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S. Das, R. Ghanem, and S. Finette, Polynomial chaos representation of spatio-temporal random fields from experimental measurements, Journal of Computational Physics, vol.228, issue.23, pp.8726-8751, 2009.
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S. Das, R. Ghanem, and J. Spall, Asymptotic Sampling Distribution for Polynomial Chaos Representation from Data: A Maximum Entropy and Fisher Information Approach, SIAM Journal on Scientific Computing, vol.30, issue.5, pp.2207-2234, 2008.
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C. Desceliers, R. Ghanem, and C. Soize, Maximum likelihood estimation of stochastic chaos representations from experimental data, International Journal for Numerical Methods in Engineering, vol.11, issue.6, pp.978-1001, 2006.
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C. Desceliers, C. Soize, and R. Ghanem, Identification of chaos representations of elastic properties of random media using experimental vibration tests, Computational Mechanics, pp.831-838, 2007.

B. Ganapathysubramanian and N. Zabaras, Sparse grid collocation schemes for stochastic natural convection problems, Journal of Computational Physics, vol.225, issue.1, pp.652-685, 2007.
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R. Ghanem, R. Doostan, and J. Red-horse, A probability construction of model validation, Computer Methods in Applied Mechanics and Engineering, vol.197, pp.29-32, 2008.

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D. Ghosh and C. Farhat, Strain and stress computations in stochastic finite element methods, International Journal for Numerical Methods in Engineering, vol.12, issue.8, pp.1219-1239, 2008.
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D. Ghosh and R. Ghanem, Stochastic convergence acceleration through basis enrichment of polynomial chaos expansions, International Journal for Numerical Methods in Engineering, vol.28, issue.2, pp.162-184, 2008.
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J. Guilleminot, C. Soize, D. Kondo, and C. Benetruy, Theoretical framework and experimental procedure for modelling mesoscopic volume fraction stochastic fluctuations in fiber reinforced composites, International Journal of Solids and Structures, vol.45, issue.21, pp.5567-5583, 2008.
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O. P. Le-maitre and O. M. Knio, Spectral Methods for Uncerainty Quantification with Applications to Computational Fluid Dynamics, 2010.

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O. P. Le-maitre, H. Najm, R. Ghanem, and O. Knio, Multi-resolution analysis of Wiener-type uncertainty propagation schemes, Journal of Computational Physics, vol.197, issue.2, pp.502-531, 2004.
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O. P. Le-maitre, O. Knio, H. Najm, and R. Ghanem, Uncertainty propagation using Wiener???Haar expansions, Journal of Computational Physics, vol.197, issue.1, pp.28-57, 2004.
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D. Lucor, C. H. Su, and G. E. Karniadakis, Generalized polynomial chaos and random oscillators, International Journal for Numerical Methods in Engineering, vol.60, issue.3, pp.571-596, 2004.
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