We propose a distance measure between two probability distributions, which allows one to bound the amount of belief change that occurs when moving from one distribution to another. We contrast the proposed measure with some well known measures, including KL--divergence, showing some theoretical properties on its ability to bound belief changes. We then present two practical applications of the proposed distance measure: sensitivity analysis in belief networks and probabilistic belief revision. We show how the distance measure can be easily computed in these applications, and then use it to bound global belief changes that result from either the perturbation of local conditional beliefs or the accommodation of soft evidence. Finally, we show...
This paper uses a decision theoretic approach for updating a probability measure representing belief...
International audienceProgram sensitivity, also known as Lipschitz continuity, describes how small c...
The sensitivities revealed by a sensitivity anal-ysis of a probabilistic network typically depend on...
AbstractWe propose a distance measure between two probability distributions, which allows one to bou...
Abstract-The measures of dissimilarity between basic belief assignments (bba’s) in the framework of ...
Interval-valued belief structures are generalized from belief function theory, in terms of basic bel...
We present a general framework for studying heuristics for planning in the belief space. Earlier wo...
This paper studies the problem of revising belief-s using uncertain evidence in a framework where be...
Sensitivity properties describe how changes to the input of a program affect the output, typically b...
Sensitivity properties describe how changes to the input of a program affect the output, typically b...
Dempster–Shafer evidence theory (D–S theory) is suitable for processing uncertain information under ...
Inferring and comparing complex, multivariable probability density functions is fundamental to probl...
Probabilistic belief contraction has been a much neglected topic in the field of probabilistic reaso...
The assessments for the various conditional probabilities of a Bayesian belief network inevitably ar...
An acknowledged interpretation of possibility distributions in quantitative possibility theory is in...
This paper uses a decision theoretic approach for updating a probability measure representing belief...
International audienceProgram sensitivity, also known as Lipschitz continuity, describes how small c...
The sensitivities revealed by a sensitivity anal-ysis of a probabilistic network typically depend on...
AbstractWe propose a distance measure between two probability distributions, which allows one to bou...
Abstract-The measures of dissimilarity between basic belief assignments (bba’s) in the framework of ...
Interval-valued belief structures are generalized from belief function theory, in terms of basic bel...
We present a general framework for studying heuristics for planning in the belief space. Earlier wo...
This paper studies the problem of revising belief-s using uncertain evidence in a framework where be...
Sensitivity properties describe how changes to the input of a program affect the output, typically b...
Sensitivity properties describe how changes to the input of a program affect the output, typically b...
Dempster–Shafer evidence theory (D–S theory) is suitable for processing uncertain information under ...
Inferring and comparing complex, multivariable probability density functions is fundamental to probl...
Probabilistic belief contraction has been a much neglected topic in the field of probabilistic reaso...
The assessments for the various conditional probabilities of a Bayesian belief network inevitably ar...
An acknowledged interpretation of possibility distributions in quantitative possibility theory is in...
This paper uses a decision theoretic approach for updating a probability measure representing belief...
International audienceProgram sensitivity, also known as Lipschitz continuity, describes how small c...
The sensitivities revealed by a sensitivity anal-ysis of a probabilistic network typically depend on...