Bank Soundness Level Prediction: ANFIS vs Deep Learning

Satia Nur Maharani
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Abstract

The systemic nature of the risk of bankruptcy of financial institutions has become an important issue in maintaining the existence and stability of domestic and global finance. The use of statistics for bankruptcy prediction so far provides optimal benefits. However, this approach has limitations, especially since the model is built based on systematic relationships, so the linearity and normality aspects are often weaknesses. This can be overcome very efficiently through linear and non-linear patterns built by artificial intelligence models. One of the most popular of these techniques is the Artificial Neural Network (ANN). Many studies show that ANN and fuzzy set theory is more accurate, adaptive, and strong in predicting compared to statistical models. One technique to integrate ANN with fuzzy logic systems is through the Adaptive-Network-Based Fuzzy Inference System (ANFIS). ANFIS is an adaptive network that is functionally equivalent to fuzzy inference and has the advantages of ANN and fuzzy logic. One of the important features of ANFIS is its acclimatization capability where the membership function parameters can adapt and change in the learning procedure. Utilizing the ANN model and fuzzy logic for bankruptcy prediction is still very limited in Indonesia. Therefore, this study aims to construct a financial institution bankruptcy prediction model that is much more accurate, operational quickly, and effective through ANFIS as a hybrid of fuzzy logic and ANN. The results showed that ANFIS can be used to predict the bankruptcy of financial institutions with the best MAPE 0.140335507.
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银行稳健性水平预测:ANFIS vs深度学习
金融机构破产风险的系统性已经成为维护国内和全球金融存在与稳定的重要问题。到目前为止,使用统计数据进行破产预测提供了最佳效益。然而,这种方法有局限性,特别是因为模型是基于系统关系建立的,所以线性和正态性方面往往是弱点。这可以通过人工智能模型建立的线性和非线性模式非常有效地克服。其中最流行的技术之一是人工神经网络(ANN)。许多研究表明,与统计模型相比,人工神经网络和模糊集理论具有更准确、自适应和更强的预测能力。将人工神经网络与模糊逻辑系统集成的一种技术是基于自适应网络的模糊推理系统(ANFIS)。ANFIS是一种功能等同于模糊推理的自适应网络,具有人工神经网络和模糊逻辑的优点。ANFIS的一个重要特征是它的适应能力,即隶属函数参数在学习过程中可以适应和改变。利用人工神经网络模型和模糊逻辑进行破产预测在印尼还很有限。因此,本研究旨在通过模糊逻辑与人工神经网络相结合的ANFIS,构建更加准确、快速、有效的金融机构破产预测模型。结果表明,ANFIS能够预测金融机构破产,其MAPE为0.140335507。
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