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Early detection of corporate failure using neural network

机译:使用神经网络及早发现企业失败

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摘要

Bankruptcy prediction is important in today's turbulent business climate. Traditional statistical methods like multivariate discriminant analysis have achieved some success in this area. In this study, a branch of artificial intelligence: neural network is used to predict bankruptcy. In particular, a feedforward back-propagation neural network model is applied to a sample of U.S. bankrupt and healthy companies from manufacturing and services sector. Various topologies and learning parameters are experimented to find the highest possible overall accuracy rate for predicting bankruptcy. The experiments are conducted using software Neural Planner version 4.5. Results indicate that the optimal 5 hidden neuron three-layer network achieves acceptable, over 90% overall accuracy rate on testing samples. As early as three years prior to bankruptcy, neural network models correctly classify 83.3% and 82.5% of testing samples. This study also analyses the comparison between multivariate discriminant statistical model and neural network models. Results show that the latter outperformed the former.
机译:在当今动荡的商业环境中,破产预测非常重要。诸如多元判别分析之类的传统统计方法已在该领域取得了一些成功。在这项研究中,人工智能的一个分支:神经网络用于预测破产。特别是,前馈反向传播神经网络模型被应用于来自制造业和服务业的美国破产和健康公司的样本。对各种拓扑和学习参数进行了实验,以找到用于预测破产的最高可能的总体准确率。使用软件Neural Planner 4.5版进行实验。结果表明,最佳的5个隐藏神经元三层网络达到了可接受的标准,测试样本的总体准确率超过90%。早在破产前的三年,神经网络模型就可以正确分类测试样本的83.3%和82.5%。本研究还分析了多元判别统计模型与神经网络模型之间的比较。结果表明,后者优于前者。

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