利用机器学习评估新冠肺炎疫情对金融危机的影响

M. Mohseni
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引用次数: 2

摘要

在本研究中,研究了机器学习与商业机器学习对COVID-19大流行相关危机的复原力的关系。有两种方法用于评估大流行对机器学习风险的影响,以及根据危机的潜在负面后果确定部门优先次序的方法。我进行这项研究是为了确定桑坦德银行机器学习的弹性。数据挖掘领域为COVID-19的未来提供了前景。该组织共选择了13个机器学习演示。直接请求策略采用Hellweg策略和TOPSIS (order preference by similarity to ideal solution)方法。对机器学习在商业中的通用性的参数化评估是基于资本充足率、流动性比例、市场收益、在具有感知残疾的开放安排中的份额,以及机器学习的信贷组合对货币风险的影响。受COVID-19大流行影响,这些企业根据其威胁程度进行排名。根据研究结果,机器学习对大流行的效果最好。与此同时,机器学习在经济衰退期间受到的影响最大。例如,在关于大流行对发展商业部门稳健性和管理金融框架稳健性风险的影响的对话中可以看到这一点。
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Evaluating the impact of COVID-19 on the monetary crisis by machine learning
In this study, machine learning is examined in relation to commercial machine learning's resilience to the COVID-19 pandemic-related crisis. Two approaches are used to assess the pandemic's impact on machine learning risk, as well as a method to prioritize sectors according to the crisis's potential negative consequences. I conducted the study to determine Santander machine learning's resilience. The data mining area offers prospects for COVID-19's future. A total of 13 machine learning demos were selected for its organization. The Hellweg strategy and the technique for order preference by similarity to ideal solution (TOPSIS) technique were utilized as direct request strategies. Parametric assessment of machine learning versatility in business was based on capital sufficiency, liquidity proportion, market benefits, and share in an arrangement of openings with a perceived disability, and affectability of machine learning's credit portfolio to monetary hazard. As a result of the COVID-19 pandemic, these enterprises were ranked according to their threat. Based on the findings of the research, machine learning worked the best for the pandemic. Meanwhile, machine learning suffered the most during the downturn. It can be seen, for example, in conversations about the impact of the pandemic on developing business sector soundness and managing financial framework solidity risk.
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