Human-like rewriting, which is an algebraic reasoning system imitating human intelligence of problem solving, is proposed in this work. In order to imitate both learning and reasoning aspects of human cognition, a deep feedforward neural network learns from algebraic reasoning examples produced by humans and then uses learnt experiences to guide other reasoning processes. This work shows that the neural network can learn human’s behaviours of solving mathematical problems, and it can indicate suitable directions of reasoning, so that intelligent and heuristic reasoning can be performed. Moreover, human-like rewriting bridges the gap between symbolic reasoning and biologically inspired machine learning. To enable the neural network to recogn...
The power of human language and thought arises from systematic compositionality—the algebraic abilit...
Hybrid connectionist symbolic systems have been the subject of much recent research in AI. By focusi...
Artificial Neural Networks have previously been applied in neuro-symbolic learning to learn ground l...
Despite the recent remarkable advances in deep learning, we are still far from building machines wit...
Current advances in Artificial Intelligence and machine learning in general, and deep learning in pa...
This work investigates if the current neural architectures are adequate for learning symbolic rewrit...
Although contemporary neural models excel in a surprisingly diverse range of application domains, th...
Abstract—Artificial Neural Networks have previously been applied in neuro-symbolic learning to learn...
The impact of Deep Learning is due to the ability of its algorithm to mimic purely instinctive decis...
The goal of neural-symbolic computation is to integrate ro-bust connectionist learning and sound sym...
Neural-symbolic models bridge the gap between sub-symbolic and symbolic approaches, both of which ha...
Abstract. Several research works have shown that Artificial Neural Networks — ANNs — have an appropr...
Building an intelligent agent that simulates human learning of math and science could potentially be...
We investigate the potential of Neural-Symbolic integration to reason about what a neural network ha...
Diagrams in mechanised reasoning systems are typically en- coded into symbolic representations that ...
The power of human language and thought arises from systematic compositionality—the algebraic abilit...
Hybrid connectionist symbolic systems have been the subject of much recent research in AI. By focusi...
Artificial Neural Networks have previously been applied in neuro-symbolic learning to learn ground l...
Despite the recent remarkable advances in deep learning, we are still far from building machines wit...
Current advances in Artificial Intelligence and machine learning in general, and deep learning in pa...
This work investigates if the current neural architectures are adequate for learning symbolic rewrit...
Although contemporary neural models excel in a surprisingly diverse range of application domains, th...
Abstract—Artificial Neural Networks have previously been applied in neuro-symbolic learning to learn...
The impact of Deep Learning is due to the ability of its algorithm to mimic purely instinctive decis...
The goal of neural-symbolic computation is to integrate ro-bust connectionist learning and sound sym...
Neural-symbolic models bridge the gap between sub-symbolic and symbolic approaches, both of which ha...
Abstract. Several research works have shown that Artificial Neural Networks — ANNs — have an appropr...
Building an intelligent agent that simulates human learning of math and science could potentially be...
We investigate the potential of Neural-Symbolic integration to reason about what a neural network ha...
Diagrams in mechanised reasoning systems are typically en- coded into symbolic representations that ...
The power of human language and thought arises from systematic compositionality—the algebraic abilit...
Hybrid connectionist symbolic systems have been the subject of much recent research in AI. By focusi...
Artificial Neural Networks have previously been applied in neuro-symbolic learning to learn ground l...