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Binary Dragonfly Algorithm and Fisher Score Based Hybrid Feature Selection Adopting a Novel Fitness Function Applied to Microarray Data

机译:基于二进制蜻蜓算法和Fisher得分的混合特征选择采用应用于微阵列数据的新型健身功能

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Microarray gene data comprises of a large number of genes and fewer samples. Feature Selection (FS) is performed to select disease-causing genes and enhance the performance of the learning model. FS algorithms can either employ a learning model or use only data information to select the features. Each of these has its own drawbacks. In this paper, we propose a hybrid method that incorporates the advantages of both these aspects to select genes. We also employ evolutionary Binary Dragonfly Algorithm (BDA) for searching an informative subset of features and Radial Basis Function Neural Network (RBFNN) as a learning model. We propose a novel fitness function that helps in the effective selection of the features in BDA. The proposed method is applied to microarray datasets, the results of which is found to be promising.
机译:微阵列基因数据包括大量基因和更少的样品。进行特征选择(FS)以选择疾病导致基因并增强学习模型的性能。 FS算法可以使用学习模型或仅使用数据信息来选择功能。其中每一个都有自己的缺点。在本文中,我们提出了一种混合方法,其包括这些方面的优点来选择基因。我们还采用了进化二元蜻蜓算法(BDA),用于搜索特征和径向基函数神经网络(RBFNN)的信息副本作为学习模型。我们提出了一种新颖的健身功能,有助于有效地选择BDA中的特征。所提出的方法应用于微阵列数据集,结果是有前途的。

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