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Bankruptcy forecasting: An empirical comparison of AdaBoost and neural networks

机译:破产预测:AdaBoost与神经网络的经验比较

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The goal of this study is to show an alternative method to corporate failure prediction. In the last decades Artificial Neural Networks have been widely used for this task. These models have the advantage of being able to detect non-linear relationships and show a good performance in presence of noisy information, as it usually happens, in corporate failure prediction problems. AdaBoost is a novel ensemble learning algorithm that constructs its base classifiers in sequence using different versions of the training data set. In this paper, we compare the prediction accuracy of both techniques on a set of European firms, considering the usual predicting variables such as financial ratios, as well as qualitative variables, such as firm size, activity and legal structure. We show that our approach decreases the generalization error by about thirty percent with respect to the error produced with a neural network.
机译:这项研究的目的是显示一种替代方法来预测公司失败。在过去的几十年中,人工神经网络已广泛用于此任务。这些模型的优点是能够检测非线性关系,并且在企业故障预测问题中通常在发生嘈杂信息的情况下表现出良好的性能。 AdaBoost是一种新颖的集成学习算法,它使用训练数据集的不同版本按顺序构造其基础分类器。在本文中,我们考虑了通常的预测变量(例如财务比率)以及定性变量(例如公司规模,活动和法律结构),比较了这两种技术对一组欧洲公司的预测准确性。我们表明,相对于神经网络产生的误差,我们的方法可将泛化误差降低约30%。

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