Genetic Algorithm-Artificial Neural Network (GA-ANN) Hybrid Intelligence for Cancer Diagnosis

F. Ahmad, N. Isa, Z. Hussain, R. Boudville, M. K. Osman
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引用次数: 31

Abstract

Artificial Neural Network (ANN) is one of the most promising biological inspired computational intelligence techniques. However designing an ANN is a difficult task as it requires setting of ANN structure and tuning of some complex parameter. On the other hand, Genetic Algorithm (GA) as a global search technique is useful for complex optimization problem where the numbers of parameters are large and difficult to obtain. In this paper GA has been used to simultaneously select significant features as input to ANN and automatically determine the optimal number of hidden node. Meanwhile the ANN training is done by Levenberg Marquardt (LM) algorithm. A new procedure in obtaining optimal ANN architecture is also described which based on feature importance determine by Genetic Algorithm. Simulation results on cancer dataset proved that the proposed method has achieved the highest 97% average percentage of correct classification with the absent of 2nd and 5th feature.
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遗传算法-人工神经网络(GA-ANN)混合智能癌症诊断
人工神经网络(ANN)是最有前途的生物启发计算智能技术之一。然而,设计人工神经网络是一项艰巨的任务,因为它需要设置人工神经网络的结构和调整一些复杂的参数。另一方面,遗传算法作为一种全局搜索技术,适用于参数数量大且难以获得的复杂优化问题。本文采用遗传算法同时选择重要特征作为神经网络的输入,并自动确定最优隐藏节点数。同时,采用Levenberg Marquardt (LM)算法对人工神经网络进行训练。介绍了一种基于遗传算法确定的特征重要度来获得最优ANN结构的新方法。在癌症数据集上的仿真结果证明,在缺少第2和第5个特征的情况下,该方法达到了最高的97%的平均分类正确率。
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