Bankruptcy Prediction Using Machine Learning: A New Technological Approach to Prevent Corporate Bankruptcy Through Well Deployed Streamlit Based Application

Manisha More, Rajasmita Panda, B. Bandgar, Mayuri More
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Abstract

Corporate bankruptcy prevention and prediction is the most significant problem in the finance domain. The successful machine learning based predictive model allows the corporate stakeholders to check the status of their business. It claims that the person or the organization is the debtor. The proposed research study focused on building a machine learning model to predict the bankruptcy and deploy ML model by using Streamlit, the open-source Python library. The ML framework helps to accept all the values of independent parameters and predict the corporate bankruptcy which leads to early actions to avoid economic losses. Bankruptcy prediction is a classification problem (Bankrupt / Non-Bankrupt). Since the variable to predict is binary. The predictive models are built by applying several machine learning algorithms such as SVM, KNN, Naive Bayes and CART. We find that SVM model with Polynomial Kernel which achieves a high degree of accuracy in all applied ML models. The SVM model with 96.00% model accuracy and 4% error rate is selected for prediction purposes. The SVM model then deployed with the help of Streamlit library to check bankruptcy classification. This application helps stakeholders to prevent their business from bankruptcy by checking through it in early stages. User has to just input the values and our model immediately displays the prediction of bankruptcy either bankrupt(0) or non-bankrupt (1).
利用机器学习进行破产预测:一种通过部署良好的基于流光的应用程序来防止企业破产的新技术方法
公司破产预防与预测是金融领域最重要的问题。成功的基于机器学习的预测模型允许公司利益相关者检查他们的业务状态。它声称个人或组织是债务人。拟议的研究重点是建立一个机器学习模型来预测破产,并通过使用开源Python库Streamlit部署ML模型。机器学习框架有助于接受独立参数的所有值,并预测公司破产,从而导致早期行动以避免经济损失。破产预测是一个分类问题(破产/非破产)。因为要预测的变量是二进制的。采用SVM、KNN、朴素贝叶斯和CART等机器学习算法建立预测模型。我们发现多项式核支持向量机模型在所有应用的机器学习模型中都达到了很高的准确率。选择模型准确率为96.00%,错误率为4%的SVM模型进行预测。然后利用Streamlit库部署SVM模型进行破产分类检查。此应用程序帮助利益相关者通过在早期阶段检查来防止其业务破产。用户只需输入值,我们的模型立即显示破产预测,破产(0)或非破产(1)。
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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