The subject of this thesis is belief function theory and its application in different contexts. Belief function theory can be interpreted as a generalization of Bayesian probability theory and makes it possible to distinguish between different types of uncertainty. In this thesis, applications of belief function theory are explored both on a theoretical and on an algorithmic level. The problem of exponential complexity associated with belief function inference is addressed in this thesis by showing how efficient algorithms can be developed based on Monte-Carlo approximations and exploitation of independence. The effectiveness of these algorithms is demonstrated in applications to particle filtering, simultaneous localization and mapping, an...
International audienceRough set theory and belief function theory, two popular mathematical framewor...
AbstractGaussian belief functions represent logical and probabilistic knowledge for mixed variables,...
The Transferable Belief Model is a subjectivist model of uncertainty in which an agent’s beliefs at ...
The subject of this thesis is belief function theory and its application in different contexts. Beli...
AbstractThe theory of belief functions is a generalization of the Bayesian theory of subjective prob...
This paper introduces and investigates Depth-bounded Belief functions, a logic-based representation ...
Abstract – In a lot of operational situations, we have to deal with uncertain and inaccurate informa...
An often mentioned obstacle for the use of Dempster-Shafer theory for the handling of uncertainty i...
International audienceWe outline an approach to statistical inference based on belief functions. For...
The research reported in this thesis focuses on approximation techniques for inference in graphical ...
A belief function can be viewed as a generalized probability function and the belief and plausibilit...
In Shafer evidence theory some belief functions, called separable belief functions, can be decompose...
Over the time in computational history, belief networks have become an increasingly popular mechanis...
This thesis presents a means for representing and computing beliefs in the form of arbitrary probabi...
: Belief functions are mathematical objects defined to satisfy three axioms that look somewhat simil...
International audienceRough set theory and belief function theory, two popular mathematical framewor...
AbstractGaussian belief functions represent logical and probabilistic knowledge for mixed variables,...
The Transferable Belief Model is a subjectivist model of uncertainty in which an agent’s beliefs at ...
The subject of this thesis is belief function theory and its application in different contexts. Beli...
AbstractThe theory of belief functions is a generalization of the Bayesian theory of subjective prob...
This paper introduces and investigates Depth-bounded Belief functions, a logic-based representation ...
Abstract – In a lot of operational situations, we have to deal with uncertain and inaccurate informa...
An often mentioned obstacle for the use of Dempster-Shafer theory for the handling of uncertainty i...
International audienceWe outline an approach to statistical inference based on belief functions. For...
The research reported in this thesis focuses on approximation techniques for inference in graphical ...
A belief function can be viewed as a generalized probability function and the belief and plausibilit...
In Shafer evidence theory some belief functions, called separable belief functions, can be decompose...
Over the time in computational history, belief networks have become an increasingly popular mechanis...
This thesis presents a means for representing and computing beliefs in the form of arbitrary probabi...
: Belief functions are mathematical objects defined to satisfy three axioms that look somewhat simil...
International audienceRough set theory and belief function theory, two popular mathematical framewor...
AbstractGaussian belief functions represent logical and probabilistic knowledge for mixed variables,...
The Transferable Belief Model is a subjectivist model of uncertainty in which an agent’s beliefs at ...