A Cost Sensitive and Class-Imbalance Classification Method Based on Neural Network for Disease Diagnosis

Fei He, Huamin Yang, Y. Miao, Rainbow Louis
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引用次数: 3

Abstract

The automation of disease diagnosis is confronted with three important problems which are class imbalance, sampling bias and cost sensitivity. In order to make a reasonable representation of the imbalance state, class distribution histogram and likelihood are devoted to measuring degree of its imbalance. A cost optimization model for disease diagnosis is proposed, which be successfully used in disease diagnosis and significantly reduce the negative effects of the above three factors.
基于神经网络的成本敏感类不平衡分类方法在疾病诊断中的应用
疾病诊断自动化面临着类别不平衡、抽样偏差和成本敏感性三个重要问题。为了合理地表示不平衡状态,用类分布直方图和似然来度量其不平衡程度。提出了一种疾病诊断成本优化模型,该模型成功地应用于疾病诊断中,显著降低了上述三种因素的负面影响。
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