The Design of a Compound Neural Network-Based Economic Management Model for Advancing the Digital Economy

IF 3.6 3区 管理学 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS Journal of Organizational and End User Computing Pub Date : 2023-09-25 DOI:10.4018/joeuc.330678
Ke Shang, Muhammad Asif
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Abstract

The rapid progress of the digital economy has brought forth a myriad of complexities in economic governance, particularly in the domains of stocks and network finance. The authors propose the exploration of an innovative economic management model founded on the compound neural network framework. Central to this approach is the utilization of the deep bidirectional long and short-term memory neural network model (Bi-LSTM) as the primary instrument for predictive analysis, complemented by the refinement and enhancement provided by the Markov chain model. Through comparative analysis of experiments, it is found that although the forecast price of this model has a certain lag, it has a more accurate judgment than other prediction models, and the accuracy and recall rate reach 87.66% and 86.31%. At the same time, the error evaluation index R2 is very close to the upper limit 1 of the index, and the mean absolute error MAE Hill inequality coefficient; TIC root; mean square error; RMSE; and symmetric mean percentage error (SMAPE) are 0.2654, 0.0124, 0.3481, and 0.3531, respectively.
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推进数字经济的复合神经网络经济管理模型设计
数字经济的快速发展给经济治理带来了诸多复杂性,特别是在股票和网络金融领域。作者提出了基于复合神经网络框架的创新经济管理模式的探索。该方法的核心是利用深度双向长短期记忆神经网络模型(Bi-LSTM)作为预测分析的主要工具,辅以马尔可夫链模型的改进和增强。通过实验对比分析,发现该模型的预测价格虽然存在一定的滞后,但其判断比其他预测模型更为准确,准确率和召回率分别达到87.66%和86.31%。同时,误差评价指标R2非常接近该指标的上限1,且MAE的平均绝对误差为希尔不等式系数;抽搐的根;均方误差;RMSE;对称平均百分比误差(SMAPE)分别为0.2654、0.0124、0.3481和0.3531。
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来源期刊
Journal of Organizational and End User Computing
Journal of Organizational and End User Computing COMPUTER SCIENCE, INFORMATION SYSTEMS-
CiteScore
6.00
自引率
9.20%
发文量
77
期刊介绍: The Journal of Organizational and End User Computing (JOEUC) provides a forum to information technology educators, researchers, and practitioners to advance the practice and understanding of organizational and end user computing. The journal features a major emphasis on how to increase organizational and end user productivity and performance, and how to achieve organizational strategic and competitive advantage. JOEUC publishes full-length research manuscripts, insightful research and practice notes, and case studies from all areas of organizational and end user computing that are selected after a rigorous blind review by experts in the field.
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