DGCC: A Case for Integration of Brain Cognition and Intelligence Computation

Guoyin Wang
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引用次数: 2

Abstract

Both human brain and computer (electronic brain) could process data and do some cognition and computation tasks. Is the cognition of human brain equal to the computation of computer? It is obviously not. In this talk, the relationships of brain cognition models and intelligence computation models are summarized into four different types, that is, human brain cognition inspired intelligence computation (BCIIC), intelligence computation without human brain cognition (ICOBC), intelligence computation assisted human brain cognition (ICABC), and the integration of human brain cognition and intelligence computation (BC&IC). There are three paradigms in traditional artificial intelligence (AI) studies, that is, symbolism AI, connectionism AI, and behaviorism AI. The physical symbol system hypothesis is used in the symbolism AI. Human brain cognition is taken as a kind of symbolic processing, and the processes of human thinking are computed by symbol in the symbolism AI [1,2]. The connectionism AI relies on the bionics to simulate human brain. In the connectionism AI, neuron is taken as the basic unite of human thinking, and the intelligence is taken as the result of interconnected neurons competition and collaboration [3,4]. In the behaviorism AI, intelligence depends on the perception and behavior, “Perception-action” model is used, and intelligence may not require knowledge, knowledge representation and knowledge reasoning [5]. The symbolism AI and connectionism AI are two different types of human brain cognition inspired intelligence computation, while the behaviorism AI is a representative case of intelligence computation without human brain cognition. Usually, AI researchers get some inspiration from human brain cognition in their studies. On the other way, intelligence computation could also assist human brain cognition studies. The bidirectional cognitive computing model (BCC) is such a case. It studies the bidirectional transformations between the intension and extension of a concept. It is used to simulate some human brain cognition tasks such as learning and recognition [6,7]. Cognitive computing is one of the core fields of artificial intelligence [8,9]. Data-driven granular cognitive computing (DGCC) is an example of the integration of human brain cognition and intelligence computation [10,11]. It takes data as a special kind of knowledge expressed in the lowest granularity level of a multiple granularity space. It integrates two contradictory mechanisms, namely, the human’s cognition mechanism of ‘‘global precedence’’ which is a cognition process of ‘‘from coarser to finer’’ and the information processing mechanism of machine learning systems which is ‘‘from finer to coarser’’, in a multiple granularity space. It is data-driven cognitive computing model. The integration of human brain cognition and intelligence computation would be an important research topic of artificial intelligence. Some scientific research issues of the integration of human brain cognition and intelligence computation are discussed based on DGCC.
DGCC:脑认知与智能计算整合的案例
人脑和计算机(电子大脑)都可以处理数据并完成一些认知和计算任务。人脑的认知等于计算机的计算吗?显然不是。本讲座将脑认知模型与智能计算模型的关系归纳为四种不同类型,即人脑认知启发的智能计算(BCIIC)、无人脑认知的智能计算(ICOBC)、智能计算辅助人脑认知(ICABC)和人脑认知与智能计算的融合(BC&IC)。传统的人工智能研究有三种范式,即象征主义AI、联结主义AI和行为主义AI。符号人工智能采用了物理符号系统假设。在符号人工智能中,人类大脑的认知被视为一种符号处理,人类的思维过程是通过符号来计算的[1,2]。联结主义人工智能依靠仿生学来模拟人脑。在联结主义AI中,神经元被视为人类思维的基本单位,智能被视为相互连接的神经元竞争和协作的结果[3,4]。在行为主义AI中,智能依赖于感知和行为,使用“感知-行动”模型,智能可能不需要知识、知识表示和知识推理[5]。象征主义人工智能和联结主义人工智能是两种不同类型的人脑认知启发的智能计算,而行为主义人工智能是没有人脑认知的智能计算的代表案例。通常,人工智能研究人员在研究中会从人类大脑认知中获得一些灵感。另一方面,智能计算也可以辅助人类大脑认知研究。双向认知计算模型(BCC)就是这样一个例子。它研究一个概念的内涵和外延之间的双向转换。它被用来模拟人脑的一些认知任务,如学习和识别[6,7]。认知计算是人工智能的核心领域之一[8,9]。数据驱动的颗粒认知计算(DGCC)是人脑认知与智能计算相结合的一个例子[10,11]。它把数据作为一种特殊的知识,表达在多粒度空间的最低粒度层。它集成了两种相互矛盾的机制,即人类“全局优先”的认知机制,即“由粗到细”的认知过程和机器学习系统“由细到粗”的信息处理机制,在多粒度空间中。它是数据驱动的认知计算模型。人脑认知与智能计算的融合将是人工智能的一个重要研究课题。讨论了基于DGCC的人脑认知与智能计算集成的一些科学研究问题。
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