Recent theoretical advances in the learning of deep artificial neural networks have made it possible to overcome a vanishing gradient problem. This limitation has been overcome using a pre-training step, where deep belief networks formed by the stacked Restricted Boltzmann Machines perform unsupervised learning. Once a pre-training step is done, network weights are fine-tuned using regular error back propagation while treating network as a feed-forward net. In the current paper we perform the comparison of described approach and commonly used classification approaches on some well-known classification data sets from the UCI repository as well as on one mid-sized proprietary data set
Abstract. Deep neural networks with several layers have during the last years become a highly succes...
Since the proposal of a fast learning algorithm for deep belief networks in 2006, the deep learning ...
Theoretical results suggest that in order to learn the kind of complicated functions that can repres...
Restricted Boltzmann Machines (RBMs) and autoencoders have been used - in several variants - for sim...
Abstract — This paper proposes a classifier called deep adap-tive networks (DAN) based on deep belie...
In a work that ultimately heralded a resurgence of deep learning as a viable and successful machine ...
application/pdfAbstract?Deep Learning has a hierarchical network architecture to represent the compl...
Deep Belief Network (DBN) has an deep architecture that can represent multiple features of input pat...
In this study, we provide a direct comparison of the Stochastic Maximum Likelihood algorithm and Con...
Complexity theory of circuits strongly suggests that deep architectures can be much more efcient (so...
In a work that ultimately heralded a resurgence of deep learning as a viable and successful machine ...
ABSTRACT Dataset in large collection involves considerable handling in its analysis especially whe...
We studied the effect of pre-training and fine-tuning on a well-known deep architecture for phone re...
Deep Belief Networks (DBN’s) are generative models that contain many layers of hidden vari-ables. Ef...
Visual data classification using insufficient labeled data is a well-known hard problem. Semi-superv...
Abstract. Deep neural networks with several layers have during the last years become a highly succes...
Since the proposal of a fast learning algorithm for deep belief networks in 2006, the deep learning ...
Theoretical results suggest that in order to learn the kind of complicated functions that can repres...
Restricted Boltzmann Machines (RBMs) and autoencoders have been used - in several variants - for sim...
Abstract — This paper proposes a classifier called deep adap-tive networks (DAN) based on deep belie...
In a work that ultimately heralded a resurgence of deep learning as a viable and successful machine ...
application/pdfAbstract?Deep Learning has a hierarchical network architecture to represent the compl...
Deep Belief Network (DBN) has an deep architecture that can represent multiple features of input pat...
In this study, we provide a direct comparison of the Stochastic Maximum Likelihood algorithm and Con...
Complexity theory of circuits strongly suggests that deep architectures can be much more efcient (so...
In a work that ultimately heralded a resurgence of deep learning as a viable and successful machine ...
ABSTRACT Dataset in large collection involves considerable handling in its analysis especially whe...
We studied the effect of pre-training and fine-tuning on a well-known deep architecture for phone re...
Deep Belief Networks (DBN’s) are generative models that contain many layers of hidden vari-ables. Ef...
Visual data classification using insufficient labeled data is a well-known hard problem. Semi-superv...
Abstract. Deep neural networks with several layers have during the last years become a highly succes...
Since the proposal of a fast learning algorithm for deep belief networks in 2006, the deep learning ...
Theoretical results suggest that in order to learn the kind of complicated functions that can repres...