Neural versus neurofuzzy systems for credit approval
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چکیده
منابع مشابه
Financial credit-risk evaluation with neural and neurofuzzy systems
Credit-risk evaluation decisions are important for the ®nancial institutions involved due to the high level of risk associated with wrong decisions. The process of making credit-risk evaluation decision is complex and unstructured. Neural networks are known to perform reasonably well compared to alternate methods for this problem. However, a drawback of using neural networks for credit-risk eva...
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