在 XGBoost 算法支持下优化大数据分析资源:全面分析工业 5.0 和 ESG 性能

Q4 Engineering
Qing Su , Lifeng Chen , Limin Qian
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引用次数: 0

摘要

为了使工业 5.0 中的国有企业更好地开展并购活动,对并购风险进行预警是非常重要和必要的,这直接影响到并购双方的利益,甚至影响到国有企业改革的成效。笔者提出了在XGBoost算法支持下的大数据分析资源优化:工业5.0与ESG绩效综合分析。设计衡量国有上市公司并购风险的综合评价体系。使用 Python 编程语言实现数据抓取和处理。使用 XGBoost 算法建立预警模型。为进一步评估预警模型的有效性,进行了对比实验。使用多元线性回归模型研究并购风险的重要因素。实验结果表明,基于 XGBoost 算法的预测准确率为 80%,在所有模型中表现最好,具有更强的可靠性和适用性。结论投资资本回报率、营业利润率、有偿对价净利润对预测并购风险更重要、更有效;总资产周转率、投资资本回报率、股权制衡度、审计质量更有利于抑制并购风险。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimization of big data analysis resources supported by XGBoost algorithm: Comprehensive analysis of industry 5.0 and ESG performance
To enable state-owned enterprises in Industry 5.0 to better carry out M&A activities, it is important and necessary to provide early warning of M&A risks, which directly affects the interests of both parties and even affects the effectiveness of state-owned enterprise reform. The author proposes the optimization of big data analysis resources supported by the XGBoost algorithm: a comprehensive analysis of Industry 5.0 and ESG performance. Design a comprehensive evaluation system to measure the M&A risk of state-owned listed companies. Using Python programming language to achieve data crawling and processing. Build an early warning model using the XGBoost algorithm. To further evaluate the effectiveness of the early warning model, comparative experiments were conducted. Using multiple linear regression models to study the significant factors of merger and acquisition risk. The experimental results show that the prediction accuracy based on the XGBoost algorithm is 80 %, which performs the best among all models and has stronger reliability and applicability.

Conclusion

The return on investment capital, operating profit margin, and net profit from paid consideration are more important and effective in predicting merger and acquisition risks; The total asset turnover rate, return on investment capital, equity balance, and audit quality are more conducive to suppressing merger and acquisition risks.
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来源期刊
Measurement Sensors
Measurement Sensors Engineering-Industrial and Manufacturing Engineering
CiteScore
3.10
自引率
0.00%
发文量
184
审稿时长
56 days
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