Deep belief networks (DBNs) are stochastic neural networks that can extract rich internal representations of the environment from the sensory data. DBNs had a catalytic effect in triggering the deep learning revolution, demonstrating for the very first time the feasibility of unsupervised learning in networks with many layers of hidden neurons. These hierarchical architectures incorporate plausible biological and cognitive properties, making them particularly appealing as computational models of human perception and cognition. However, learning in DBNs is usually carried out in a greedy, layer-wise fashion, which does not allow to simulate the holistic maturation of cortical circuits and prevents from modeling cognitive development. Here we...
Visual data classification using insufficient labeled data is a well-known hard problem. Semi-superv...
Abstract — This paper proposes a classifier called deep adap-tive networks (DAN) based on deep belie...
The majority of computational theories of inductive processes in psychology derive from small-scale ...
Deep Belief Network (DBN) has an deep architecture that can represent multiple features of input pat...
Complexity theory of circuits strongly suggests that deep architectures can be much more efcient (so...
It is becoming more and more important to have Intelligent Systems that can adapt during the operati...
<p>(A) Network architecture of an N-layer DBN. (B) Internal representation for a 3-layer DBN when pr...
Deep learning has proven to be beneficial for complex tasks such as classifying images. However, thi...
Applications of deep belief nets (DBN) to various problems have been the subject of a number of rece...
a b s t r a c t Many computational models have been proposed for interpreting the properties of neur...
We show how to use "complementary priors" to eliminate the explaining-away effects that make inferen...
With the goal of understanding behavioral mechanisms of generalization, we analyzed the ability of n...
Deep Belief Networks are probabilistic generative models which are composed by multiple layers of la...
With the goal of understanding behavioral mechanisms of generalization, we analyzed the ability of n...
application/pdfAbstract?Deep Learning has a hierarchical network architecture to represent the compl...
Visual data classification using insufficient labeled data is a well-known hard problem. Semi-superv...
Abstract — This paper proposes a classifier called deep adap-tive networks (DAN) based on deep belie...
The majority of computational theories of inductive processes in psychology derive from small-scale ...
Deep Belief Network (DBN) has an deep architecture that can represent multiple features of input pat...
Complexity theory of circuits strongly suggests that deep architectures can be much more efcient (so...
It is becoming more and more important to have Intelligent Systems that can adapt during the operati...
<p>(A) Network architecture of an N-layer DBN. (B) Internal representation for a 3-layer DBN when pr...
Deep learning has proven to be beneficial for complex tasks such as classifying images. However, thi...
Applications of deep belief nets (DBN) to various problems have been the subject of a number of rece...
a b s t r a c t Many computational models have been proposed for interpreting the properties of neur...
We show how to use "complementary priors" to eliminate the explaining-away effects that make inferen...
With the goal of understanding behavioral mechanisms of generalization, we analyzed the ability of n...
Deep Belief Networks are probabilistic generative models which are composed by multiple layers of la...
With the goal of understanding behavioral mechanisms of generalization, we analyzed the ability of n...
application/pdfAbstract?Deep Learning has a hierarchical network architecture to represent the compl...
Visual data classification using insufficient labeled data is a well-known hard problem. Semi-superv...
Abstract — This paper proposes a classifier called deep adap-tive networks (DAN) based on deep belie...
The majority of computational theories of inductive processes in psychology derive from small-scale ...