一种新的基于决策树算法的财务风险预警策略

Sci. Program. Pub Date : 2022-01-07 DOI:10.1155/2022/4648427
Lili Tong, Guoliang Tong
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引用次数: 1

摘要

本文需要对财务风险进行大量的假设,不能使用所有的数据,往往仅限于财务数据;而在过去,大多数金融危机预警模型都没有,因此无法跟踪金融指标的波动和变化趋势。采用决策树算法模型,提出了一种财务风险预警方法。企业受到金融危机的影响,有的甚至破产。另一方面,任何金融危机都有一个逐渐恶化的过程。因此,跟踪和监控公司的财务运作是至关重要的,这样可以发现财务危机的早期预警信号,并采取有效措施来减轻公司的经营风险。本文利用大数据中的决策树算法,建立财务预警系统,对财务运行进行预测。经营者可以采取措施改善企业经营,防止财务危机萌芽阶段的失败,避免发现企业财务危机的萌芽后造成更大的损失,避免发现企业财务危机的萌芽后造成更大的损失。这种预测可以被银行和其他金融机构用来帮助他们做出贷款决策并跟踪他们的贷款。相关企业可以利用这一信号进行信贷决策,有效管理应收账款;注册会计师可以利用这些预警信息来确定他们的审计程序,评估企业的前景,降低审计风险。因此,现代企业管理应以稳健经营原则为指导。在业务风险或财务危机发生前,提前准备应急预案,化解财务危机,降低财务风险。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Financial Risk Early Warning Strategy Based on Decision Tree Algorithm
This paper requires a lot of assumptions for financial risk, which cannot use all of the data and is often limited to financial data; and in the past, most early warning models for financial crises did not, so they could not track the fluctuation and change trend of financial indicators. A decision tree algorithm model is used to propose a financial risk early warning method. Enterprises have suffered as a result of the financial crisis, and some have even gone bankrupt. Any financial crisis, on the other hand, has a gradual and deteriorating course. As a result, it is critical to track and monitor the company's financial operations so that early warning signs of a financial crisis can be identified and effective measures taken to mitigate the company’s business risk. This paper establishes a financial early warning system to predict financial operations using the decision tree algorithm in big data. Operators can take measures to improve their enterprise’s operation and prevent the failure of the embryonic stage of the financial crisis, to avoid greater losses after discovering the bud of the enterprise’s financial crisis, and to avoid greater losses after discovering the bud of the enterprise’s financial crisis. This prediction can be used by banks and other financial institutions to help them make loan decisions and keep track of their loans. Relevant businesses can use this signal to make credit decisions and effectively manage accounts receivable; CPAs can use this early warning information to determine their audit procedures, assess the enterprise's prospects, and reduce audit risk. As a result, the principle of steady operation should guide modern enterprise management. Prepare emergency plans in advance of a business risk or financial crisis to resolve the financial crisis and reduce the financial risk.
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