Reasoning semantically in first-order logic is notoriously a challenge. This paper surveys a selection of semantically-guided or model-based methods that aim at meeting aspects of this challenge. For first-order logic we touch upon resolution-based methods, tableaux-based methods, DPLL-inspired methods, and we give a preview of a new method called SGGS, for Semantically-Guided Goal-Sensitive reasoning. For first-order theories we highlight hierarchical and locality-based methods, concluding with the recent Model-Constructing satisfiability calculus
This paper focuses on computing first-order theo-ries under either stable model semantics or circum-...
Many machine reading approaches, from shallow information extraction to deep semantic parsing, map n...
Beth's method of semantic tableaux has been utilized in first order logic to obtain some results. Fr...
friend and colleague. Abstract. Reasoning semantically in first-order logic is notoriously a challen...
We present a new inference system for first-order logic, named SGGS, which stands for semantically-g...
SGGS (Semantically-Guided Goal-Sensitive reasoning) is a clausal theorem-proving method, which gener...
We present a new method for clausal theorem proving, named SGGS from semantically-guided goal-sensit...
SGGS, for Semantically-Guided Goal-Sensitive theorem proving, is a new inference system for first-or...
This paper focuses on computing first-order theories under either stable model semantics or circumsc...
Knowledge Representation and Reasoning is the area of artificial intelligence that is concerned with...
Proofs and models are the mainstay of automated reasoning. Traditionally, proofs have taken center s...
We present in expository style the main ideas in SGGS, which stands for Semantically-Guided Goal-Sen...
Various versions of our first-order logic theorem prover SCOTT have been developed over the past dec...
We study and implement algorithms to revise and learn first-order logical theories, written in claus...
: We have argued elsewhere that first order inference can be made more efficient by using non-standa...
This paper focuses on computing first-order theo-ries under either stable model semantics or circum-...
Many machine reading approaches, from shallow information extraction to deep semantic parsing, map n...
Beth's method of semantic tableaux has been utilized in first order logic to obtain some results. Fr...
friend and colleague. Abstract. Reasoning semantically in first-order logic is notoriously a challen...
We present a new inference system for first-order logic, named SGGS, which stands for semantically-g...
SGGS (Semantically-Guided Goal-Sensitive reasoning) is a clausal theorem-proving method, which gener...
We present a new method for clausal theorem proving, named SGGS from semantically-guided goal-sensit...
SGGS, for Semantically-Guided Goal-Sensitive theorem proving, is a new inference system for first-or...
This paper focuses on computing first-order theories under either stable model semantics or circumsc...
Knowledge Representation and Reasoning is the area of artificial intelligence that is concerned with...
Proofs and models are the mainstay of automated reasoning. Traditionally, proofs have taken center s...
We present in expository style the main ideas in SGGS, which stands for Semantically-Guided Goal-Sen...
Various versions of our first-order logic theorem prover SCOTT have been developed over the past dec...
We study and implement algorithms to revise and learn first-order logical theories, written in claus...
: We have argued elsewhere that first order inference can be made more efficient by using non-standa...
This paper focuses on computing first-order theo-ries under either stable model semantics or circum-...
Many machine reading approaches, from shallow information extraction to deep semantic parsing, map n...
Beth's method of semantic tableaux has been utilized in first order logic to obtain some results. Fr...