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Ordinal Evolutionary Artificial Neural Networks for Solving an Imbalanced Liver Transplantation Problem

机译:有序进化人工神经网络解决肝脏移植不平衡问题

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Ordinal regression considers classification problems where there exists a natural ordering among the categories. In this learning setting, thresholds models are one of the most used and successful techniques. On the other hand, liver transplantation is a widely-used treatment for patients with a terminal liver disease. This paper considers the survival time of the recipient to perform an appropriate donor-recipient matching, which is a highly imbalanced classification problem. An artificial neural network model applied to ordinal classification is used, combining evolutionary and gradient-descent algorithms to optimize its parameters, together with an ordinal over-sampling technique. The evolutionary algorithm applies a modified fitness function able to deal with the ordinal imbalanced nature of the dataset. The results show that the proposed model leads to competitive performance for this problem.
机译:序数回归考虑类别之间存在自然排序的分类问题。在这种学习环境中,阈值模型是最常用和成功的技术之一。另一方面,肝移植是晚期肝病患者的一种广泛使用的治疗方法。本文考虑了接受者的生存时间,以执行适当的供者-接受者匹配,这是一个高度不平衡的分类问题。使用了适用于序数分类的人工神经网络模型,结合了进化算法和梯度下降算法以优化其参数,以及序数过采样技术。进化算法应用修改后的适应度函数,该函数能够处理数据集的序数不平衡性质。结果表明,所提出的模型导致了该问题的竞争表现。

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