Data Mining Technology of Country’s Digital Development Level Assessing for Economic Development and Sustainable Growth: Multivariate Adaptive Regression Spline

IF 4 3区 经济学 Q1 ECONOMICS
Lyeonov Serhiy, Yuriy Bilan, Koibichuk Vitaliia, Malyarets Lyudmyla, Ashfaq Ahmad, Carmen Gabriela Secară
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Abstract

The article deals with an optimal multivariate adaptive regression spline that describes the dependence of the countries’ digital development on the national cyber security index and accessible business. It is based on predictive methods of intelligent data analysis. The objects of the study are 103 countries. The statistical data of the investigated indicators of these countries were used for 2021 according to the reports of the e-Governance Academy and the World Bank Doing Business Group. The originality of the research lies in the multivariate adaptive regression spline of countries’ digital development level developed by the authors. The research is implemented within the scope of execution of four stages. A multiple regression model was developed to compare the results of the classical regression model and the results obtained by the MARS model, characterizing the influence of the national cyber security index and ease of doing business on digital development. Its development was implemented in the third stage. Both independent variables positively and directly affect the dependent indicator. At the same time, the influence of the “ease of doing business” index is four times greater than the national cyber security index, caused by the mass use of digital technologies in all business areas and the digital economy, and that is a stimulating factor of economic development. The absence of multicollinearity in the predictor variables was proven using the variance inflation factor test, and the statistical significance of the model — using the Student’s test, coefficient of determination, standard error of estimate, mean absolute error, Fisher’s test, and ANOVA. The MARS model was developed using the Salford Predictive Modeler software. The quality of the model is based on the generalized cross-validation criterion. The obtained results made it possible to comprehensively determine the influence of the cyber security national index and ease of doing business on the country’s digital development under study and can be used by analytical departments of socio-economic objects (banks, financial institutions), national cyber police bodies, national cyber security coordination centers for economic development and sustainable growth.

Abstract Image

国家数字化发展水平评估数据挖掘技术,促进经济发展和可持续增长:多元自适应回归样条曲线
文章论述了一种优化的多元自适应回归样条曲线,它描述了国家数字化发展对国家网络安全指数和可访问业务的依赖性。它基于智能数据分析的预测方法。研究对象为 103 个国家。根据电子政务研究院和世界银行营商环境小组的报告,这些国家的调查指标的统计数据被用于 2021 年。研究的独创性在于作者开发的国家数字发展水平多元自适应回归样条。研究在四个阶段的执行范围内进行。为了比较经典回归模型的结果和 MARS 模型的结果,建立了一个多元回归模型,以描述国家网络安全指数和经商便利程度对数字化发展的影响。该模型的开发在第三阶段进行。两个自变量都对因变量指标产生了直接的正向影响。同时,"营商便利度 "指数的影响是国家网络安全指数的四倍,这是由于数字技术在所有商业领域和数字经济中的大量使用,是经济发展的刺激因素。使用方差膨胀因子检验证明了预测变量不存在多重共线性,使用学生检验、决定系数、估计标准误差、平均绝对误差、费雪检验和方差分析证明了模型的统计意义。MARS 模型是使用 Salford Predictive Modeler 软件开发的。模型的质量基于广义交叉验证标准。所获得的结果能够全面确定网络安全国家指数和经商便利度对所研究国家数字化发展的影响,可供社会经济对象(银行、金融机构)的分析部门、国家网络警察机构、国家网络安全协调中心用于经济发展和可持续增长。
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来源期刊
CiteScore
5.90
自引率
27.30%
发文量
228
期刊介绍: In the context of rapid globalization and technological capacity, the world’s economies today are driven increasingly by knowledge—the expertise, skills, experience, education, understanding, awareness, perception, and other qualities required to communicate, interpret, and analyze information. New wealth is created by the application of knowledge to improve productivity—and to create new products, services, systems, and process (i.e., to innovate). The Journal of the Knowledge Economy focuses on the dynamics of the knowledge-based economy, with an emphasis on the role of knowledge creation, diffusion, and application across three economic levels: (1) the systemic ''meta'' or ''macro''-level, (2) the organizational ''meso''-level, and (3) the individual ''micro''-level. The journal incorporates insights from the fields of economics, management, law, sociology, anthropology, psychology, and political science to shed new light on the evolving role of knowledge, with a particular emphasis on how innovation can be leveraged to provide solutions to complex problems and issues, including global crises in environmental sustainability, education, and economic development. Articles emphasize empirical studies, underscoring a comparative approach, and, to a lesser extent, case studies and theoretical articles. The journal balances practice/application and theory/concepts.
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