Národní úložiště šedé literatury Nalezeno 4 záznamů.  Hledání trvalo 0.01 vteřin. 
Fuzzy Neural Networks for Pattern Classification
Ollé, Tamás ; Kontár, Stanislav (oponent) ; Vágnerová, Jitka (vedoucí práce)
This work describes the principle of operation of neurons and how they form artificial neural networks. The structure and the operation of neurons are thoroughly described and the most widely used algorithm for neuron training is shown as well as the basics of fuzzy logic including its advantages and disadvantages. This work fully describes the backpropagation algorithm and the adaptive neuro-fuzzy inference system. These techniques provide effective methods of neural network learning.
Fuzzy Neural Networks for Pattern Classification
Ollé, Tamás ; Raida, Zbyněk (oponent) ; Vágnerová, Jitka (vedoucí práce)
This work describes the principle of operation of neurons and how they form artificial neural networks. The structure and the operation of neurons are thoroughly described and the most widely used algorithm for neuron training is shown as well as the basics of fuzzy logic including its advantages and disadvantages. This work fully describes the backpropagation algorithm and the adaptive neuro-fuzzy inference system. These techniques provide effective methods of neural network learning.
Fuzzy Neural Networks for Pattern Classification
Ollé, Tamás ; Kontár, Stanislav (oponent) ; Vágnerová, Jitka (vedoucí práce)
This work describes the principle of operation of neurons and how they form artificial neural networks. The structure and the operation of neurons are thoroughly described and the most widely used algorithm for neuron training is shown as well as the basics of fuzzy logic including its advantages and disadvantages. This work fully describes the backpropagation algorithm and the adaptive neuro-fuzzy inference system. These techniques provide effective methods of neural network learning.
Fuzzy Neural Networks for Pattern Classification
Ollé, Tamás ; Raida, Zbyněk (oponent) ; Vágnerová, Jitka (vedoucí práce)
This work describes the principle of operation of neurons and how they form artificial neural networks. The structure and the operation of neurons are thoroughly described and the most widely used algorithm for neuron training is shown as well as the basics of fuzzy logic including its advantages and disadvantages. This work fully describes the backpropagation algorithm and the adaptive neuro-fuzzy inference system. These techniques provide effective methods of neural network learning.

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