La maîtrise des incertitudes dans un contexte industriel. 2nde partie : revue des méthodes de modélisation statistique physique et numérique
Journal de la Société française de statistique, Tome 147 (2006) no. 3, pp. 73-106.
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     title = {La ma{\^\i}trise des incertitudes dans un contexte industriel. 2nde partie : revue des m\'ethodes de mod\'elisation statistique physique et num\'erique},
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     pages = {73--106},
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     volume = {147},
     number = {3},
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De Rocquigny, Étienne. La maîtrise des incertitudes dans un contexte industriel. 2nde partie : revue des méthodes de modélisation statistique physique et numérique. Journal de la Société française de statistique, Tome 147 (2006) no. 3, pp. 73-106. http://www.numdam.org/item/JSFS_2006__147_3_73_0/

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