Artificial Neural Networks have previously been applied in neuro-symbolic learning to learn ground logic program rules. However, there are few results of learning relations using neuro-symbolic learning. This paper presents the system PAN, which can learn relations. The inputs to PAN are one or more atoms, representing the conditions of a logic rule, and the output is the conclusion of the rule. The symbolic inputs may include functional terms of arbitrary depth and arity, and the output may include terms constructed from the input functors. Symbolic inputs are encoded as an integer using an invertible encoding function, which is used in reverse to extract the output terms. The main advance of this system is a convention to allow constructi...
The impact of Deep Learning is due to the ability of its algorithm to mimic purely instinctive decis...
Artificial neural networks can be trained to perform excellently in many application areas. While th...
Artificial neural networks can be trained to perform excellently in many application areas. While th...
Abstract—Artificial Neural Networks have previously been applied in neuro-symbolic learning to learn...
Recent work on neuro-symbolic inductive logic programming has led to promising approaches that can l...
Abstract. Artificial neural networks play an important role for pattern recognition tasks. However, ...
The integration of symbolic and neural-network-based artificial intelligence paradigms constitutes ...
The integration of symbolic and neural-network-based artificial intelligence paradigms constitutes a...
The integration of symbolic and neural-network-based artificial intelligence paradigms constitutes a...
In this paper, we will present a theory of representing sym-bolic inferences of first-order logic wi...
A distinct advantage of symbolic learning algorithms over artificial neural networks is that typical...
Abstract. Several research works have shown that Artificial Neural Networks — ANNs — have an appropr...
Neural-symbolic models bridge the gap between sub-symbolic and symbolic approaches, both of which ha...
Neural-symbolic models bridge the gap between sub-symbolic and symbolic approaches, both of which ha...
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...
Artificial neural networks can be trained to perform excellently in many application areas. While th...
Artificial neural networks can be trained to perform excellently in many application areas. While th...
Abstract—Artificial Neural Networks have previously been applied in neuro-symbolic learning to learn...
Recent work on neuro-symbolic inductive logic programming has led to promising approaches that can l...
Abstract. Artificial neural networks play an important role for pattern recognition tasks. However, ...
The integration of symbolic and neural-network-based artificial intelligence paradigms constitutes ...
The integration of symbolic and neural-network-based artificial intelligence paradigms constitutes a...
The integration of symbolic and neural-network-based artificial intelligence paradigms constitutes a...
In this paper, we will present a theory of representing sym-bolic inferences of first-order logic wi...
A distinct advantage of symbolic learning algorithms over artificial neural networks is that typical...
Abstract. Several research works have shown that Artificial Neural Networks — ANNs — have an appropr...
Neural-symbolic models bridge the gap between sub-symbolic and symbolic approaches, both of which ha...
Neural-symbolic models bridge the gap between sub-symbolic and symbolic approaches, both of which ha...
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...
Artificial neural networks can be trained to perform excellently in many application areas. While th...
Artificial neural networks can be trained to perform excellently in many application areas. While th...