Gradient Expectations: Structure, Origins, and Synthesis of Predictive Neural Networks
暫譯: 梯度期望:預測神經網絡的結構、起源與合成
Downing, Keith L.
- 出版商: Summit Valley Press
- 出版日期: 2023-07-18
- 售價: $2,530
- 貴賓價: 9.5 折 $2,404
- 語言: 英文
- 頁數: 224
- 裝訂: Quality Paper - also called trade paper
- ISBN: 0262545616
- ISBN-13: 9780262545617
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相關分類:
Machine Learning
海外代購書籍(需單獨結帳)
商品描述
An insightful investigation into the mechanisms underlying the predictive functions of neural networks--and their ability to chart a new path for AI.
Prediction is a cognitive advantage like few others, inherently linked to our ability to survive and thrive. Our brains are awash in signals that embody prediction. Can we extend this capability more explicitly into synthetic neural networks to improve the function of AI and enhance its place in our world? Gradient Expectations is a bold effort by Keith L. Downing to map the origins and anatomy of natural and artificial neural networks to explore how, when designed as predictive modules, their components might serve as the basis for the simulated evolution of advanced neural network systems.
Downing delves into the known neural architecture of the mammalian brain to illuminate the structure of predictive networks and determine more precisely how the ability to predict might have evolved from more primitive neural circuits. He then surveys past and present computational neural models that leverage predictive mechanisms with biological plausibility, identifying elements, such as gradients, that natural and artificial networks share. Behind well-founded predictions lie gradients, Downing finds, but of a different scope than those that belong to today's deep learning. Digging into the connections between predictions and gradients, and their manifestation in the brain and neural networks, is one compelling example of how Downing enriches both our understanding of such relationships and their role in strengthening AI tools.
Synthesizing critical research in neuroscience, cognitive science, and connectionism, Gradient Expectations offers unique depth and breadth of perspective on predictive neural-network models, including a grasp of predictive neural circuits that enables the integration of computational models of prediction with evolutionary algorithms.
商品描述(中文翻譯)
一項深入的調查,探討神經網絡預測功能背後的機制,以及它們為人工智慧開辟新道路的能力。
預測是一種少數幾種的認知優勢,與我們的生存和繁榮能力密切相關。我們的大腦充滿了體現預測的信號。我們能否更明確地將這一能力擴展到合成神經網絡中,以改善人工智慧的功能並增強其在我們世界中的地位?Gradient Expectations 是 Keith L. Downing 的一項大膽努力,旨在繪製自然和人工神經網絡的起源和結構,以探索當其設計為預測模塊時,其組件如何可能成為模擬進化的先進神經網絡系統的基礎。
Downing 深入研究哺乳動物大腦已知的神經結構,以闡明預測網絡的結構,並更精確地確定預測能力如何可能從更原始的神經電路中演化而來。接著,他調查了過去和現在利用具有生物學合理性的預測機制的計算神經模型,識別出自然和人工網絡所共享的元素,例如梯度。Downing 發現,良好的預測背後存在梯度,但其範疇與當今深度學習所屬的梯度不同。深入挖掘預測與梯度之間的聯繫,以及它們在大腦和神經網絡中的表現,是 Downing 豐富我們對這些關係的理解及其在加強人工智慧工具中的作用的一個引人注目的例子。
綜合神經科學、認知科學和連結主義的關鍵研究,Gradient Expectations 提供了對預測神經網絡模型獨特的深度和廣度的視角,包括對預測神經電路的理解,使計算預測模型與進化算法的整合成為可能。
作者簡介
Keith L. Downing is Professor of Artificial Intelligence and Artificial Life at the Norwegian University of Science and Technology and the author of Intelligence Emerging: Adaptivity and Search in Evolving Neural Systems (MIT Press).
作者簡介(中文翻譯)
基思·L·唐寧(Keith L. Downing)是挪威科技大學(Norwegian University of Science and Technology)人工智慧與人工生命的教授,也是《智慧的出現:演化神經系統中的適應性與搜尋》(Intelligence Emerging: Adaptivity and Search in Evolving Neural Systems,麻省理工學院出版社)的作者。