NOTES PERTAINING TO TITLE AND STATEMENT OF RESPONSIBILITY
Text of Note
A Practical Course
TOPICAL NAME USED AS SUBJECT
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Computational intelligence
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Data mining
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Electrical engineering
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Neural networks )Computer science(
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Pattern recognition
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Communications Engineering, Networks
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Computational Intelligence
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Data Mining and Knowledge Discovery
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Mathematical Models of Cognitive Processes and Neural Networks
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Pattern Recognition
LIBRARY OF CONGRESS CLASSIFICATION
Class number
QA
Book number
76
.
87
Classification Record Number
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D2A7
PERSONAL NAME - PRIMARY RESPONSIBILITY
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da Silva, Ivan Nunes author
PERSONAL NAME - ALTERNATIVE RESPONSIBILITY
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Introduction -- PART I - Neural Networks Architectures and Their Theoretical Aspects -- Architectures of Artificial Neural Networks and Training Processes -- Perceptron Network and Learning Rule -- Adaline Network and Delta Rule -- Multilayer Perceptron )MLP( -- Radial Basis Function )RBF( -- Recurrent Neural Topologies and Hopfield Network -- Self-Organizing Maps and Kohonen Network -- Learning Vector Quantization )LVQ( and Counter-Propagation Network -- Adaptive Resonance Theory )ART( -- Part II - Artificial Neural Networks Applications in Problems of Engineering and Applied Sciences -- Coffee Global Quality Estimation Using Multilayer Perceptron -- Computer Network Traffic Analysis Using SNMP Protocol and LVQ Network -- Forecasting Stock Market Trends Using Recurrent Network -- System for Disease Diagnosis Using ART Network -- Adulterants Patterns Identification in Coffee Powder Using Self-Organizing Maps -- Disturbances Recognition Related to Electrical Power Quality Using PMC Network -- Mobile Robot Trajectory Control Using Fuzzy System and MLP Network -- Method to Tomatoes Classification Using Computer Vision and MLP Network -- Analysis of RBF and MLP Network Performance in Pattern Classification Problems -- Solving Constrained Optimization Problems Using Hopfield Network -- Conclusion