Towards Human Brain Inspired Lifelong Learning (朝向人腦啟發的終身學習)

Li, Xiaoli, Ramasamy, Savitha, Ambikapathi, Arulmurugan

  • 出版商: World Scientific Pub
  • 出版日期: 2024-05-02
  • 售價: $4,030
  • 貴賓價: 9.5$3,829
  • 語言: 英文
  • 頁數: 276
  • 裝訂: Hardcover - also called cloth, retail trade, or trade
  • ISBN: 9811286701
  • ISBN-13: 9789811286704
  • 海外代購書籍(需單獨結帳)

相關主題

商品描述

Over the past few decades, the field of machine learning has made remarkable strides, surpassing human performance in tasks like voice and object recognition, as well as mastering various complex games. Despite these accomplishments, a critical challenge remains: the absence of general intelligence. Achieving artificial general intelligence (AGI) requires the development of learning agents that can continually adapt and learn throughout their existence, a concept known as lifelong learning.In contrast to machines, humans possess an extraordinary capacity for continuous learning throughout their lives. Drawing inspiration from human learning, there is immense potential to enable artificial learning agents to learn and adapt continuously. Recent advancements in continual learning research have opened up new avenues to pursue this objective.This book is a comprehensive compilation of diverse methods for continual learning, crafted by leading researchers in the field, along with their practical applications. These methods encompass various approaches, such as adapting existing paradigms like zero-shot learning and Bayesian learning, leveraging the flexibility of network architectures, and employing replay mechanisms to enable learning from streaming data without catastrophic forgetting of previously acquired knowledge.This book is tailored for researchers, practitioners, and PhD scholars working in the realm of Artificial Intelligence (AI). It particularly targets those envisioning the implementation of AI solutions in dynamic environments where data continually shifts, leading to challenges in maintaining model performance for streaming data.

商品描述(中文翻譯)

在過去幾十年中,機器學習領域取得了顯著的進展,超越了人類在語音和物體識別等任務中的表現,並掌握了各種複雜的遊戲。儘管取得了這些成就,但仍然存在一個關鍵挑戰:缺乏通用智能。實現人工通用智能(AGI)需要開發能夠在其存在期間持續適應和學習的學習代理,這一概念被稱為終身學習。與機器相比,人類擁有在整個生命中持續學習的非凡能力。受到人類學習的啟發,賦予人工學習代理持續學習和適應的潛力巨大。最近在持續學習研究方面的進展為追求這一目標開辟了新的途徑。

本書是由該領域的領先研究人員編寫的,全面匯編了多種持續學習的方法及其實際應用。這些方法涵蓋了各種途徑,例如調整現有的範式,如零樣本學習和貝葉斯學習,利用網絡架構的靈活性,以及採用重播機制以便從流數據中學習,而不會對先前獲得的知識造成災難性遺忘。

本書專為在人工智慧(AI)領域工作的研究人員、實務者和博士生量身打造。特別針對那些設想在數據不斷變化的動態環境中實施AI解決方案的人,這些環境導致在流數據中維持模型性能的挑戰。