知识表示与发展的启发式自组织:可解释人工智能背景下的分析

Q3 Computer Science Radioelectronic and Computer Systems Pub Date : 2022-02-23 DOI:10.32620/reks.2022.1.04
S. Dotsenko, V. Kharchenko, O. Morozova, A. Rucinski, S. Dotsenko
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引用次数: 2

摘要

通过对启发式自组织系统和逻辑模型的主要理论规定的分析,得出根据O.G.Ivakhnenko的启发式自组织体系,首要任务是确定“决定不同图像本质”的因素内容。这些是表征特定主题区域的对象的图像。在确定了这些图像的组成和内容后,解决了下一个问题,即“生成新的成功启发式”的问题,在内容上,这是一个提高准确性的解决方案。请注意,我们谈论的是提高解决数据处理问题的准确性。由此可见,启发式自组织系统是一种数据处理系统。这允许启发式的多样性。内容上的启发式对应于启发式自组织系统中应用的逻辑规则。启发式自组织系统理论的主要条款是由O.G.Ivakhnenko在上个世纪80年代提出的,但直到今天仍然没有被注意到。此时,任务是解释为什么神经网络会做出这样的决定,而不是另一个决定。基于此,人工智能引入了“人工智能可解释性”的概念。正是启发式的内容以逻辑规则的形式形成了神经网络的结构,并决定了所做决策的逻辑。推导规则是构建人工神经网络的基础,它是一种溯因规则,不幸的是,它不符合第四种启发式,也不符合智能的定义:智能是测量事物的能力。不幸的是,没有一个神经网络能够测量事物。通过对推理基本规律内容的分析,得出辩证推理方法是推理基本逻辑方法的一般(生成)方法。不同之处在于三角关系中间成员的构成和内容,即关系的元素组合形式:从一个概念到另一个概念的过渡。人工智能的可解释性是指人工神经网络的结构和活动规律。但是现代人工神经网络理论忽略了逻辑规则(启发式)的存在,这些规则是由O.G.Ivakhnenko建立的。毕竟,只有知道解决问题所依据的规则,才有可能检查决策的正确性,而不是通过搜索这些规则。关于人工智能可解释性和机器识别理论的三个假设可以进一步定义为陈述或定理,并得到严格证明。
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Heuristic self-organization of knowledge representation and development: analysis in the context of explainable artificial intelligence
From the analysis of the main theoretical provisions of heuristic self-organization systems and logical models, it follows that according to O. G. Ivakhnenko's systems of heuristic self-organization, the first task is to determine the factors content “that determine the essence of different images”. These are the images that characterize the objects of a particular subject area. After determining the composition and content of these images, the next problem is solved, namely, the problem of “generating the new successful heuristic”, which in content is a solution that leads to increased accuracy. Note that we are talking about improving the accuracy of solving the problem of data processing. It follows from the above mentioned that heuristic self-organization systems are data processing systems. This allows the multiplicity of heuristics. Heuristics in content correspond to the logical rules applied in heuristic self-organization systems. The main provisions of the heuristic self-organization system theory were developed by O. G. Ivakhnenko in the eighties of the last century, but they remain unnoticed to this day. At this time, the task is to explain why the neural network makes such a decision and not another. Based on this, the concept of “explainability of artificial intelligence” was introduced for artificial intelligence. It is the content of heuristics that forms the structure of the neural network in the form of logical rules and determines the logic of the decision made. It is established that the derivation rule, which is the basis for constructing artificial neural networks, is an abductive rule, which, unfortunately, does not meet the fourth heuristic and does not meet the definition of intelligence: intelligence is the ability to measure things. Unfortunately, none of the neural networks can measure things. From the analysis of the basic rules content of inference, it follows that the dialectical method of inference is general (generating) for the basic logical methods of inference. The difference lies in the composition and content of the middle member of the triangular relationship, namely, in the form of the element combination of the relationship: the transition from one concept to another. The explainability of artificial intelligence refers to the laws of the structure and activity of artificial neural networks. But modern theories of artificial neural networks ignore the existence of logical rules (heuristics), which were established by O. G. Ivakhnenko. After all, only knowing the rules based on which problems are solved, it is possible to check the correctness of the decision, but not by searching for such rules. The three hypotheses about the explainability of artificial intelligence and the theory of machine identification can be further defined as statements or theorems and strictly proved.
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来源期刊
Radioelectronic and Computer Systems
Radioelectronic and Computer Systems Computer Science-Computer Graphics and Computer-Aided Design
CiteScore
3.60
自引率
0.00%
发文量
50
审稿时长
2 weeks
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