We study probabilistic logic under the viewpoint of the coherence principle of de Finetti. In detail, we explore the relationship between coherence-based and classical modeltheoretic probabilistic logic. Interestingly, we show that the notions of g-coherence and of g-coherent entailment can be expressed by combining notions in model-theoretic probabilistic logic with concepts from default reasoning. Using these results, we analyze the computational complexity of probabilistic reasoning under coherence. Moreover, we present new algorithms for deciding g-coherence and for computing tight g-coherent intervals, which reduce these tasks to standard reasoning tasks in model-theoretic probabilistic logic. Thus, efficient techniques for model-theor...
AbstractIn this paper, we consider coherent imprecise probability assessments on finite families of ...
In this paper, we consider coherent imprecise probability assessments on finite families of conditio...
We illustrate an approach to uncertain knowledge based on lower conditional probability bounds. We e...
We study probabilistic logic under the viewpoint of the coherence principle of de Finetti. In detail...
We study probabilistic logic under the viewpoint of the coherence principle of de Finetti. In detail...
We study probabilistic logic under the viewpoint of the coherence principle of de Finetti. In detail...
We study probabilistic logic under the viewpoint of the coherence principle of de Finetti. In detail...
We study probabilistic logic under the viewpoint of the coherence principle of de Finetti. In detail...
We study a probabilistic logic based on the coherence principle of de Finetti and a related notion o...
Based on the coherence principle of de Finetti and a related notion of generalized coherence (g-cohe...
Based on the coherence principle of de Finetti and a related notion of generalized coherence (g-cohe...
In this paper we apply a probabilistic reasoning under coherence to System P.We consider a notion of...
In this paper, we propose some algorithms for the checking of generalized coherence (g-coherence) an...
Recently, it has been shown that probabilistic entailment under coherence is weaker than model-theor...
Recently, it has been shown that probabilistic entailment under coherence is weaker than model-theor...
AbstractIn this paper, we consider coherent imprecise probability assessments on finite families of ...
In this paper, we consider coherent imprecise probability assessments on finite families of conditio...
We illustrate an approach to uncertain knowledge based on lower conditional probability bounds. We e...
We study probabilistic logic under the viewpoint of the coherence principle of de Finetti. In detail...
We study probabilistic logic under the viewpoint of the coherence principle of de Finetti. In detail...
We study probabilistic logic under the viewpoint of the coherence principle of de Finetti. In detail...
We study probabilistic logic under the viewpoint of the coherence principle of de Finetti. In detail...
We study probabilistic logic under the viewpoint of the coherence principle of de Finetti. In detail...
We study a probabilistic logic based on the coherence principle of de Finetti and a related notion o...
Based on the coherence principle of de Finetti and a related notion of generalized coherence (g-cohe...
Based on the coherence principle of de Finetti and a related notion of generalized coherence (g-cohe...
In this paper we apply a probabilistic reasoning under coherence to System P.We consider a notion of...
In this paper, we propose some algorithms for the checking of generalized coherence (g-coherence) an...
Recently, it has been shown that probabilistic entailment under coherence is weaker than model-theor...
Recently, it has been shown that probabilistic entailment under coherence is weaker than model-theor...
AbstractIn this paper, we consider coherent imprecise probability assessments on finite families of ...
In this paper, we consider coherent imprecise probability assessments on finite families of conditio...
We illustrate an approach to uncertain knowledge based on lower conditional probability bounds. We e...