应用模糊神经网络分析银行财务状况及破产风险预测

Y. Zaychenko, M. Zgurovsky, Galib Hamidov
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引用次数: 1

摘要

研究了不确定条件下的银行破产风险预测问题。针对该问题的解决,提出并探索了应用计算智能方法模糊神经网络ANFIS和TSK以及归纳建模方法FGMDH。对乌克兰和欧洲主要银行的破产风险预测问题进行了实验调查,并对建议方法的效率进行了估计。并与ARMA、logit、probit等经典统计方法进行了效率比较。并与评价系统camel和矩阵法进行了对比实验。总的来说,比较分析表明,模糊预测方法和技术在预测破产风险方面比传统的清晰方法具有更好的效果。总的来说,对欧洲银行的实验结论完全证实了对乌克兰银行的实验结论。但与此同时,清脆的方法实施起来更简单,调整时间也更短。确定并估计了用于破产风险预测的信息性银行财务因素集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Banks Financial State Analysis and Bankruptcy Risk Forecasting with Application of Fuzzy Neural Networks
The problem of banks bankruptcy risk forecasting under uncertainty is considered. For its solution, the application of computational intelligence methods fuzzy neural networks ANFIS and TSK and inductive modeling method FGMDH was suggested and explored. Experimental investigations were carried out and estimation of the efficiency of the suggested methods was performed at the problems of bankruptcy risk forecasting for Ukrainian and leading European banks. The efficiency comparison with classic statistical methods such as ARMA, logit, and probit models was fulfilled. The comparative experiments with rating system CAMELS and matrix method were carried out. In general, the comparative analysis had shown that fuzzy forecasting methods and techniques give better results than conventional crisp methods for forecasting bankruptcy risk. On the whole, the conclusions of experiments with European banks completely confirmed the conclusions of experiments with Ukrainian banks. But at the same time, the crisp methods are more simple in implementation and demand less time for their adjustment. The set of informative bank financial factors for bankruptcy risk forecasting was determined and estimated.
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