This paper proposes new nonnegative (shallow and multi-layer) autoencoders by combining the spiking Random Neural Network (RNN) model, the network architecture typical used in deep-learning area and the training technique inspired from nonnegative matrix factorization (NMF). The shallow autoencoder is a simplified RNN model, which is then stacked into a multi-layer architecture. The learning algorithm is based on the weight update rules in NMF, subject to the nonnegative probability constraints of the RNN. The autoencoders equipped with this learning algorithm are tested on typical image datasets including the MNIST, Yale face and CIFAR-10 datasets, and also using 16 real-world datasets from different areas. The results obtained through the...
Abstract. Deep neural networks with several layers have during the last years become a highly succes...
© 2017 IEEE. Randomized neural network (RNN) is a highly feasible solution in the era of big data be...
Sparse neural networks have been widely applied to reduce the necessary resource requirements to tra...
A new shallow multi-layer auto-encoder that combines the spiking Random Neural Network (RNN) with th...
In this thesis, nonnegative matrix factorization (NMF) is viewed as a feedbackward neural network an...
The random neural network (RNN) is a mathematical model for an ``integrate and fire'' spiking networ...
Deep autoencoder neural networks have been widely used in several image classification and recogniti...
Recent work demonstrated the value of multi clusters of spiking Random Neural Networks (RNN) with de...
Artificial Neural Network (ANN) based techniques have dominated state-of-the-art results in most pro...
<p>Deep convolutional neural networks have achieved great success on many visual tasks (e.g., image ...
The random subspace method, also known as the pillar of random forests, is good at making precise an...
Abstract-A sparse auto-encoder is one of effective algorithms for learning features from unlabeled d...
© 2016 IEEE. Deep neural networks have been applied to image restoration to achieve the top-level pe...
We consider the existence of fixed points of nonnegative neural networks, i.e., neural networks that...
We introduce a novel generative autoencoder network model that learns to encode and reconstruct imag...
Abstract. Deep neural networks with several layers have during the last years become a highly succes...
© 2017 IEEE. Randomized neural network (RNN) is a highly feasible solution in the era of big data be...
Sparse neural networks have been widely applied to reduce the necessary resource requirements to tra...
A new shallow multi-layer auto-encoder that combines the spiking Random Neural Network (RNN) with th...
In this thesis, nonnegative matrix factorization (NMF) is viewed as a feedbackward neural network an...
The random neural network (RNN) is a mathematical model for an ``integrate and fire'' spiking networ...
Deep autoencoder neural networks have been widely used in several image classification and recogniti...
Recent work demonstrated the value of multi clusters of spiking Random Neural Networks (RNN) with de...
Artificial Neural Network (ANN) based techniques have dominated state-of-the-art results in most pro...
<p>Deep convolutional neural networks have achieved great success on many visual tasks (e.g., image ...
The random subspace method, also known as the pillar of random forests, is good at making precise an...
Abstract-A sparse auto-encoder is one of effective algorithms for learning features from unlabeled d...
© 2016 IEEE. Deep neural networks have been applied to image restoration to achieve the top-level pe...
We consider the existence of fixed points of nonnegative neural networks, i.e., neural networks that...
We introduce a novel generative autoencoder network model that learns to encode and reconstruct imag...
Abstract. Deep neural networks with several layers have during the last years become a highly succes...
© 2017 IEEE. Randomized neural network (RNN) is a highly feasible solution in the era of big data be...
Sparse neural networks have been widely applied to reduce the necessary resource requirements to tra...