Towards Neuromorphic Machine Intelligence: Spike-Based Representation, Learning, and Applications

Qu, Hong

  • 出版商: Academic Press
  • 出版日期: 2024-06-12
  • 售價: $6,380
  • 貴賓價: 9.5$6,061
  • 語言: 英文
  • 頁數: 250
  • 裝訂: Quality Paper - also called trade paper
  • ISBN: 044332820X
  • ISBN-13: 9780443328206
  • 海外代購書籍(需單獨結帳)

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商品描述

Towards Neuromorphic Machine Intelligence: Spike-Based Representation, Learning and Applications provides readers with in-depth understanding of Spiking Neural Networks (SNN), which is a burgeoning research branch of Artificial Neural Networks (ANN), AI, and Machine Learning that sits at the heart of the integration between Computer Science and Neural Engineering. In recent years, neural networks have re-emerged in relation to AI, representing a well-grounded paradigm rooted in disciplines from physics and psychology to information science and engineering. This book represents one of the established cross-over areas where neurophysiology, cognition, and neural engineering coincide with the development of new Machine Learning and AI paradigms. There are many excellent theoretical achievements in neuron models, learning algorithms, network architecture and so on. But these achievements are numerous and scattered, with a lack of straightforward systematic integration, making it difficult for researchers to assimilate and apply. As the third generation of Artificial Neural Networks (ANN), Spiking Neural Networks (SNN) simulate the neuron dynamics and information transmission in a biological neural system in more detail, which is a cross-product of computer science and neuroscience. The primary target audience of this book is divided into two categories: artificial intelligence researchers who know nothing about SNN, and researchers who know a lot about SNN. The former needs to acquire fundamental knowledge of SNN, but the challenge is that a large number of existing literatures on SNN only slightly mention the basic knowledge of SNN, or are too superficial, and this book gives a systematic explanation from scratch. The latter needs to learn about some novel research achievements in the field of SNN, and this book introduces the latest research results on different aspects of SNN and provides detailed simulation processes to facilitate readers' replication. In addition, the book introduces neuromorphic hardware architecture as a further extension of the SNN system. The book starts with the birth and development of SNN, and then introduces the main research hotspots, including spiking neuron models, learning algorithms, network architectures, and neuromorphic hardware. Therefore, the book provides readers with easy access to both the foundational concepts and recent research findings in SNN.

商品描述(中文翻譯)

《邁向類神經機器智慧:基於脈衝的表徵、學習與應用》為讀者提供了對脈衝神經網路(Spiking Neural Networks, SNN)的深入理解,這是人工神經網路(Artificial Neural Networks, ANN)、人工智慧(AI)和機器學習(Machine Learning)的一個新興研究領域,位於計算機科學與神經工程的整合核心。近年來,神經網路在人工智慧相關領域重新崛起,代表了一種扎根於物理學、心理學、資訊科學和工程等學科的成熟範式。本書代表了神經生理學、認知學和神經工程與新機器學習和人工智慧範式發展交匯的既定交叉領域。神經元模型、學習演算法、網路架構等方面有許多優秀的理論成就,但這些成就數量眾多且分散,缺乏直接的系統整合,使得研究人員難以吸收和應用。作為第三代人工神經網路,脈衝神經網路更詳細地模擬生物神經系統中的神經元動態和資訊傳遞,這是計算機科學與神經科學的交叉產物。本書的主要目標讀者分為兩類:對SNN一無所知的人工智慧研究者,以及對SNN有深入了解的研究者。前者需要獲得SNN的基本知識,但挑戰在於現有大量文獻僅稍微提及SNN的基本知識,或過於淺顯,而本書則從零開始提供系統性的解釋。後者則需要了解SNN領域的一些新穎研究成果,本書介紹了SNN不同方面的最新研究結果,並提供詳細的模擬過程以便讀者複製。此外,本書還介紹了類神經硬體架構,作為SNN系統的進一步延伸。本書從SNN的誕生與發展開始,然後介紹主要的研究熱點,包括脈衝神經元模型、學習演算法、網路架構和類神經硬體。因此,本書使讀者能夠輕鬆接觸到SNN的基礎概念和最新研究成果。