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Using Artificial Immune Algorithm for Fast Convergence of Multi Layer Perceptron in Breast Cancer Diagnosis Application

机译:利用人工免疫算法在乳腺癌诊断应用中的多层摄影中的快速收敛性

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In this paper, a Multi Layer Perceptron (MLP) based Artificial Immune System (AIS) is presented for breast cancer classification. The proposed algorithm integrates clonal selection principle of AIS in MLP learning to reduce its computational costs and accelerate its convergence to a Mean Squared Error Threshold (MSEth) set by the user. Applied on the Wisconsin Diagnosis Breast Cancer database (WDBC), the results show that combining Artificial Immune Systems and Neural Networks is effective. Indeed, a significant reduction of computation time has been obtained with a slight improvement of classification accuracy.
机译:本文提出了一种基于多层的人工免疫系统(AIS)用于乳腺癌分类。所提出的算法集成了MLP学习中AIS的克隆选择原理,以降低其计算成本并加速其对用户设置的平均平方误差阈值(MSETH)的收敛。应用于威斯康辛诊断乳腺癌数据库(WDBC),结果表明,结合人工免疫系统和神经网络是有效的。实际上,已经获得了计算时间的显着降低了分类准确性的略微改善。

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