The feed-forward neural network (FNN) has drawn great interest in many applications due to its universal approximation capability. In this paper, a novel algorithm for training FNNs is proposed using the concept of sparse representation. The major advantage of the proposed algorithm is that it is capable of training the initial network and optimizing the network structure simultaneously. The proposed algorithm consists of two core stages: structure optimization and weight update. In the structure optimization stage, the sparse representation technique is employed to select important hidden neurons that minimize the residual output error. In the weight update stage, a dictionary learning based method is implemented to update network weights ...
This paper introduces a new method which employs the concept of “Orientation Vectors ” to train a fe...
Artificial neural networks (ANNs) have emerged as hot topics in the research community. Despite the ...
The goal of data mining is to solve various problems dealing with knowledge extraction from huge amo...
Traditionally, optimizing the structure of a feed-forward neural-network is time-consuming and it ne...
Neural network training is computationally and memory intensive. Sparse training can reduce the bur...
Recently, circuit analysis and optimization featuring neural-network models have been proposed, redu...
Recently, sparse training methods have started to be established as a de facto approach for training...
We provide novel guaranteed approaches for training feedforward neural networks with sparse connecti...
International audienceSparsifying deep neural networks is of paramount interest in many areas, espec...
Large neural networks are very successful in various tasks. However, with limited data, the generali...
Recurrent neural networks (RNNs) have achieved state-of-the-art performances on various applications...
The over-parameterization of neural networks and the local optimality of backpropagation algorithm h...
Sparse neural networks have been widely applied to reduce the necessary resource requirements to tra...
This work presents a new class of neural network models constrained by biological levels of sparsity...
Sparse neural networks attract increasing interest as they exhibit comparable performance to their d...
This paper introduces a new method which employs the concept of “Orientation Vectors ” to train a fe...
Artificial neural networks (ANNs) have emerged as hot topics in the research community. Despite the ...
The goal of data mining is to solve various problems dealing with knowledge extraction from huge amo...
Traditionally, optimizing the structure of a feed-forward neural-network is time-consuming and it ne...
Neural network training is computationally and memory intensive. Sparse training can reduce the bur...
Recently, circuit analysis and optimization featuring neural-network models have been proposed, redu...
Recently, sparse training methods have started to be established as a de facto approach for training...
We provide novel guaranteed approaches for training feedforward neural networks with sparse connecti...
International audienceSparsifying deep neural networks is of paramount interest in many areas, espec...
Large neural networks are very successful in various tasks. However, with limited data, the generali...
Recurrent neural networks (RNNs) have achieved state-of-the-art performances on various applications...
The over-parameterization of neural networks and the local optimality of backpropagation algorithm h...
Sparse neural networks have been widely applied to reduce the necessary resource requirements to tra...
This work presents a new class of neural network models constrained by biological levels of sparsity...
Sparse neural networks attract increasing interest as they exhibit comparable performance to their d...
This paper introduces a new method which employs the concept of “Orientation Vectors ” to train a fe...
Artificial neural networks (ANNs) have emerged as hot topics in the research community. Despite the ...
The goal of data mining is to solve various problems dealing with knowledge extraction from huge amo...