We present locally complete inference rules for probabilistic deduction from taxonomic and probabilistic knowledge-bases over conjunctive events. Crucially, in contrast to similar inference rules in the literature, our inference rules are locally complete for conjunctive events and under additional taxonomic knowledge. We discover that our inference rules are extremely complex and that it is at first glance not clear at all where the deduced tightest bounds come from. Moreover, analyzing the global completeness of our inference rules, we find examples of globally very incomplete probabilistic deductions. More generally, we even show that all systems of inference rules for taxonomic and probabilistic knowledge-bases over conjunctive events a...
In this paper we consider the inference rules of System P in the framework of coherent imprecise pro...
A probabilistic inference rule is a general rule that provides bounds on a target probability given ...
This paper proposes and investigates an approach to deduction in probabilistic logic, using as its m...
We present locally complete inference rules for probabilistic deduction from taxonomic and probabili...
AbstractWe elaborate locally complete inference rules for probabilistic deduction from taxonomic and...
We elaborate locally complete inference rules for probabilistic deduction from taxonomic and probabi...
We elaborate locally complete inference rules for probabilistic deduction from taxonomic and probabi...
We present a new, efficient linear programming approach to probabilistic deduction from probabilisti...
We present a new, efficient linear programming approach to probabilistic deduction from probabilisti...
We present a new, efficient linear programming approach to probabilistic deduction from probabilisti...
We show that probabilistic deduction with conditional constraints over basic events is NP-hard. We t...
We study the problem of probabilistic deduction with conditional constraints over basic events. We s...
We show that probabilistic deduction with conditional constraints over basic events is NP-hard. We t...
We present an approach where probabilistic logic is combined with default reasoning from conditional...
AbstractWe present an approach where probabilistic logic is combined with default reasoning from con...
In this paper we consider the inference rules of System P in the framework of coherent imprecise pro...
A probabilistic inference rule is a general rule that provides bounds on a target probability given ...
This paper proposes and investigates an approach to deduction in probabilistic logic, using as its m...
We present locally complete inference rules for probabilistic deduction from taxonomic and probabili...
AbstractWe elaborate locally complete inference rules for probabilistic deduction from taxonomic and...
We elaborate locally complete inference rules for probabilistic deduction from taxonomic and probabi...
We elaborate locally complete inference rules for probabilistic deduction from taxonomic and probabi...
We present a new, efficient linear programming approach to probabilistic deduction from probabilisti...
We present a new, efficient linear programming approach to probabilistic deduction from probabilisti...
We present a new, efficient linear programming approach to probabilistic deduction from probabilisti...
We show that probabilistic deduction with conditional constraints over basic events is NP-hard. We t...
We study the problem of probabilistic deduction with conditional constraints over basic events. We s...
We show that probabilistic deduction with conditional constraints over basic events is NP-hard. We t...
We present an approach where probabilistic logic is combined with default reasoning from conditional...
AbstractWe present an approach where probabilistic logic is combined with default reasoning from con...
In this paper we consider the inference rules of System P in the framework of coherent imprecise pro...
A probabilistic inference rule is a general rule that provides bounds on a target probability given ...
This paper proposes and investigates an approach to deduction in probabilistic logic, using as its m...