AbstractIn general, combining Dempster-Shafer belief functions over a frame of n elements is a problem with exponential time complexity in n. This is a consequence of an exponential number of focal elements being generated when the focal elements of the belief functions being combined intersect. In order to avoid this undesirable behavior, we must impose some special structure on the focal sets. Our approach is to work with families of subsets that are closed under intersection. Hence, we present four polynomial time algorithms for combining some particular types of belief functions. In the first case, the case of Bayesian belief functions, we exploit the result that if any belief function is Bayesian, then the resulting belief function is ...
One of the main obstacles to the applications of Dempster-Shafer formalism is its computational comp...
The runtime of the usual algorithms computing the transformation of a basic belief assignment into i...
AbstractGaussian belief functions represent logical and probabilistic knowledge for mixed variables,...
AbstractIn general, combining Dempster-Shafer belief functions over a frame of n elements is a probl...
AbstractA method is proposed for reducing the size of a frame of discernment, in such a way that the...
AbstractThe cornerstone of Dempster-Shafer therory is Dempster's rule and to use the theory it is es...
AbstractThis paper proposes a new approximation method for Dempster–Shafer belief functions. The met...
The subject of this thesis is belief function theory and its application in different contexts. Beli...
An often mentioned obstacle for the use of Dempster-Shafer theory for the handling of uncertainty i...
The subject of this thesis is belief function theory and its application in different contexts. Beli...
In this paper we build on previous work on the geometry of Dempster’s rule to investigate the geomet...
AbstractThis article is concerned with the computational aspects of combining evidence within the th...
It is commonly acknowledged that we need to accept and handle uncertainty when reasoning with real w...
AbstractA Gaussian belief function can be intuitively described as a Gaussian distribution over a hy...
International audienceDempster-Shafer Theory (DST) generalizes Bayesian probability theory, offering...
One of the main obstacles to the applications of Dempster-Shafer formalism is its computational comp...
The runtime of the usual algorithms computing the transformation of a basic belief assignment into i...
AbstractGaussian belief functions represent logical and probabilistic knowledge for mixed variables,...
AbstractIn general, combining Dempster-Shafer belief functions over a frame of n elements is a probl...
AbstractA method is proposed for reducing the size of a frame of discernment, in such a way that the...
AbstractThe cornerstone of Dempster-Shafer therory is Dempster's rule and to use the theory it is es...
AbstractThis paper proposes a new approximation method for Dempster–Shafer belief functions. The met...
The subject of this thesis is belief function theory and its application in different contexts. Beli...
An often mentioned obstacle for the use of Dempster-Shafer theory for the handling of uncertainty i...
The subject of this thesis is belief function theory and its application in different contexts. Beli...
In this paper we build on previous work on the geometry of Dempster’s rule to investigate the geomet...
AbstractThis article is concerned with the computational aspects of combining evidence within the th...
It is commonly acknowledged that we need to accept and handle uncertainty when reasoning with real w...
AbstractA Gaussian belief function can be intuitively described as a Gaussian distribution over a hy...
International audienceDempster-Shafer Theory (DST) generalizes Bayesian probability theory, offering...
One of the main obstacles to the applications of Dempster-Shafer formalism is its computational comp...
The runtime of the usual algorithms computing the transformation of a basic belief assignment into i...
AbstractGaussian belief functions represent logical and probabilistic knowledge for mixed variables,...