斯洛伐克公司不繁荣的神经网络建模

Q2 Engineering
Marek Durica, Jaroslav Mazanec, Jaroslav Frnda
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引用次数: 0

摘要

早期发现潜在的财务问题是企业风险管理的重要任务之一。本文旨在提出基于不同类型神经网络的个体模型和集成模型。所创建的模型是根据几个量化指标进行评估的,最好的模型可以提前一年预测斯洛伐克公司即将出现的财务问题。对真正的斯洛伐克公司的财务报表中的真实数据进行精确分析和清理,产生了一个由近19 000家公司的9个潜在预测值组成的数据集。在训练样本上建立了基于MLP和rbf型神经网络以及Kohonen图的个体模型和集成模型。另一方面,一些指标量化了在测试样本上创建的模型的预测能力。与单个模型相比,集成模型具有更好的预测能力。MLP网络达到了近89%的最高总体准确率。然而,斯洛伐克公司的不繁荣最好是通过推动和套袋技术创建的RBF网络来确定的。这些模型的灵敏度约为87%。研究发现,基于神经网络的模型可以成功设计并用于预测斯洛伐克经济的财务困境。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neural network modelling of non-prosperity of Slovak companies
Abstract Early identification of potential financial problems is among important companies’ risk management tasks. This paper aims to propose individual and ensemble models based on various types of neural networks. The created models are evaluated based on several quantitative metrics, and the best-proposed models predict the impending financial problems of Slovak companies a year in advance. The precise analysis and cleaning of real data from the financial statements of real Slovak companies result in a data set consisting of the values of nine potential predictors of almost 19 thousand companies. Individual and ensemble models based on MLP and RBF-type neural networks and the Kohonen map are created on the training sample. On the other hand, several metrics quantify the predictive ability of the created models on the test sample. Ensemble models achieved better predictive ability compared to individual models. MLP networks achieved the highest overall accuracy of almost 89 %. However, the non-prosperity of Slovak companies was best identified by RBF networks created by the boosting and bagging technique. The sensitivity of these models is about 87 %. The study found that models based on neural networks can be successfully designed and used to predict financial distress in the Slovak economy.
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来源期刊
Engineering Management in Production and Services
Engineering Management in Production and Services Business, Management and Accounting-Management Information Systems
CiteScore
3.40
自引率
0.00%
发文量
27
审稿时长
7 weeks
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