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Bankruptcy Prediction Using Deep Learning Approach Based on Borderline SMOTE

机译:基于边疆扫描的深度学习方法破产预测

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Imbalanced classification on bankruptcy prediction is considered as one of the most important topics in financial institutions. In this context, various statistical and artificial intelligence methods have been proposed. Recently, deep learning algorithms are experiencing a resurgence of interest, and are widely used to build a prediction and classification models. To this end, we propose a novel deep learning-based approach called BSM-SAES. This approach combines Borderline Synthetic Minority oversampling technique (BSM) and Stacked AutoEncoder (SAE) based on the Softmax classifier. The aim is to develop an accurate and reliable bankruptcy prediction model which includes the features extraction process. To assess the classification performance of our proposed model, k- nearest neighbor, decision tree, support vector machine, and artificial neural network, C5.0 that are machine learning methods, are applied. We evaluate our proposed approach on the Polish imbalanced datasets. The obtained results confirm the efficiency of our proposed model compared to other machine learning models regarding predicting and classifying the financial status of a firm.
机译:对破产预测的不平衡分类被认为是金融机构最重要的主题之一。在这种情况下,已经提出了各种统计和人工智能方法。最近,深度学习算法正在经历感兴趣的复苏,并且广泛用于构建预测和分类模型。为此,我们提出了一种叫做BSM-Saes的新型深度学习的方法。该方法基于Softmax分类器结合了边界合成少数群体过采样技术(BSM)和堆叠的AutoEncoder(SAE)。目的是开发一种准确可靠的破产预测模型,包括提取过程的特征。为了评估我们所提出的模型,K-最近邻,决策树,支持向量机和人工神经网络,C5.0的分类性能,可以应用于机器学习方法。我们评估我们在波兰不平衡数据集上的提出方法。所获得的结果证实了我们提出模型的效率与关于预测和分类公司财务状况的其他机器学习模型相比。

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