Problem description. The learning of monolithic neural networks becomes harder with growing network size. Likewise the knowledge obtained while learning becomes harder to extract. Such disadvantages are caused by a lack of internal structure, that by its presence would reduce the degrees of freedom in evolving to a training target. A suitable internal structure with respect to modular network construction as well as to nodal discrimination is required. Details on the grouping and selection of nodes can sometimes be concluded from the characteristics of the application area; otherwise a comprehensive search within the solution space is necessary
Modularity and hierarchy are fundamental notions in structured system design. By subdividing a large...
In this chapter, we focus on two important areas in neural computation, i.e., deep and modular neura...
The brain can be viewed as a complex modular structure with features of information processing throu...
Problem description. The learning of monolithic neural networks becomes harder with growing network ...
Neural networks learn knowledge from data. For a monolithic structure, this knowledge can be easily ...
The popular multi-layer perceptron (MLP) topology with an error-back propagation learning rule doesn...
Monolithic neural networks may be trained from measured data to establish knowledge about the proces...
Modularity is often used to manage the complexity of monolithic software systems. This is done throu...
Monolithic neural networks may be trained from measured data to establish knowledge about the proces...
Monolithic neural networks may be trained from measured data to establish knowl-edge about the proce...
Monolithic neural networks may be trained from measured data to establish knowledge about the proces...
Scaling model capacity has been vital in the success of deep learning. For a typical network, necess...
Pattern recognition has become an accessible tool in developing advanced adaptive products. The need...
AbstractLearning of large-scale neural networks suffers from computational cost and the local minima...
Using a multi—layer perceptron as an implementation of a classifier can introduce some difficulties ...
Modularity and hierarchy are fundamental notions in structured system design. By subdividing a large...
In this chapter, we focus on two important areas in neural computation, i.e., deep and modular neura...
The brain can be viewed as a complex modular structure with features of information processing throu...
Problem description. The learning of monolithic neural networks becomes harder with growing network ...
Neural networks learn knowledge from data. For a monolithic structure, this knowledge can be easily ...
The popular multi-layer perceptron (MLP) topology with an error-back propagation learning rule doesn...
Monolithic neural networks may be trained from measured data to establish knowledge about the proces...
Modularity is often used to manage the complexity of monolithic software systems. This is done throu...
Monolithic neural networks may be trained from measured data to establish knowledge about the proces...
Monolithic neural networks may be trained from measured data to establish knowl-edge about the proce...
Monolithic neural networks may be trained from measured data to establish knowledge about the proces...
Scaling model capacity has been vital in the success of deep learning. For a typical network, necess...
Pattern recognition has become an accessible tool in developing advanced adaptive products. The need...
AbstractLearning of large-scale neural networks suffers from computational cost and the local minima...
Using a multi—layer perceptron as an implementation of a classifier can introduce some difficulties ...
Modularity and hierarchy are fundamental notions in structured system design. By subdividing a large...
In this chapter, we focus on two important areas in neural computation, i.e., deep and modular neura...
The brain can be viewed as a complex modular structure with features of information processing throu...