How to develop slim and accurate deep neural networks has become crucial for real- world applications, especially for those employed in embedded systems. Though previous work along this research line has shown some promising results, most existing methods either fail to significantly compress a well-trained deep network or require a heavy retraining process for the pruned deep network to re-boost its prediction performance. In this paper, we propose a new layer-wise pruning method for deep neural networks. In our proposed method, parameters of each individual layer are pruned independently based on second order derivatives of a layer-wise error function with respect to the corresponding parameters. We prove that the final prediction perform...
Network pruning is a promising avenue for compressing deep neural networks. A typical approach to pr...
Structure pruning is an effective method to compress and accelerate neural networks. While filter an...
The rapidly growing parameter volume of deep neural networks (DNNs) hinders the artificial intellige...
How to develop slim and accurate deep neural networks has become crucial for real- world application...
In recent years, deep neural networks have achieved remarkable results in various artificial intelli...
Artificial Intelligent (AI) has become the most potent and forward-looking force in the technologies...
The performance of a deep neural network (deep NN) is dependent upon a significant number of weight ...
The performance of a deep neural network (deep NN) is dependent upon a significant number of weight ...
The performance of a deep neural network (deep NN) is dependent upon a significant number of weight ...
Deeper and wider convolutional neural networks (CNNs) achieve superior performance but bring expensi...
The architecture of an artificial neural network has a great impact on the generalization power. M...
This paper presents a survey of methods for pruning deep neural networks. It begins by categorising...
Unstructured neural network pruning algorithms have achieved impressive compression ratios. However,...
Neuron pruning is an efficient method to compress the network into a slimmer one for reducing the co...
Network pruning is a promising avenue for compressing deep neural networks. A typical approach to pr...
Network pruning is a promising avenue for compressing deep neural networks. A typical approach to pr...
Structure pruning is an effective method to compress and accelerate neural networks. While filter an...
The rapidly growing parameter volume of deep neural networks (DNNs) hinders the artificial intellige...
How to develop slim and accurate deep neural networks has become crucial for real- world application...
In recent years, deep neural networks have achieved remarkable results in various artificial intelli...
Artificial Intelligent (AI) has become the most potent and forward-looking force in the technologies...
The performance of a deep neural network (deep NN) is dependent upon a significant number of weight ...
The performance of a deep neural network (deep NN) is dependent upon a significant number of weight ...
The performance of a deep neural network (deep NN) is dependent upon a significant number of weight ...
Deeper and wider convolutional neural networks (CNNs) achieve superior performance but bring expensi...
The architecture of an artificial neural network has a great impact on the generalization power. M...
This paper presents a survey of methods for pruning deep neural networks. It begins by categorising...
Unstructured neural network pruning algorithms have achieved impressive compression ratios. However,...
Neuron pruning is an efficient method to compress the network into a slimmer one for reducing the co...
Network pruning is a promising avenue for compressing deep neural networks. A typical approach to pr...
Network pruning is a promising avenue for compressing deep neural networks. A typical approach to pr...
Structure pruning is an effective method to compress and accelerate neural networks. While filter an...
The rapidly growing parameter volume of deep neural networks (DNNs) hinders the artificial intellige...