We provide a theoretical investigation of probabilistic belief revision in complex frameworks, under extended conditions of uncertainty, inconsistency and imprecision. We motivate our kinematical approach by specializing our discussion to probabilistic reasoning with graphical models, whose modular representation allows for efficient inference. Most results in this direction are derived from the relevant work of Chan and Darwiche (2005), that first proved the inter-reducibility of virtual and probabilistic evidence. Such forms of information, deeply distinct in their meaning, are extended to the conditional and imprecise frameworks, allowing further generalizations, e.g. to experts' qualitative assessments. Belief aggregation and iterated r...
Probabilistic graphical models constitute a fundamental tool for the development of intelligent sys...
We propose a new model for forming and revising beliefs about unknown probabilities. To go beyond wh...
One way for an agent to deal with uncertainty about its beliefs is to maintain a probability distrib...
AbstractWe revisit the problem of revising probabilistic beliefs using uncertain evidence, and repor...
We summarise and provide pointers to recent advances in inference and identification for specific ty...
This work is part of the larger project INTEGRITY. Integrity develops a conceptual frame integrating...
We revisit the problem of revising probabilistic beliefs using uncertain evidence, and report result...
Bayesian networks and other graphical probabilistic models became a popular framework for reasoning ...
AbstractCausality and belief change play an important role in many applications. This paper focuses ...
This work is part of the larger project INTEGRITY. Integrity develops a conceptual frame integrating...
Updating beliefs to maintain coherence with observational evidence is a cornerstone of rationality. ...
There is a growing interest in the foundations as well as the application of imprecise probability i...
AbstractThis paper presents an overview of graphical models that can handle imprecision in probabili...
The contribution proposes to model imprecise and uncertain reasoning by a mental probability logic t...
The Bayesian perspective is based on conditioning related to reported evidence that is considered to...
Probabilistic graphical models constitute a fundamental tool for the development of intelligent sys...
We propose a new model for forming and revising beliefs about unknown probabilities. To go beyond wh...
One way for an agent to deal with uncertainty about its beliefs is to maintain a probability distrib...
AbstractWe revisit the problem of revising probabilistic beliefs using uncertain evidence, and repor...
We summarise and provide pointers to recent advances in inference and identification for specific ty...
This work is part of the larger project INTEGRITY. Integrity develops a conceptual frame integrating...
We revisit the problem of revising probabilistic beliefs using uncertain evidence, and report result...
Bayesian networks and other graphical probabilistic models became a popular framework for reasoning ...
AbstractCausality and belief change play an important role in many applications. This paper focuses ...
This work is part of the larger project INTEGRITY. Integrity develops a conceptual frame integrating...
Updating beliefs to maintain coherence with observational evidence is a cornerstone of rationality. ...
There is a growing interest in the foundations as well as the application of imprecise probability i...
AbstractThis paper presents an overview of graphical models that can handle imprecision in probabili...
The contribution proposes to model imprecise and uncertain reasoning by a mental probability logic t...
The Bayesian perspective is based on conditioning related to reported evidence that is considered to...
Probabilistic graphical models constitute a fundamental tool for the development of intelligent sys...
We propose a new model for forming and revising beliefs about unknown probabilities. To go beyond wh...
One way for an agent to deal with uncertainty about its beliefs is to maintain a probability distrib...