Deep learning : fundamentals, methods and applications

Author(s)

    • Porter, Julius

Bibliographic Information

Deep learning : fundamentals, methods and applications

Julius Porter, editor

(Education in a competitive and globalizing world series)

Novinka, [an imprint of] Nova Science, c2016

  • : [pbk.]

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Note

Includes bibliographical references (p. [61]-76) and index

Description and Table of Contents

Description

Deep Learning is gaining more and more popularity due to its success in various applications like Natural Language Processing (NLP), Image recognition and other Machine Learning (ML) paradigms. There are three conventional approaches that formed the basis for deep learning, Convolutional Neural Networks (CNNs), Deep Belief Networks (DBNs) and Stacked Auto-encoders. Following the tradition of other ML paradigms, deep learning also adopted non-conventional approaches for improving the performance. This book presents research on the fundamentals, methods and applications of deep learning. The first chapter provides a detailed description of the aforementioned non-conventional approaches and their applications. The second chapter presents research on deep learning in a digital learning environment and raises the question if digital instructional designs can catalyse deeper learning than traditional classroom teaching. The final chapter discusses in detail eight distinctive components of student well-being experiences that the authors believe could foster and optimise positive educational and non-educational outcomes.

Table of Contents

  • Preface
  • Deep Learning Using Unconventional Paradigms
  • Deep Learning in Open Source Learning Streams
  • Optimal Outcomes at School: A Focus on Theoretical Tenets for Consideration
  • Bibliography
  • Index.

by "Nielsen BookData"

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