We summarise and provide pointers to recent advances in inference and identification for specific types of probabilistic graphical models using imprecise probabilities. Robust inferences can be made in so-called credal networks when the local models attached to their nodes are imprecisely specified as conditional lower previsions, by using exact algorithms whose complexity is comparable to that for the precise-probabilistic counterparts
Abstract Credal networks enhance robustness and modelling power of Bayesian networks by allowing for...
We present a new approach to credal networks, which are graphical models that generalise Bayesian ne...
This paper investigates a representation language with flexibility inspired by probabilistic logic a...
We summarise and provide pointers to recent advances in inference and identification for specific ty...
AbstractThis paper presents an overview of graphical models that can handle imprecision in probabili...
Credal networks are graph-based statistical models whose parameters take values in a set, instead of...
\u3cp\u3eCredal networks are graph-based statistical models whose parameters take values in a set, i...
This report 1 presents probabilistic graphical models that are based on imprecise probabilities usin...
This report1 presents probabilistic graphical models that are based on imprecise probabilities using...
We replace strong independence in credal networks with the weaker notion of epistemic irrelevance. F...
Probabilistic graphical models constitute a fundamental tool for the development of intelligent sys...
AbstractThis paper presents a complete theory of credal networks, structures that associate convex s...
AbstractWe focus on credal nets, which are graphical models that generalise Bayesian nets to impreci...
A credal network under epistemic irrelevance is a generalised version of a Bayesian network that loo...
We provide a theoretical investigation of probabilistic belief revision in complex frameworks, under...
Abstract Credal networks enhance robustness and modelling power of Bayesian networks by allowing for...
We present a new approach to credal networks, which are graphical models that generalise Bayesian ne...
This paper investigates a representation language with flexibility inspired by probabilistic logic a...
We summarise and provide pointers to recent advances in inference and identification for specific ty...
AbstractThis paper presents an overview of graphical models that can handle imprecision in probabili...
Credal networks are graph-based statistical models whose parameters take values in a set, instead of...
\u3cp\u3eCredal networks are graph-based statistical models whose parameters take values in a set, i...
This report 1 presents probabilistic graphical models that are based on imprecise probabilities usin...
This report1 presents probabilistic graphical models that are based on imprecise probabilities using...
We replace strong independence in credal networks with the weaker notion of epistemic irrelevance. F...
Probabilistic graphical models constitute a fundamental tool for the development of intelligent sys...
AbstractThis paper presents a complete theory of credal networks, structures that associate convex s...
AbstractWe focus on credal nets, which are graphical models that generalise Bayesian nets to impreci...
A credal network under epistemic irrelevance is a generalised version of a Bayesian network that loo...
We provide a theoretical investigation of probabilistic belief revision in complex frameworks, under...
Abstract Credal networks enhance robustness and modelling power of Bayesian networks by allowing for...
We present a new approach to credal networks, which are graphical models that generalise Bayesian ne...
This paper investigates a representation language with flexibility inspired by probabilistic logic a...