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An accuracy adaptive breast tumor gene classification method

机译:一种准确性适应性乳腺肿瘤基因分类方法

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The method on gene classification has been widely studied with the development of gene chip. Machine learning is the best choice to research the issue. But both traditional SVM and ELM cannot fulfill the requirement of high accuracy and short time. Therefore, in this paper, we propose a novel Accuracy Adaptive Extreme Learning Machine (A2-ELM) which can cover the shortage of traditional SVM and ELM in the fact of more dynamic. Firstly, we propose a method of feature selection and overview the property of traditional ELM. Then, an Accuracy of Adaptive ELM (A2-ELM) is developed, which can fulfill the requirement for accurately and rapidly. Finally, we conduct experiments on gene expression data to verify the dynamic and accurate of our proposed accuracy of adaptive ELM in classification gene expression data with experimental settings.
机译:基因分类方法已被基因芯片的发育广泛研究。机器学习是研究问题的最佳选择。但传统的SVM和ELM都无法满足高精度和短时间的要求。因此,在本文中,我们提出了一种新颖的自适应极限学习机(A2-ELM),其可以涵盖传统SVM和ELM的短缺在更动态的事实中。首先,我们提出了一种特征选择和概述传统榆树的属性。然后,开发了自适应ELM(A2-ELM)的准确性,可以精确且快速地满足要求。最后,我们对基因表达数据进行实验,验证具有实验设置的分类基因表达数据中适应性ELM的提出准确性的动态和准确性。

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