Many recent studies focus on developing mechanisms to explain the black-box behaviors of neural networks (NNs). However, little work has been done to extract the potential hidden semantics (mathematical representation) of a neural network. A succinct and explicit mathematical representation of a NN model could improve the understanding and interpretation of its behaviors. To address this need, we propose a novel symbolic regression method for neural works (called SRNet) to discover the mathematical expressions of a NN. SRNet creates a Cartesian genetic programming (NNCGP) to represent the hidden semantics of a single layer in a NN. It then leverages a multi-chromosome NNCGP to represent hidden semantics of all layers of the NN. The method u...
This work investigates if the current neural architectures are adequate for learning symbolic rewrit...
Neural network language models (NNLMs) have achieved ever-improving accuracy due to more sophisticat...
Symbolic regression is a machine learning technique that can learn the governing formulas of data an...
The classical McCulloch and Pitts neural unit is widely used today in artificial neural networks (NN...
Symbolic regression is a powerful technique to discover analytic equations that describe data, which...
The classical McCulloch and Pitts neural unit is widely used today in artificial neural networks (NN...
Understanding what neural networks learn from training data is of great interest in data mining, dat...
Symbolic regression is emerging as a promising machine learning method for learning succinct underly...
Updated version, draft of accepted IJCAI2020 Survey PaperInternational audienceNeural-symbolic compu...
Research on Deep Learning has achieved remarkable results in recent years, mainly thanks to the com...
Updated version, draft of accepted IJCAI2020 Survey PaperInternational audienceNeural-symbolic compu...
Abstract. Several research works have shown that Artificial Neural Networks — ANNs — have an appropr...
Neural networks that are capable of representing symbolic information such as logic programs are sai...
The natural world is known to consistently abide by scientific laws that can be expressed concisely ...
Neuro-symbolic learning, where deep networks are combined with symbolic knowledge can help regulariz...
This work investigates if the current neural architectures are adequate for learning symbolic rewrit...
Neural network language models (NNLMs) have achieved ever-improving accuracy due to more sophisticat...
Symbolic regression is a machine learning technique that can learn the governing formulas of data an...
The classical McCulloch and Pitts neural unit is widely used today in artificial neural networks (NN...
Symbolic regression is a powerful technique to discover analytic equations that describe data, which...
The classical McCulloch and Pitts neural unit is widely used today in artificial neural networks (NN...
Understanding what neural networks learn from training data is of great interest in data mining, dat...
Symbolic regression is emerging as a promising machine learning method for learning succinct underly...
Updated version, draft of accepted IJCAI2020 Survey PaperInternational audienceNeural-symbolic compu...
Research on Deep Learning has achieved remarkable results in recent years, mainly thanks to the com...
Updated version, draft of accepted IJCAI2020 Survey PaperInternational audienceNeural-symbolic compu...
Abstract. Several research works have shown that Artificial Neural Networks — ANNs — have an appropr...
Neural networks that are capable of representing symbolic information such as logic programs are sai...
The natural world is known to consistently abide by scientific laws that can be expressed concisely ...
Neuro-symbolic learning, where deep networks are combined with symbolic knowledge can help regulariz...
This work investigates if the current neural architectures are adequate for learning symbolic rewrit...
Neural network language models (NNLMs) have achieved ever-improving accuracy due to more sophisticat...
Symbolic regression is a machine learning technique that can learn the governing formulas of data an...