Space-Time Computing with Temporal Neural Networks (Synthesis Lectures on Computer Architecture)
暫譯: 時空計算與時間神經網絡(計算機架構綜合講座)
James E. Smith
- 出版商: Morgan & Claypool
- 出版日期: 2017-05-18
- 售價: $2,890
- 貴賓價: 9.5 折 $2,746
- 語言: 英文
- 頁數: 242
- 裝訂: Paperback
- ISBN: 1627059482
- ISBN-13: 9781627059480
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商品描述
Understanding and implementing the brain's computational paradigm is the one true grand challenge facing computer researchers. Not only are the brain's computational capabilities far beyond those of conventional computers, its energy efficiency is truly remarkable. This book, written from the perspective of a computer designer and targeted at computer researchers, is intended to give both background and lay out a course of action for studying the brain's computational paradigm. It contains a mix of concepts and ideas drawn from computational neuroscience, combined with those of the author.
As background, relevant biological features are described in terms of their computational and communication properties. The brain's neocortex is constructed of massively interconnected neurons that compute and communicate via voltage spikes, and a strong argument can be made that precise spike timing is an essential element of the paradigm. Drawing from the biological features, a mathematics-based computational paradigm is constructed. The key feature is spiking neurons that perform communication and processing in space-time, with emphasis on time. In these paradigms, time is used as a freely available resource for both communication and computation.
Neuron models are first discussed in general, and one is chosen for detailed development. Using the model, single-neuron computation is first explored. Neuron inputs are encoded as spike patterns, and the neuron is trained to identify input pattern similarities. Individual neurons are building blocks for constructing larger ensembles, referred to as "columns". These columns are trained in an unsupervised manner and operate collectively to perform the basic cognitive function of pattern clustering. Similar input patterns are mapped to a much smaller set of similar output patterns, thereby dividing the input patterns into identifiable clusters. Larger cognitive systems are formed by combining columns into a hierarchical architecture. These higher level architectures are the subject of ongoing study, and progress to date is described in detail in later chapters. Simulation plays a major role in model development, and the simulation infrastructure developed by the author is described.
商品描述(中文翻譯)
理解和實現大腦的計算範式是計算機研究人員面臨的真正重大挑戰。大腦的計算能力遠超過傳統計算機,其能量效率更是令人驚嘆。本書從計算機設計師的角度撰寫,針對計算機研究人員,旨在提供背景知識並規劃研究大腦計算範式的行動方案。書中包含了來自計算神經科學的概念和思想,並結合了作者的觀點。
作為背景,相關的生物特徵以其計算和通信特性進行描述。大腦的新皮層由大量互相連接的神經元構成,這些神經元通過電壓脈衝進行計算和通信,並且可以強烈主張精確的脈衝時序是該範式的一個重要元素。基於生物特徵,構建了一個基於數學的計算範式。其關鍵特徵是脈衝神經元,這些神經元在時空中進行通信和處理,並強調時間。在這些範式中,時間被用作通信和計算的自由資源。
首先一般性地討論神經元模型,然後選擇一個進行詳細開發。使用該模型,首先探索單神經元計算。神經元的輸入被編碼為脈衝模式,並訓練神經元識別輸入模式的相似性。單個神經元是構建更大集合的基礎,這些集合被稱為「柱」。這些柱以無監督的方式進行訓練,並集體運作以執行基本的認知功能,即模式聚類。相似的輸入模式被映射到一組更小的相似輸出模式,從而將輸入模式劃分為可識別的聚類。通過將柱組合成層次架構來形成更大的認知系統。這些更高層次的架構是持續研究的主題,至今的進展在後面的章節中有詳細描述。模擬在模型開發中扮演了重要角色,作者所開發的模擬基礎設施也在書中進行了描述。