Corporate performance: SMEs performance prediction using the decision tree and random forest models

A. Munde, Nandita Mishra
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引用次数: 0

Abstract

Stock markets are volatile and continue to alter based on the functioning of the company, historical documents, market-rate, and news updates with the timings. Stock price prediction is the utmost stimulating assignment. In the present communication, a study with data on the stock prices of the top small and medium-sized enterprises (SMEs) in the National Stock Exchange of India (NSE) was utilized to estimate the functioning of the technique executed. The results of this study demonstrate the impact of COVID-19 on the financial distress of SMEs and also helps us in understanding how a better prediction model can help in predicting financial distress. Many studies have been conducted to estimate the bankruptcy of the SME sector using accounting-based financial. But in this study, the leading principle was to exemplify the means to utilize machine learning (ML) algorithms in the bankruptcy prediction of SMEs. The outcomes from the proposed a decision tree and a random forest prototype are observed to be effective with a high accuracy rate. The study has practical implications on the prediction accuracy and practical value for banks in supporting the financial decision and can be used to access the loan applications of SMEs.
企业绩效:运用决策树和随机森林模型对中小企业绩效进行预测
股票市场是不稳定的,并根据公司的运作、历史文件、市场利率和新闻更新的时间而不断变化。股票价格预测是最刺激的任务。在本通讯中,利用印度国家证券交易所(NSE)顶级中小型企业(SMEs)股票价格数据的研究来估计所执行技术的功能。本研究的结果证明了COVID-19对中小企业财务困境的影响,也有助于我们了解更好的预测模型如何帮助预测财务困境。已经进行了许多研究,以估计破产的中小企业部门使用会计为基础的财务。但在本研究中,主要原则是举例说明在中小企业破产预测中利用机器学习(ML)算法的方法。结果表明,所提出的决策树和随机森林原型的结果具有较高的准确率。研究结果对预测的准确性和银行支持融资决策的实用价值具有实际意义,并可用于中小企业贷款申请的获取。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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