Knowledge Agora



Scientific Article details

Title Revolutionizing Economic Growth Analysis: a Novel Computational Approach to Assessing the Influence of Technological Financial Efficiency on Real Economic Growth
ID_Doc 18170
Authors Jiang, CY
Title Revolutionizing Economic Growth Analysis: a Novel Computational Approach to Assessing the Influence of Technological Financial Efficiency on Real Economic Growth
Year 2023
Published
DOI 10.1007/s13132-023-01533-0
Abstract In the pursuit of comprehending the intricate relationship between scientific and technological financial efficiency and real economic growth, traditional methodologies have often encountered limitations arising from historical data induction. This study introduces a novel approach by leveraging a computer data association algorithm as a cornerstone for calculating this impact. The efficiency of science and technology finance is quantified by meticulously selecting pertinent indicators and employing the data envelopment analysis method. The utilization of a multi-objective data association tracking algorithm, rooted in fuzzy clustering, allows the extraction of synchronous data change patterns. This research further constructs an intermediary effect analysis model, guided by the principle of intermediary effect analysis, and subsequently validates the results through a Bootstrap intermediary effect test. The empirical analysis illuminates that at the national level, the regression coefficient of science and technology financial efficiency stands at 0.259, underscoring its role in promoting real economic growth. This innovative methodology not only addresses historical limitations but also advances our understanding of the symbiotic relationship between finance, science, and technology, thus offering a robust foundation for future research and policy decisions.
Author Keywords Data association algorithm; Technology finance efficiency; Real economy; Intermediary effect; Data envelopment analysis
Index Keywords Index Keywords
Document Type Other
Open Access Open Access
Source Social Science Citation Index (SSCI)
EID WOS:001090676700001
WoS Category Economics
Research Area Business & Economics
PDF
Similar atricles
Scroll