深層学習入門<br>Introduction to Deep Learning〈1st ed. 2018〉 : From Logical Calculus to Artificial Intelligence

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深層学習入門
Introduction to Deep Learning〈1st ed. 2018〉 : From Logical Calculus to Artificial Intelligence

  • 著者名:Skansi, Sandro
  • 価格 ¥9,072 (本体¥8,248)
  • Springer(2018/02/04発売)
  • ポイント 82pt (実際に付与されるポイントはご注文内容確認画面でご確認下さい)
  • 言語:ENG
  • ISBN:9783319730035
  • eISBN:9783319730042

ファイル: /

Description

This textbook presents a concise, accessible and engaging first introduction to deep learning, offering a wide range of connectionist models which represent the current state-of-the-art. The text explores the most popular algorithms and architectures in a simple and intuitive style, explaining the mathematical derivations in a step-by-step manner. The content coverage includes convolutional networks, LSTMs, Word2vec, RBMs, DBNs, neural Turing machines, memory networks and autoencoders. Numerous examples in working Python code are provided throughout the book, and the code is also supplied separately at an accompanying website.

Topics and features: introduces the fundamentals of machine learning, and the mathematical and computational prerequisites for deep learning; discusses feed-forward neural networks, and explores the modifications to these which can be applied to any neural network; examines convolutional neural networks, and the recurrent connections to a feed-forward neural network; describes the notion of distributed representations, the concept of the autoencoder, and the ideas behind language processing with deep learning; presents a brief history of artificial intelligence and neural networks, and reviews interesting open research problems in deep learning and connectionism.

This clearly written and lively primer on deep learning is essential reading for graduate and advanced undergraduate students of computer science, cognitive science and mathematics, as well as fields such as linguistics, logic, philosophy, and psychology.

Table of Contents

From Logic to Cognitive Science.- Mathematical and Computational Prerequisites.- Machine Learning Basics.- Feed-forward Neural Networks.- Modifications and Extensions to a Feed-forward Neural Network.- Convolutional Neural Networks.- Recurrent Neural Networks.- Autoencoders.- Neural Language Models.- An Overview of Different Neural Network Architectures.- Conclusion.