Conference, 2010.
URL : https://hal.archives-ouvertes.fr/hal-00482541

J. Bect, L. Li, and E. Vazquez, Planification séquentielle pour l'estimation de probabilities de défaillance, Atelier Événements rares du GdR MASCOT-NUM, 2010.

A. Habachi, E. Conil, J. Carette, A. Hadjem, E. Vazquez et al., Multidimensional collocation stochastic method to evaluate the whole specific absorption rate for a given population, 32nd Annual Meeting of the Bioelectromagnetics Society 2010, BioEM'10, pp.453-454, 2010.
URL : https://hal.archives-ouvertes.fr/hal-00524214

A. Habachi, E. Conil, A. Hadjem, E. Vazquez, A. Gati et al., Bayesian experiment planning applied to numerical dosimetry, 32nd Annual Meeting of the Bioelectromagnetics Society 2010, BioEM'10, pp.455-456, 2010.
URL : https://hal.archives-ouvertes.fr/hal-00524205

S. Bilicz, E. Vazquez, S. Gyimóthy, J. Pávó, and M. Lambert, Kriging for Eddy-Current Testing Problems, COMPUMAG?17th Conference on the Computation of Electromagnetic Fields, 2009.
DOI : 10.1109/TMAG.2010.2043418

URL : https://hal.archives-ouvertes.fr/hal-00505001

S. Bilicz, E. Vazquez, M. Lambert, S. Gyimóthy, and J. Pávó, The expected improvement global optimization algorithm for the solution of eddy-current testing inverse problems, 14th International Workshop on Electromagnetic Nondestructive Evaluation, 2009.
URL : https://hal.archives-ouvertes.fr/hal-00365339

S. Bilicz, M. Lambert, E. Vazquez, and S. Gyimóthy, A new database generation method combining maximin method and kriging prediction for eddy-curent testing, 14th International Workshop on Electromagnetic Nondestructive Evaluation, 2009.

S. Bilicz, M. Lambert, E. Vazquez, and S. Gyimóthy, Combination of Maximin and Kriging Prediction Methods for Eddy-Current Testing Database Generation, Workshop on Electromagnetic Inverse Problems, 2009.
DOI : 10.1088/1742-6596/255/1/012003

URL : https://hal.archives-ouvertes.fr/hal-00447736

A. Habachi, E. Conil, A. Hadjem, E. Vazquez, G. Fleury et al., Identification of factors influencing the Whole Body Absorption Rate using statistical analysis, Joint meet- References 1. R. A. Adams, Sobolev spaces, 1975.
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