Abstract
AbstractAggregation operators are unvaluable tools when different pieces of information have to be taken into account with respect to the same object. They allow to obtain a unique outcome when different evaluations are available for the same element/object. In this contribution we assume that the opinions are not given in form of isolated values, but intervals. We depart from two “classical” aggregation functions and define a new operator for aggregating intervals based on the two original operators. We study under what circumstances this new function is well defined and we provide a general characterization for monotonicity. We also study the behaviour of this operator when the departing functions are the most common aggregation operators. We also provide an illustrative example demonstrating the practical application of the theoretical contribution to ensemble deep learning models.
Funder
Spanish Ministry of Science and Innovation
Ministerio de Educación y Formación Profesional
Key Laboratory of Engineering Dielectrics and Its Application (Harbin University of Science and Technology), Ministry of Education
Universidad de Oviedo
Publisher
Springer Science and Business Media LLC
Subject
Applied Mathematics,Computational Mathematics
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