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Hybrid Genetic Algorithm and Learning Vector Quantization Modeling for Cost-Sensitive Bankruptcy Prediction

机译:混合遗传算法与学习矢量量化建模,用于成本敏感的破产预测

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Cost-sensitive classification algorithms that enable effective prediction, where the costs of misclassification can be very different, are crucial to creditors and auditors in credit risk analysis. Learning vector quantization (LVQ) is a powerful tool to solve bankruptcy prediction problem as a classification task. The genetic algorithm (GA) is applied widely in conjunction with artificial intelligent methods. The hybridization of genetic algorithm with existing classification algorithms is well illustrated in the field of bankruptcy prediction. In this paper, a hybrid GA and LVQ approach is proposed to minimize the expected misclassified cost under the asymmetric cost preference. Experiments on real-life French private company data show the proposed approach helps to improve the predictive performance in asymmetric cost setup.
机译:成本敏感的分类算法,实现有效预测,其中错误分类的成本可能是非常不同的,对债权人和审计员在信用风险分析中是至关重要的。 学习矢量量化(LVQ)是一个强大的工具,可以解决破产预测问题作为分类任务。 遗传算法(GA)与人工智能方法一起应用。 遗传算法与现有分类算法的杂交很好地说明了破产预测领域。 在本文中,提出了一种混合GA和LVQ方法,以最小化不对称成本偏好的预期错误分类成本。 现实生活法国私营公司数据显示该方法有助于提高不对称成本设置中的预测性能。

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