Dynamics of link formation in networks structured on the basis of predictive terms

S. Kramarov, O. R. Popov, I. Dzhariev, E. A. Petrov
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Abstract

Objectives. In order to model and analyze the information conductivity of complex networks having an irregular structure, it is possible to use percolation theory methods known in solid-state physics to quantify how close the given network is to a percolation transition, and thus to form a prediction model. Thus, the object of the study comprises international information networks structured on the basis of dictionaries of model predictive terms thematically related to cutting-edge information technologies.Methods. An algorithmic approach is applied to establish the sequence of combining the necessary operations for automated processing of textual information by the internal algorithms of specialized databases, software environments and shells providing for their integration during data transmission. This approach comprises the stages of constructing a terminological model of the subject area in the Scopus bibliographic database, then processing texts in natural language with the output of a visual map of the scientific landscape of the subject area in the VOSviewer program, and then collecting the extended data of parameters characterizing the dynamics of the formation of links of the scientific terminological network in the Pajek software environment.Results. Visual cluster analysis of the range of 645-3364 terms in the 2004-2021 dynamics of the memory and data storage technologies category, which are integrated into a total of 23 clusters, revealed active cluster formation in the field of the term quantum memory. On this basis, allowing qualitative conclusions are drawn concerning the local dynamics of the scientific landscape. The exploratory data analysis carried out in the STATISTICA software package indicates the correlation of the behavior of the introduced MADSTA keyword integrator with basic terms including periods of extremes, confirming the correctness of the choice of the methodology for detailing the study by year.Conclusions. A basis is established for the formation of a set of basic parameters required for an extensive computational modeling of a cluster formation in the semantic field of the scientific texts, especially in relation to simulations of the formation of the largest component of the network and percolation transitions.
基于预测项结构的网络中链路形成的动力学
目标。为了模拟和分析具有不规则结构的复杂网络的信息电导率,可以使用固态物理中已知的渗透理论方法来量化给定网络与渗透过渡的接近程度,从而形成预测模型。因此,本研究的对象包括以与前沿信息技术相关的模型预测术语词典为基础构建的国际信息网络。采用一种算法方法,通过在数据传输过程中提供集成的专用数据库、软件环境和外壳的内部算法,建立了组合文本信息自动处理所需操作的顺序。该方法包括在Scopus书目数据库中构建学科领域的术语模型,然后在VOSviewer程序中对自然语言文本进行处理,输出学科领域科学景观的可视化地图,最后在Pajek软件环境中收集表征科学术语网络链接形成动态的参数扩展数据。对2004-2021年内存和数据存储技术类别中645-3364个术语的动态进行视觉聚类分析,这些术语被整合到总共23个聚类中,揭示了量子内存术语领域的活跃聚类形成。在此基础上,可以得出关于科学景观的局部动态的定性结论。在STATISTICA软件包中进行的探索性数据分析表明,引入的MADSTA关键字积分器的行为与包括极值周期在内的基本术语之间存在相关性,从而证实了按年详细研究方法选择的正确性。为形成一组基本参数建立了基础,这些参数需要在科学文本的语义领域中对集群形成进行广泛的计算建模,特别是与网络中最大组成部分的形成和渗透过渡的模拟有关。
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