Several recent publications have exhibited relationships between the theories of logic programming and of neural networks. We consider a general approach to representing normal logic programs via feedforward neural networks. We show that the immediate consequence operator associated with each logic program, which can be understood as implicitly determining its declarative semantics, can be approximated by 3-layer feedforward neural networks arbitrarily well in a certain measure-theoretic sense. If this operator is continuous in a topology known as the atomic topology, then the approximation is uniform in all points
topic: The research field of neurosymbolic integration aims at combining the advantages of neural ne...
Logic programming is carried out on a neural network. A higher-order Hopfield neural network is used...
Logic programming is carried out on a neural network. A higher-order Hopfield neural network is used...
Several recent publications have exhibited relationships between the theories of logic programming a...
Abstract. In this paper, we develop a theory of the integration of fibring neural net-works (a gener...
AbstractIt is a long-standing and important problem to integrate logic-based systems and connectioni...
One facet of the question of integration of Logic and Connectionist Systems, and how these can compl...
AbstractOne facet of the question of integration of Logic and Connectionist Systems, and how these c...
Hölldobler and Kalinke showed how, given a propositional logic program P, a 3-layer feedforward arti...
We want to apply Funahashi\u27s theorem in order to approximate the TP operator for first-order (nor...
We discuss the computation by neural networks of semantic operators TP determined by propositional l...
We discuss the computation by neural networks of semantic operators TP determined by propositional l...
Motivated by basic ideas from formal concept analysis, we propose two ways to directly encode closur...
It has been one of the great challenges of neuro-symbolic integration to represent recursive logic p...
Graphs of the single-step operator for first-order logic programs—displayed in the real plane—exhibi...
topic: The research field of neurosymbolic integration aims at combining the advantages of neural ne...
Logic programming is carried out on a neural network. A higher-order Hopfield neural network is used...
Logic programming is carried out on a neural network. A higher-order Hopfield neural network is used...
Several recent publications have exhibited relationships between the theories of logic programming a...
Abstract. In this paper, we develop a theory of the integration of fibring neural net-works (a gener...
AbstractIt is a long-standing and important problem to integrate logic-based systems and connectioni...
One facet of the question of integration of Logic and Connectionist Systems, and how these can compl...
AbstractOne facet of the question of integration of Logic and Connectionist Systems, and how these c...
Hölldobler and Kalinke showed how, given a propositional logic program P, a 3-layer feedforward arti...
We want to apply Funahashi\u27s theorem in order to approximate the TP operator for first-order (nor...
We discuss the computation by neural networks of semantic operators TP determined by propositional l...
We discuss the computation by neural networks of semantic operators TP determined by propositional l...
Motivated by basic ideas from formal concept analysis, we propose two ways to directly encode closur...
It has been one of the great challenges of neuro-symbolic integration to represent recursive logic p...
Graphs of the single-step operator for first-order logic programs—displayed in the real plane—exhibi...
topic: The research field of neurosymbolic integration aims at combining the advantages of neural ne...
Logic programming is carried out on a neural network. A higher-order Hopfield neural network is used...
Logic programming is carried out on a neural network. A higher-order Hopfield neural network is used...