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Predicting bankruptcy using neural networks and other classification methods: The influence of variable selection techniques on model accuracy

机译:使用神经网络和其他分类方法预测破产:变量选择技术对模型准确性的影响

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摘要

We evaluate the prediction accuracy of models designed using different classification methods depending on the technique used to select variables, and we study the relationship between the structure of the models and their ability to correctly predict financial failure. We show that a neural network based model using a set of variables selected with a criterion that it is adapted to the network leads to better results than a set chosen with criteria used in the financial literature. We also show that the way in which a set of variables may represent the financial profiles of healthy companies plays a role in Type I error reduction.
机译:我们根据用于选择变量的技术评估使用不同分类方法设计的模型的预测准确性,并研究模型的结构与其正确预测财务失败的能力之间的关系。我们表明,基于神经网络的模型使用的一组变量选择的准则适用于网络,这比使用金融文献中使用的标准选择的变量集产生更好的结果。我们还表明,一组变量可以代表健康公司的财务状况的方式在减少I类错误中发挥了作用。

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