International audienceAs part of the theory of belief functions, we address the problem of ap-praising the similarity between bodies of evidence in a relevant way using metrics. Such metrics are called evidential distances and must be com-puted from mathematical objects depicting the information inside bodies of evidence. Specialization matrices are such objects and, therefore, an evidential distance can be obtained by computing the norm of the differ-ence of these matrices. Any matrix norm can be thus used to define a full metric. In this article, we show that other matrices can be used to obtain new evidential distances. These are the α-specialization and α-generalization matrices and are closely related to the α-junctive combination rule...
An interesting and little explored way to understand data is based on prototype rules (P-rules). The...
International audienceThe Evidential K-Nearest-Neighbor (EK-NN) method provided a global treatment o...
AbstractThe guiding principle underlying most approaches to similarity-based reasoning (SBR) is the ...
International audienceAs part of the theory of belief functions, we address the problem of ap-praisi...
En plus des propriétés métriques et des interactions entre éléments focaux que doivent respecter les...
International audienceThe theory of belief functions (TBF) is now a widespread framework to deal and...
International audienceIn this paper, we focus on measuring the dissimilarity between preferences wit...
In the practice of information extraction, the input data are usually arranged into pattern matrices...
Interval-valued belief structures are generalized from belief function theory, in terms of basic bel...
This paper studies the problem of revising belief-s using uncertain evidence in a framework where be...
International audienceA similarity measure between the focal elements used on a distance function of...
Abstract—We address the problem of the computational difficulties occurring by the heavy processing ...
Abstract—By relative study on distance measure and conflict evidence synthesis of evidence theory, w...
International audienceThe well-known Fuzzy C-Means (FCM) algorithm for data clustering has been exte...
We propose a new class of metrics on sets, vectors, and functions that can be used in various stages...
An interesting and little explored way to understand data is based on prototype rules (P-rules). The...
International audienceThe Evidential K-Nearest-Neighbor (EK-NN) method provided a global treatment o...
AbstractThe guiding principle underlying most approaches to similarity-based reasoning (SBR) is the ...
International audienceAs part of the theory of belief functions, we address the problem of ap-praisi...
En plus des propriétés métriques et des interactions entre éléments focaux que doivent respecter les...
International audienceThe theory of belief functions (TBF) is now a widespread framework to deal and...
International audienceIn this paper, we focus on measuring the dissimilarity between preferences wit...
In the practice of information extraction, the input data are usually arranged into pattern matrices...
Interval-valued belief structures are generalized from belief function theory, in terms of basic bel...
This paper studies the problem of revising belief-s using uncertain evidence in a framework where be...
International audienceA similarity measure between the focal elements used on a distance function of...
Abstract—We address the problem of the computational difficulties occurring by the heavy processing ...
Abstract—By relative study on distance measure and conflict evidence synthesis of evidence theory, w...
International audienceThe well-known Fuzzy C-Means (FCM) algorithm for data clustering has been exte...
We propose a new class of metrics on sets, vectors, and functions that can be used in various stages...
An interesting and little explored way to understand data is based on prototype rules (P-rules). The...
International audienceThe Evidential K-Nearest-Neighbor (EK-NN) method provided a global treatment o...
AbstractThe guiding principle underlying most approaches to similarity-based reasoning (SBR) is the ...