Inductive inference operators generate non-monotonic inference relations on the basis of a set of conditionals. Examples include rational closure, system P and lexicographic inference. For most of these systems, inference has a high worst-case computational complexity. Recently, the notion of syntax splitting has been formulated, which allows restricting attention to subsets of conditionals relevant for a given query. In this paper, we define algorithms for inductive inference that take advantage of syntax splitting in order to obtain more efficient decision procedures. In particular, we show that relevance allows to use the modularity of knowledge base is a parameter that leads to tractable cases of inference for inductive inference operat...
: We have argued elsewhere that first order inference can be made more efficient by using non-standa...
International audienceThe sceptical inference relation associated with a Poole system without constr...
I propose a simple, general framework for the interac-tion of inference with natural language interp...
Inductive inference operators generate non-monotonic inference relations on the basis of a set of co...
Syntax splitting is a property of inductive inference operators that ensures we can restrict our att...
Lexicographic inference is a well-known and popular approach to reasoning with non-monotonic conditi...
In the context of knowledge representation and reasoning, the consideration of relevance plays a maj...
AbstractIrrelevance reasoning refers to the process in which a system reasons about which parts of i...
Several studies about computational complexity of non-monotonic reasoning (NMR) showed that non-mono...
Irrelevance reasoning refers to the process in which a system reasons about which parts of its know...
AbstractThis paper surveys the main results appearing in the literature on the computational complex...
International audienceWhen one wants to draw non-trivial inferences from an inconsistent belief base...
I propose a simple, general framework for the interaction of inference with natural language interpr...
This paper surveys the main results appearing in the literature on the computational complexity of n...
This paper surveys the main results appeared in the literature on the computational complexity of no...
: We have argued elsewhere that first order inference can be made more efficient by using non-standa...
International audienceThe sceptical inference relation associated with a Poole system without constr...
I propose a simple, general framework for the interac-tion of inference with natural language interp...
Inductive inference operators generate non-monotonic inference relations on the basis of a set of co...
Syntax splitting is a property of inductive inference operators that ensures we can restrict our att...
Lexicographic inference is a well-known and popular approach to reasoning with non-monotonic conditi...
In the context of knowledge representation and reasoning, the consideration of relevance plays a maj...
AbstractIrrelevance reasoning refers to the process in which a system reasons about which parts of i...
Several studies about computational complexity of non-monotonic reasoning (NMR) showed that non-mono...
Irrelevance reasoning refers to the process in which a system reasons about which parts of its know...
AbstractThis paper surveys the main results appearing in the literature on the computational complex...
International audienceWhen one wants to draw non-trivial inferences from an inconsistent belief base...
I propose a simple, general framework for the interaction of inference with natural language interpr...
This paper surveys the main results appearing in the literature on the computational complexity of n...
This paper surveys the main results appeared in the literature on the computational complexity of no...
: We have argued elsewhere that first order inference can be made more efficient by using non-standa...
International audienceThe sceptical inference relation associated with a Poole system without constr...
I propose a simple, general framework for the interac-tion of inference with natural language interp...