Efficient, continual, and generalized learning in the brain - neural mechanism of Mental Schema 2.0.

IF 3.4 3区 医学 Q2 NEUROSCIENCES Reviews in the Neurosciences Pub Date : 2023-03-27 Print Date: 2023-12-15 DOI:10.1515/revneuro-2022-0137
Takefumi Ohki, Naoto Kunii, Zenas C Chao
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引用次数: 1

Abstract

There has been tremendous progress in artificial neural networks (ANNs) over the past decade; however, the gap between ANNs and the biological brain as a learning device remains large. With the goal of closing this gap, this paper reviews learning mechanisms in the brain by focusing on three important issues in ANN research: efficiency, continuity, and generalization. We first discuss the method by which the brain utilizes a variety of self-organizing mechanisms to maximize learning efficiency, with a focus on the role of spontaneous activity of the brain in shaping synaptic connections to facilitate spatiotemporal learning and numerical processing. Then, we examined the neuronal mechanisms that enable lifelong continual learning, with a focus on memory replay during sleep and its implementation in brain-inspired ANNs. Finally, we explored the method by which the brain generalizes learned knowledge in new situations, particularly from the mathematical generalization perspective of topology. Besides a systematic comparison in learning mechanisms between the brain and ANNs, we propose "Mental Schema 2.0," a new computational property underlying the brain's unique learning ability that can be implemented in ANNs.

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心理图式2.0的脑神经机制中的高效、持续和广义学习。
在过去的十年里,人工神经网络(ANNs)取得了巨大的进步;然而,人工神经网络与作为学习设备的生物大脑之间的差距仍然很大。为了缩小这一差距,本文通过关注人工神经网络研究中的三个重要问题:效率、连续性和泛化来回顾大脑中的学习机制。我们首先讨论了大脑利用各种自组织机制来最大化学习效率的方法,重点讨论了大脑自发活动在形成突触连接以促进时空学习和数值处理中的作用。然后,我们研究了实现终身持续学习的神经元机制,重点关注睡眠期间的记忆回放及其在大脑启发的人工神经网络中的实现。最后,我们探索了大脑在新情况下对所学知识进行泛化的方法,特别是从拓扑学的数学泛化角度。除了对大脑和人工神经网络之间的学习机制进行系统比较外,我们还提出了“心智模式2.0”,这是一种新的计算特性,可以在人工神经网络中实现大脑独特的学习能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Reviews in the Neurosciences
Reviews in the Neurosciences 医学-神经科学
CiteScore
9.40
自引率
2.40%
发文量
54
审稿时长
6-12 weeks
期刊介绍: Reviews in the Neurosciences provides a forum for reviews, critical evaluations and theoretical treatment of selective topics in the neurosciences. The journal is meant to provide an authoritative reference work for those interested in the structure and functions of the nervous system at all levels of analysis, including the genetic, molecular, cellular, behavioral, cognitive and clinical neurosciences. Contributions should contain a critical appraisal of specific areas and not simply a compilation of published articles.
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