Intelligence-driven Growth: Exploring the dynamic impact of digital transformation on China's high-quality economic development

IF 4.8 2区 经济学 Q1 BUSINESS, FINANCE
Yu-Cheng Lin, Xuhong Xu
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引用次数: 0

Abstract

Digital transformation has emerged as a crucial driver of high-quality economic growth and represents one of China's key strategies for achieving sustainable development. Its role in enhancing total factor productivity (TFP) and promoting green and sustainable practices is of significant importance. Drawing on a comprehensive dataset spanning 1993 to 2023 in China, this study employs a combination of social network analysis (SNA) and deep learning techniques to investigate the impact of digital transformation on high-quality economic development, as main measured by green total factor productivity (GTFP). The findings reveal three key insights: First, leveraging location-based big data analysis, industrial automation (IR) and economic policy uncertainty (EPU) are identified as the primary factors significantly influencing China's high-quality economic development. Second, while IR positively influences GTFP, EPU exerts a negative impact. Third, comparative evaluation of multiple models indicates that recurrent neural networks (RNN) outperform others in accurately predicting GTFP. This study introduces a novel methodological framework integrating data-driven forecasting with systemic policy interventions. By leveraging big data analysis to identify critical influencing factors and employing deep learning techniques to predict GTFP, this research broadens interdisciplinary approaches to sustainability. Additionally, the findings offer theoretical guide and actionable insights for strategic planning toward a green and sustainable economic future.
智能驱动增长:探讨数字化转型对中国经济高质量发展的动态影响
数字化转型已成为高质量经济增长的重要推动力,也是中国实现可持续发展的关键战略之一。它在提高全要素生产率(TFP)和促进绿色和可持续实践方面的作用非常重要。本研究利用中国1993年至2023年的综合数据集,采用社会网络分析(SNA)和深度学习技术相结合的方法,以绿色全要素生产率(GTFP)为主要衡量指标,研究了数字化转型对高质量经济发展的影响。研究结果揭示了三个关键见解:首先,利用基于位置的大数据分析,工业自动化(IR)和经济政策不确定性(EPU)被确定为影响中国经济高质量发展的主要因素。第二,对外投资对GTFP有正向影响,而对外收入对GTFP有负向影响。第三,多个模型的对比评价表明,递归神经网络(RNN)在准确预测GTFP方面优于其他模型。本研究引入了一种新的方法框架,将数据驱动的预测与系统的政策干预相结合。通过利用大数据分析来确定关键的影响因素,并采用深度学习技术来预测GTFP,本研究拓宽了跨学科的可持续性研究方法。此外,研究结果为实现绿色和可持续经济未来的战略规划提供了理论指导和可操作的见解。
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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来源期刊
CiteScore
7.30
自引率
2.20%
发文量
253
期刊介绍: The International Review of Economics & Finance (IREF) is a scholarly journal devoted to the publication of high quality theoretical and empirical articles in all areas of international economics, macroeconomics and financial economics. Contributions that facilitate the communications between the real and the financial sectors of the economy are of particular interest.
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