2020
DOI: 10.1007/978-3-030-50143-3_30
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Handling Mixture Optimisation Problem Using Cautious Predictions and Belief Functions

Abstract: Predictions from classification models are most often used as final decisions. Yet, there are situations where the prediction serves as an input for another constrained decision problem. In this paper, we consider such an issue where the classifier provides imprecise and/or uncertain predictions that need to be managed within the decision problem. More precisely, we consider the optimisation of a mix of material pieces of different types in different containers. Information about those pieces is modelled by a … Show more

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References 14 publications
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