Semantic models and tools for the development of artificial neural networks and their integration into knowledge bases

M. V. Kovalev
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Abstract

Objectives . Specifications of models and tools for the development of artificial neural networks (ANNs) and their integration into knowledge bases (KBs) of intelligent systems are being developed. The relevance is determined by the necessity of implementing the possibility to solve complex problems by intelligent systems, which algorithms and methods of solving are not available in the knowledge base of the intelligent system. Methods . Four levels of integration of artificial neural networks into knowledge bases are formulated and analyzed. During the analysis the requirements and specifications for required models and tools for the development and integration are formulated. Specified at each level the models and tools include the models and tools of previous level. The application of the tools is considered by the example of solving the problem of classifying the knowledge base entities using a graph neural network. Results . The specifications of the ANN representation model in the knowledge base, the agent-based model for the development and interpretation of the ANN, which ensures the integration of the ANN into knowledge bases at all selected levels, as well as the method for classifying knowledge base entities using a graph neural network, have been developed. Conclusion . The developed models and tools allow integrating any trained ANNs into the knowledge base of the intelligent system and using them to solve complex problems within the framework of OSTIS technology. It also becomes possible to design and train ANNs both on the basis of external data and on the basis of fragments of the knowledge base. Automation of ANNs development process in the knowledge base becomes available.
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开发人工神经网络的语义模型和工具及其与知识库的集成
目标。开发人工神经网络(ann)及其集成到智能系统知识库(KBs)的模型和工具的规范正在开发中。这种相关性是由实现智能系统解决复杂问题的可能性的必要性决定的,而这些问题的求解算法和方法在智能系统的知识库中是不可用的。方法。提出并分析了人工神经网络与知识库集成的四个层次。在分析过程中,制定了开发和集成所需的模型和工具的需求和规范。在每个级别指定的模型和工具包括前一级别的模型和工具。以利用图神经网络解决知识库实体分类问题为例,说明了这些工具的应用。结果。提出了人工神经网络在知识库中的表示模型规范、用于人工神经网络开发和解释的基于agent的模型,该模型保证了人工神经网络在所有选定层次上与知识库的集成,以及使用图神经网络对知识库实体进行分类的方法。结论。开发的模型和工具允许将任何经过训练的人工神经网络集成到智能系统的知识库中,并使用它们在OSTIS技术框架内解决复杂问题。基于外部数据和基于知识库碎片设计和训练人工神经网络也成为可能。在知识库中实现人工神经网络开发过程的自动化。
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审稿时长
8 weeks
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