Deep learning classifiers with memristive networks : theory and applications
Author(s)
Bibliographic Information
Deep learning classifiers with memristive networks : theory and applications
(Modeling and optimization in science and technologies / series editors Srikanta Patnaik, Ishwar K. Sethi, Xiaolong Li, v. 14)
Springer, c2020
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Note
Includes bibliographical references
Description and Table of Contents
Description
This book introduces readers to the fundamentals of deep neural network architectures, with a special emphasis on memristor circuits and systems. At first, the book offers an overview of neuro-memristive systems, including memristor devices, models, and theory, as well as an introduction to deep learning neural networks such as multi-layer networks, convolution neural networks, hierarchical temporal memory, and long short term memories, and deep neuro-fuzzy networks. It then focuses on the design of these neural networks using memristor crossbar architectures in detail. The book integrates the theory with various applications of neuro-memristive circuits and systems. It provides an introductory tutorial on a range of issues in the design, evaluation techniques, and implementations of different deep neural network architectures with memristors.
Table of Contents
Available in MS
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