通过大数据分析发现ESG评分财务绩效的差异

Yang Daying, You Zi’Ao
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引用次数: 0

摘要

企业报告领域的最新创新是环境信息披露。实际上,这是一种可以更准确地描述公司长期产生财务业绩的能力的技术。因此,本文利用社会和道德行为的调节作用,考察了ESG指数上市公司的环境披露(ED)是否会影响其财务绩效(FP)。大数据的发展给金融创新带来了可能,也带来了问题。在许多方面,智能手机的发展给个人和文明带来了安慰。此外,缺乏实证研究来检验BD对财务绩效和市场价值的影响。这表明,虽然环境信息披露薄弱会降低财务绩效,但良好的披露会提高财务绩效。此外,研究认为社会和道德行为对环境信息披露与公司财务绩效之间的关系具有调节作用。最近建立的双机器学习框架可以处理有趣的因果关系,而naïve机器学习的使用通常在这种情况下失败。根据广泛的研究和测试,使用朴素贝叶斯等经典分类器和CNN等迁移学习模型对态度进行分类的最新发现超过了朴素贝叶斯和模型分类器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Discovering variation financial performance of ESG scoring through big data analytics
The newest innovation in the world of corporate reporting is environmental disclosure. In actuality, it is a technique that may more accurately depict a company’s ability to produce financial performance over time. Therefore, utilising the moderating influence of social and ethical behaviours, this article examines whether environmental disclosure (ED) done by companies listed on the ESG index affects their financial performance (FP). Both possibilities and problems for financial innovation are brought by the growth of big data (BD). In many respects, the development of BD has given comfort to individuals and civilizations. Additionally, there is a dearth of empirical research examining the impact of the BD on financial performance and market value. This suggests that although a weak environmental disclosure lowers financial performance, a good one raises it. Additionally, the study contends that social and ethical behaviours have a moderating influence on the relationship between environmental disclosure and the firm’s financial performance. The recently established double machine learning framework may handle interesting causal concerns, whereas the naïve use of machine learning typically fails in this situation. The most recent findings for categorising attitudes using classical classifiers like Naive Bayes and transfer learning models like CNN surpass the Naive Bayes and model classifiers, according to extensive research and tests.
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