神经信息学和神经计算基础理论

Yingxu Wang
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引用次数: 16

摘要

只提供摘要形式。对几乎所有科学学科来说,一个基本的挑战是解释生理器官是如何产生自然智能的,以及大脑在神经结构之外的逻辑模型是什么。根据认知信息学和抽象智能,对大脑的探索是一个复杂的递归问题,需要当代指称数学来有效地处理它。认知心理学和医学被用来解释大脑以某种方式工作,这是基于对通常重叠的大脑区域的相关活动的经验观察。然而,大脑研究中缺乏精确的模型和严格的因果关系,这使计算智能和数学研究人员的正式期望不满意,因为如果没有正式模型和严格手段的支持,计算机,大脑的逻辑对应物,可能无法用这种模糊和经验的方法来解释。为了从根本上解释大脑的结构和功能,以及它们之间错综复杂的关系和相互作用,需要建立大脑的系统模型,以便在神经、生理、认知和逻辑(抽象)层面揭示大脑的原理和机制。认知和脑信息学对大脑的研究,既通过自下而上的四个认知层次的归纳综合,形成基于经验观察的理论,又通过自上而下的演绎分析,根据抽象的智力理论解释各种功能和行为实例。本次主题演讲将从认知信息学、抽象智能、脑信息学、神经信息学和认知心理学等方面介绍大脑的系统模型。介绍了大脑的逻辑模型,将大脑的认知功能映射到其神经和生理结构上。这项工作导致了一个连贯的抽象智力理论,该理论基于指示数学模型和认知心理学观察,严格地解释了大脑的基本原理和机制。在抽象智力理论和大脑逻辑模型的基础上,大脑分层参考模型(LRMB)所识别的一整套认知行为,如感知、推理和学习,可以得到严格的解释和模拟。大脑的逻辑模型和自然智能的抽象智能理论将使能够感知、思考和学习的认知计算机的发展成为可能。认知计算机与经典计算机在功能和理论上的区别在于,经典计算机是基于布尔代数及其逻辑对应的数据处理器;而前者是基于当代指称数学的知识处理器。认知计算机的广泛应用在ICIC和我的实验室得到了发展,例如,除其他外,认知机器人,认知学习引擎,认知互联网,认知代理,认知搜索引擎,认知翻译,认知控制系统和认知汽车。
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Basic theories for neuroinformatics and neurocomputing
Summary form only given. A fundamental challenge for almost all scientific disciplines is to explain how natural intelligence is generated by physiological organs and what the logical model of the brain is beyond its neural architectures. According to cognitive informatics and abstract intelligence, the exploration of the brain is a complicated recursive problem where contemporary denotational mathematics is needed to efficiently deal with it. Cognitive psychology and medical science were used to explain that the brain works in a certain way based on empirical observations on related activities in usually overlapped brain areas. However, the lack of precise models and rigorous causality in brain studies has dissatisfied the formal expectations of researchers in computational intelligence and mathematics, because a computer, the logical counterpart of the brain, might not be explained in such a vague and empirical approach without the support of formal models and rigorous means. In order to fonnally explain the architectures and functions of the brain, as well as their intricate relations and interactions, systematic models of t he brain are s ought for revealing the principles and mechanisms of the brain at the neural, physiological, cognitive, and logical (abstract) levels. Cognitive and brain informatics investigate into the brain via not only inductive syntheses through these four cognitive levels from the bottom up in order to form theories based on empirical observations, but also deductive analyses from the top down in order to explain various functional and behavioral instances according to the abstract intelligence theory. This keynote lecture presents systematic models of the brain from the facets of cognitive informatics, abstract intelligence, brain Informatics, neuroinformatics, and cognitive psychology. A logical model of the brain is introduced that maps the cognitive functions of the brain onto its neural and physiological architectures. This work leads to a coherent abstract intelligence theory based on both denotational mathematical models and cognitive psychology observations, which rigorously explains the underpinning principles and mechanisms of the brain. On the basis of the abstract intelligence theories and the logical models of the brain, a comprehensive set of cognitive behaviors as identified in the Layered Reference Model of the Brain (LRMB) such as perception, inference and learning can be rigorously explained and simulated.The logical model of the brain and the abstract intelligence theory of natural intelligence will enable the development of cognitive computers that perceive, think and learn. The functional and theoretical difference between cognitive computers and classic computers are that the latter are data processors based on Boolean algebra and its logical counterparts; while the former are knowledge processors based on contemporary denotational mathematics. A wide range of applications of cognitive computers have been developing in ICIC and my laboratory such as, inter alia, cognitive robots, cognitive learning engines, cognitive Internet, cognitive agents, cognitive search engines, cognitive translators, cognitive control systems, and cognitive automobiles.
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