深度学习发展下的互联网金融风险管理

IF 0.7 Q4 NURSING
Ziai Wu, Qiao Zhou
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引用次数: 1

摘要

随着互联网金融在数量和规模上的快速发展,各种挑战也随之显现。深度学习是一个很有前途的工具,可以探索最优算法来分析影响互联网金融风险的输入变量,并进行相应的分类,以管理和最小化这些风险。本研究采用问卷调查法和数据分析法对互联网金融风险进行评估,重点从心理风险、社会风险、技术风险、道德风险和物质风险四个方面进行评估。本研究在互联网金融风险管理领域具有一定的理论和实践价值。研究结果表明,心理风险、社会风险、技术风险、物质风险和道德风险都是导致互联网金融风险的重要因素。此外,高等教育是防范互联网金融风险的保护因素,而高收入与更大的风险相关。此外,心理风险对互联网金融风险的影响最为显著。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Internet Financial Risk Management Under the development of Deep Learning
With the rapid development of Internet finance in both quantity and scale, various challenges have emerged. Deep learning is a promising tool to explore the optimal algorithm to analyze input variables that affect Internet financial risks, and corresponding classification to manage and minimize those risks. This study employs a questionnaire and data analysis to evaluate Internet financial risks, with a focus on psychological risk, social risk, technical risk, moral risk, and material risk. The research provides theoretical and practical value in the field of Internet financial risk management. The results of the study demonstrate that psychological risk, social risk, technical risk, material risk, and moral risk are all significant factors that contribute to Internet financial risks. Additionally, higher education is found to be a protective factor against Internet financial risks, while higher income is associated with greater risk. Furthermore, psychological risks were found to have the most significant impact on Internet financial risks.
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来源期刊
CiteScore
1.40
自引率
14.30%
发文量
3
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