论文标题
现代AI和深度学习的注释历史
Annotated History of Modern AI and Deep Learning
论文作者
论文摘要
机器学习是信用分配的科学:在观察中找到模式,以预测行动的后果并有助于提高未来的绩效。人类对世界如何运作的理解也需要学分分配,这不仅是对日常生活的个人,而且对于像过去的事件那样解释现在的历史学家等学术专业人士。在这里,我关注的是现代人工智能的历史(AI),该历史以人工神经网络(NNS)和深度学习为主,在概念上都比1956年以来所谓的AI更接近旧的网络学领域(例如,专家系统和逻辑计划)。 AI的现代历史将强调超出传统AI教科书重点之外的突破,尤其是当今NN的数学基础,例如链条规则(1676年),第一个NNS(Lineal Remession,Linear Remession,of Bifta 1800)和第一批工作深度学习者(1965--)。从2022年的角度来看,我提供了一个时间表 - 事后看来 - 在NNS历史上,最重要的相关事件,深度学习,AI,计算机科学和数学一般,归功于那些为该领域奠定基础的人。本文包含来自我AI博客的相关概述网站的许多超链接。它补充了我以前的深度学习调查(2015年),该调查提供了数百个其他参考。最后,要解决它,我将把事情放在更广泛的历史环境中,涵盖了大爆炸以来的时间,直到宇宙将比现在大很多倍。
Machine learning is the science of credit assignment: finding patterns in observations that predict the consequences of actions and help to improve future performance. Credit assignment is also required for human understanding of how the world works, not only for individuals navigating daily life, but also for academic professionals like historians who interpret the present in light of past events. Here I focus on the history of modern artificial intelligence (AI) which is dominated by artificial neural networks (NNs) and deep learning, both conceptually closer to the old field of cybernetics than to what's been called AI since 1956 (e.g., expert systems and logic programming). A modern history of AI will emphasize breakthroughs outside of the focus of traditional AI text books, in particular, mathematical foundations of today's NNs such as the chain rule (1676), the first NNs (linear regression, circa 1800), and the first working deep learners (1965-). From the perspective of 2022, I provide a timeline of the -- in hindsight -- most important relevant events in the history of NNs, deep learning, AI, computer science, and mathematics in general, crediting those who laid foundations of the field. The text contains numerous hyperlinks to relevant overview sites from my AI Blog. It supplements my previous deep learning survey (2015) which provides hundreds of additional references. Finally, to round it off, I'll put things in a broader historic context spanning the time since the Big Bang until when the universe will be many times older than it is now.