Neural-symbolic systems combine the strengths of neural networks and symbolic formalisms. In this paper, we introduce a neural-symbolic system which combines restricted Boltzmann machines and probabilistic semi-abstract argumentation. We propose to train networks on argument labellings explaining the data, so that any sampled data outcome is associated with an argument labelling. Argument labellings are integrated as constraints within restricted Boltzmann machines, so that the neural networks are used to learn probabilistic dependencies amongst argument labels. Given a dataset and an argumentation graph as prior knowledge, for every example/case K in the dataset, we use a so-called K- maxconsistent labelling of the graph, and an explanatio...
Abstract. Several research works have shown that Artificial Neural Networks — ANNs — have an appropr...
AbstractA clear need exists within artificial intelligence for flexible systems capable of modifying...
In an experimental implementation of a hybrid neural-symbolic programming environment, we have inter...
Neural-symbolic systems combine the strengths of neural networks and symbolic formalisms. In this pa...
Computational argumentation (CA) has emerged, in recent decades, as a powerful formalism for knowl- ...
Knowledge representation and reasoning in neural networks has been a long-standing endeavour which h...
Deep learning is bringing remarkable contributions to the field of argumentation mining, but the exi...
This thesis moves towards reconciliation of two of the major paradigms of artificial intelligence: b...
We show that an interesting class of feed-forward neural networks can be understood as quantitative ...
While neural networks have been successfully used in a number of machine learning applications, logi...
Neural-symbolic models bridge the gap between sub-symbolic and symbolic approaches, both of which ha...
The impact of Deep Learning is due to the ability of its algorithm to mimic purely instinctive decis...
We present Neural Probabilistic Soft Logic (NeuPSL), a novel neuro-symbolic (NeSy) framework that un...
Argumentation is a leading principle both foundationally and functionally for agent-oriented computi...
Neuro-symbolic learning, where deep networks are combined with symbolic knowledge can help regulariz...
Abstract. Several research works have shown that Artificial Neural Networks — ANNs — have an appropr...
AbstractA clear need exists within artificial intelligence for flexible systems capable of modifying...
In an experimental implementation of a hybrid neural-symbolic programming environment, we have inter...
Neural-symbolic systems combine the strengths of neural networks and symbolic formalisms. In this pa...
Computational argumentation (CA) has emerged, in recent decades, as a powerful formalism for knowl- ...
Knowledge representation and reasoning in neural networks has been a long-standing endeavour which h...
Deep learning is bringing remarkable contributions to the field of argumentation mining, but the exi...
This thesis moves towards reconciliation of two of the major paradigms of artificial intelligence: b...
We show that an interesting class of feed-forward neural networks can be understood as quantitative ...
While neural networks have been successfully used in a number of machine learning applications, logi...
Neural-symbolic models bridge the gap between sub-symbolic and symbolic approaches, both of which ha...
The impact of Deep Learning is due to the ability of its algorithm to mimic purely instinctive decis...
We present Neural Probabilistic Soft Logic (NeuPSL), a novel neuro-symbolic (NeSy) framework that un...
Argumentation is a leading principle both foundationally and functionally for agent-oriented computi...
Neuro-symbolic learning, where deep networks are combined with symbolic knowledge can help regulariz...
Abstract. Several research works have shown that Artificial Neural Networks — ANNs — have an appropr...
AbstractA clear need exists within artificial intelligence for flexible systems capable of modifying...
In an experimental implementation of a hybrid neural-symbolic programming environment, we have inter...