Economic issue of using artificial neural networks with radial-basis transmission functions for modeling efficiency of management processes

Volodymyr Martynyuk, Artur Dmowski, Marcin Gąsior, Grzegorz Hajduk
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引用次数: 0

Abstract

The paper presents the possibility of using artificial neural networks (ANN) with radial-basis transmission function (RBF) for modeling of economic phenomena and processes.The basic characteristics and parameters of an ANN with RBF are shown and the advantages of using this type of ANN for modeling economic phenomena and processes are emphasized. Using an ANN with RBF, together with official statistics for 2010-2017, the modeling of the influence caused by work efficiency indicators of the customs authorities of Ukraine on the indicators of economic security of Ukraine was carried out. These eighteen indicators of economic security of Ukraine, which comprehensively characterize the economic status of the country in terms of production, social, financial, food, transport, energy, and foreign economic security, were chosen as the most informative indicators.The results of the study showed that Artificial neural networks with Radial-basis transmission function well describe the trend of changing state economic security indicators under the influence of changing performance indicators of customs authorities. This allows us to recommend this type of artificial neural networks for analysis, evaluation and forecasting of economic phenomena and processes.The results obtained showed good analytical and prognostic properties of an ANN with RBF when modeling the impact of customs authorities' performance on the state's economic security indicators.
利用带有径向基础传输函数的人工神经网络建立管理过程效率模型的经济问题
论文介绍了使用具有径向基传输函数(RBF)的人工神经网络(ANN)对经济现象和过程进行建模的可能性。论文展示了具有 RBF 的人工神经网络的基本特征和参数,并强调了使用这种类型的人工神经网络对经济现象和过程进行建模的优势。利用带 RBF 的方差网络,结合 2010-2017 年的官方统计数据,对乌克兰海关当局的工作效率指标对乌克兰经济安全指标的影响进行了建模。研究结果表明,具有径向基础传输函数的人工神经网络能够很好地描述国家经济安全指标在海关当局工作效率指标变化影响下的变化趋势。研究结果表明,在建立海关当局绩效对国家经济安全指标影响的模型时,具有径向基础传输函数的人工神经网络具有良好的分析和预测性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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