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Informatics and Automation, 2024, Issue 23, volume 4, Pages 969–988
DOI: https://doi.org/10.15622/ia.23.4.2
(Mi trspy1311)
 

Artificial Intelligence, Knowledge and Data Engineering

The issues of creation of machine-understandable smart standards based on knowledge graphs

E. Shalfeeva, V. Gribova

Institute of Automation and Control Processes, Far Eastern Branch of the Russian Academy of Sciences
Abstract: The development of digital transformation requires the widespread use of digital technologies in standardization documents. One of the goals is to create standards with machine-understandable content that will allow the use of digital documents at various stages of development and production without the need for a human operator. The purpose of this work is to describe an approach for creating and translating industry normative documents into a machine-understandable representation for their further use in software services and systems. There are three types of SMART standard content: machine-readable, machine-interpretable, and machine-understandable. Knowledge graphs are actively used to formalize data and knowledge when solving various problems. The new two-level approach is proposed for the creation and translation into a machine-understandable representation of regulatory documents as knowledge graphs. The approach defines two types of interpretation of a smart document (human readability and machine understandability) through two related formats: a graph, each semantic node of which represents text in a natural language, and a network of concepts and strict connections. Each node of a human-readable graph corresponds (in general) to a subtree of a machine-readable knowledge graph. As the basis for ensuring the transformation of one form of smart standard representation into another form, LLM models are used, supplemented by a specialized adapter obtained as a result of additional training using the Parameter-Efficient Fine-Tuning approach. Requirements have been established for a set of problem- and subject-oriented tools for generating knowledge graphs. The conceptual architecture of the system for supporting the solution of a set of problems based on knowledge graphs is shown, and the principles for implementing software components that work with smart knowledge for intelligent software services are established.
Keywords: smart standard, regulatory document, machine-understandable representation, knowledge graph, two-level representation, LLM models.
Funding agency Grant number
Ministry of Science and Higher Education of the Russian Federation FWFW-2021-0004
FZNS-2023-0010
The research was carried out within the state assignment of IACP FEB RAS (Theme FWFW-2021-0004 – an approach for translating models of regulatory documents into a machine-understandable representation using LLM), and the Far Eastern Federal University (Theme FZNS-2023-0010 – an approach for creating regulatory documents as two-level graphs knowledge).
Received: 01.04.2024
Document Type: Article
UDC: 004.82
Language: Russian
Citation: E. Shalfeeva, V. Gribova, “The issues of creation of machine-understandable smart standards based on knowledge graphs”, Informatics and Automation, 23:4 (2024), 969–988
Citation in format AMSBIB
\Bibitem{ShaGri24}
\by E.~Shalfeeva, V.~Gribova
\paper The issues of creation of machine-understandable smart standards based on knowledge graphs
\jour Informatics and Automation
\yr 2024
\vol 23
\issue 4
\pages 969--988
\mathnet{http://mi.mathnet.ru/trspy1311}
\crossref{https://doi.org/10.15622/ia.23.4.2}
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