Representations of uncertainty in artificial intelligence: probability and possibility
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Publication:6602217
DOI10.1007/978-3-030-06164-7_3zbMATH Open1547.68744MaRDI QIDQ6602217
T. Denœux, Henri Prade, D. Dubois
Publication date: 11 September 2024
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Related Items (5)
Uncertainty quantification in logistic regression using random fuzzy sets and belief functions ⋮ Learning from fuzzy labels: theoretical issues and algorithmic solutions ⋮ Synergies between machine learning and reasoning -- an introduction by the Kay R. Amel group ⋮ Aristotelian and Boolean properties of the Keynes-Johnson octagon of opposition ⋮ On trivalent logics, probabilistic weak deduction theorems, and a general import-export principle
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