One facet of the question of integration of Logic and Connectionist Systems, and how these can complement each other, concerns the points of contact, in terms of semantics, between neural networks and logic programs. In this paper, we show that certain semantic operators for propositional logic programs can be computed by feedforward connectionist networks, and that the same semantic operators for first-order normal logic programs can be approximated by feedforward connectionist networks. Turning the networks into recurrent ones allows one also to approximate the models associated with the semantic operators. Our methods depend on a well-known theorem of Funahashi, and necessitate the study of when Funahasi’s theorem can be applied, and als...
AbstractModal logics are amongst the most successful applied logical systems. Neural networks were p...
Covering the authors’ own state-of-the-art research results, Mathematical Aspects of Logic Programmi...
Intelligent systems based on first-order logic on the one hand, and on artificial neural networks (a...
AbstractOne facet of the question of integration of Logic and Connectionist Systems, and how these c...
One facet of the question of integration of Logic and Connectionist Systems, and how these can compl...
AbstractIt is a long-standing and important problem to integrate logic-based systems and connectioni...
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...
Graphs of the single-step operator for first-order logic programs—displayed in the real plane—exhibi...
Several recent publications have exhibited relationships between the theories of logic programming a...
Hölldobler and Kalinke showed how, given a propositional logic program P, a 3-layer feedforward arti...
AbstractThe paper presents a connectionist framework that is capable of representing and learning pr...
We present a fully connectionist system for the learning of first-order logic programs and the gener...
We present a fully connectionist system for the learning of first-order logic programs and the gener...
Abstract. In this paper, we develop a theory of the integration of fibring neural net-works (a gener...
AbstractModal logics are amongst the most successful applied logical systems. Neural networks were p...
Covering the authors’ own state-of-the-art research results, Mathematical Aspects of Logic Programmi...
Intelligent systems based on first-order logic on the one hand, and on artificial neural networks (a...
AbstractOne facet of the question of integration of Logic and Connectionist Systems, and how these c...
One facet of the question of integration of Logic and Connectionist Systems, and how these can compl...
AbstractIt is a long-standing and important problem to integrate logic-based systems and connectioni...
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...
Graphs of the single-step operator for first-order logic programs—displayed in the real plane—exhibi...
Several recent publications have exhibited relationships between the theories of logic programming a...
Hölldobler and Kalinke showed how, given a propositional logic program P, a 3-layer feedforward arti...
AbstractThe paper presents a connectionist framework that is capable of representing and learning pr...
We present a fully connectionist system for the learning of first-order logic programs and the gener...
We present a fully connectionist system for the learning of first-order logic programs and the gener...
Abstract. In this paper, we develop a theory of the integration of fibring neural net-works (a gener...
AbstractModal logics are amongst the most successful applied logical systems. Neural networks were p...
Covering the authors’ own state-of-the-art research results, Mathematical Aspects of Logic Programmi...
Intelligent systems based on first-order logic on the one hand, and on artificial neural networks (a...