The article presents methods of dealing with huge data in the domain of neural networks. The decomposition of neural networks is introduced and its efficiency is proved by the authors’ experiments. The examinations of the effectiveness of argument reduction in the above filed, are presented. Authors indicate, that decomposition is capable of reducing the size and the complexity of the learned data, and thus it makes the learning process faster or, while dealing with large data, possible. According to the authors experiments, in some cases, argument reduction, makes the learning process harder
a decompositional rule extraction algorithm for neural networks with bound decomposition tre
Title: Artificial Neural Networks and Their Usage For Knowledge Extraction Author: RNDr. Zuzana Petř...
Many constructive learning algorithms have been proposed to find an appropriate network structure fo...
The article presents methods of dealing with huge data in the domain of neural networks. The decompo...
The article presents methods of dealing with huge data in the domain of neural networks. The decompo...
Abstract. The neural networks are successfully applied to many applications in different domains. Ho...
One of the main problems in the field of Artificial Intelligence is the efficiency of neural network...
In order to find an appropriate architecture for a large-scale real-world application automatically ...
Problem decomposition and divide-and-conquer strategies have been proposed to improve the performanc...
In "decomposition/reconstruction" strategy, we can solve a complex problem by 1) decomposing the pro...
The increasing size of recently proposed Neural Networks makes it hard to implement them on embedded...
The problem in modeling large systems by artificial neural networks (ANN) is that the size of the in...
Thesis (Ph.D.)--University of Washington, 2019The advent of deep neural networks has revolutionized ...
A relaxed group-wise splitting method (RGSM) is developed and evaluated for channel pruning of deep ...
Abstract: “Data Rich and Information Poor ” is the tagline on which the field Data Mining is based o...
a decompositional rule extraction algorithm for neural networks with bound decomposition tre
Title: Artificial Neural Networks and Their Usage For Knowledge Extraction Author: RNDr. Zuzana Petř...
Many constructive learning algorithms have been proposed to find an appropriate network structure fo...
The article presents methods of dealing with huge data in the domain of neural networks. The decompo...
The article presents methods of dealing with huge data in the domain of neural networks. The decompo...
Abstract. The neural networks are successfully applied to many applications in different domains. Ho...
One of the main problems in the field of Artificial Intelligence is the efficiency of neural network...
In order to find an appropriate architecture for a large-scale real-world application automatically ...
Problem decomposition and divide-and-conquer strategies have been proposed to improve the performanc...
In "decomposition/reconstruction" strategy, we can solve a complex problem by 1) decomposing the pro...
The increasing size of recently proposed Neural Networks makes it hard to implement them on embedded...
The problem in modeling large systems by artificial neural networks (ANN) is that the size of the in...
Thesis (Ph.D.)--University of Washington, 2019The advent of deep neural networks has revolutionized ...
A relaxed group-wise splitting method (RGSM) is developed and evaluated for channel pruning of deep ...
Abstract: “Data Rich and Information Poor ” is the tagline on which the field Data Mining is based o...
a decompositional rule extraction algorithm for neural networks with bound decomposition tre
Title: Artificial Neural Networks and Their Usage For Knowledge Extraction Author: RNDr. Zuzana Petř...
Many constructive learning algorithms have been proposed to find an appropriate network structure fo...