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This book gives a systemic account of major concepts, methodologies of artificial neural networks and to present a unified frame work that makes the subject more accessible to students and practitioners. The book emphasizes fundamental theoretical aspects of the computational capabilities and learning abilities of artificial neural networks. It integrates important theoretical results on artificial neural networks and uses them to explain a wide range of existing empirical observations and commonly used heuristics. The main audience of the book is undergraduate students in electrical…mehr

Produktbeschreibung
This book gives a systemic account of major concepts, methodologies of artificial neural networks and to present a unified frame work that makes the subject more accessible to students and practitioners. The book emphasizes fundamental theoretical aspects of the computational capabilities and learning abilities of artificial neural networks. It integrates important theoretical results on artificial neural networks and uses them to explain a wide range of existing empirical observations and commonly used heuristics. The main audience of the book is undergraduate students in electrical engineering, computer science and engineering. It can also be used as a valuable resource for practical engineering, computer scientists and others involved in research of artificial neural networks
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Autorenporträt
Dr C Naga Bhaskar Ph.D is Professor and Principal, NRI Institute of Technology, Vijayawada. He has a vast teaching and research experience for the last 20 years. He has been awarded various National scholarships and fellowships during his academic and research career. He has large number of publications in International and National journals. He was awarded Best Teacher Award by JNTU Kakinada. He has guided several UG, PG and Ph.D Students. His areas of interest include Computational Fluid Mechanics.