首页> 外文会议>International conference on advanced data mining and applications;ADMA 2011 >Hybrid Artificial Immune Algorithm and CMAC Neural Network Classifier for Supporting Business and Medical Decision Making
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Hybrid Artificial Immune Algorithm and CMAC Neural Network Classifier for Supporting Business and Medical Decision Making

机译:混合人工免疫算法和CMAC神经网络分类器支持业务和医疗决策

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Decision making that involves credit scoring and medical diagnosis can be considered to solve classification problems. Among the many data miming (DM) methods that have been developed to solve these classification problems are neural network (NN) and support vector machine (SVM) classifiers. Despite their successful application to classification problems, these classifiers are limited, in that users must use trial-and error to modify specific parameter settings. Fortunately, the setting of the parameters for those classifiers can be viewed as an unconstrained global optimization problem. To overcome this limitation of those classifiers, this work develops an advanced DM method that combines an artificial immune algorithm (AIA) and a MIMO cerebellar model articulation controller NN (CMAC NN) classifier (AIAMIMO CMAC NN classifier). The AIA is a stochastic global optimization method and its parameters are easily set. The proposed CMAC NN classifier is characterized by its fast learning, reasonable generalization ability and robust noise resistance. The proposed AIA-MIMO CMAC NN classifier uses an outer AIA to optimize the parameter settings of an inner MIMO CMAC NN classifier, which is used to solve classification problems. The performance of the proposed classifier is also evaluated using a set of real-world classification problems, such as credit scoring and medical diagnosis. Moreover, this work compares the numerical results obtained using the proposed AIA-MIMO CMAC NN classifier with those obtained using published classifiers (such as SVM, SVM-based classifiers, NN classifiers and C4.5). Experimental results indicate that the classification accuracy of the proposed AIA-MIMO CMAC NN classifier is superior to those of some published classifiers. Hence, the AIAMIMO CMAC NN classifier can be viewed an alternative DM method for supporting business and medical decision making.
机译:可以考虑涉及信用评分和医疗诊断的决策来解决分类问题。为解决这些分类问题而开发的众多数据模仿(DM)方法中,有神经网络(NN)和支持向量机(SVM)分类器。尽管这些分类器已成功应用于分类问题,但它们仍然受到限制,因为用户必须使用反复试验来修改特定的参数设置。幸运的是,可以将这些分类器的参数设置视为不受约束的全局优化问题。为了克服这些分类器的这种局限性,这项工作开发了一种先进的DM方法,该方法结合了人工免疫算法(AIA)和MIMO小脑模型清晰度控制器NN(CMAC NN)分类器(AIAMIMO CMAC NN分类器)。 AIA是一种随机全局优化方法,其参数易于设置。提出的CMAC NN分类器具有学习速度快,泛化能力强,抗噪声能力强的特点。提出的AIA-MIMO CMAC NN分类器使用外部AIA优化内部MIMO CMAC NN分类器的参数设置,用于解决分类问题。还使用一组实际的分类问题(例如信用评分和医疗诊断)来评估提出的分类器的性能。此外,这项工作将使用建议的AIA-MIMO CMAC NN分类器获得的数值结果与使用已发布的分类器(例如SVM,基于SVM的分类器,NN分类器和C4.5)获得的数值结果进行比较。实验结果表明,所提出的AIA-MIMO CMAC NN分类器的分类精度优于某些已发表的分类器。因此,可以将AIAMIMO CMAC NN分类器视为支持业务和医疗决策的另一种DM方法。

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