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首页> 外文期刊>International Journal of Advanced Computer Research >Classification of Cancer Gene Selection Using Random Forest and Neural Network Based Ensemble Classifier
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Classification of Cancer Gene Selection Using Random Forest and Neural Network Based Ensemble Classifier

机译:基于随机森林和神经网络的集成分类器对癌症基因选择进行分类

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The free radical gene classification of cancer diseases is challenging job in biomedical data engineering. The improving of classification of gene selection of cancer diseases various classifier are used, but the classification of classifier are not validate. So ensemble classifier is used for cancer gene classification using neural network classifier with random forest tree. The random forest tree is ensembling technique of classifier in this technique the number of classifier ensemble of their leaf node of class of classifier. In this paper we combined neural network with random forest ensemble classifier for classification of cancer gene selection for diagnose analysis of cancer diseases. The proposed method is different from most of the methods of ensemble classifier, which follow an input output paradigm of neural network, where the members of the ensemble are selected from a set of neural network classifier. the number of classifiers is determined during the rising procedure of the forest. Furthermore, the proposed method produces an ensemble not only correct, but also assorted, ensuring the two important properties that should characterize an ensemble classifier. For empirical evaluation of our proposed method we used UCI cancer diseases data set for classification. Our experimental result shows that better result in compression of random forest tree classification
机译:癌症疾病的自由基基因分类在生物医学数据工程中是一项具有挑战性的工作。癌症疾病的基因选择分类的改进使用了各种分类器,但是分类器的分类没有得到验证。因此,使用集成分类器将神经网络分类器与随机森林树一起用于癌症基因分类。随机森林树是分类器的融合技术,该技术中其分类器的叶节点的分类器集合总数。在本文中,我们将神经网络与随机森林集成分类器相结合,对癌症基因选择进行分类,以对癌症进行诊断分析。所提出的方法与大多数集成分类器的方法不同,后者遵循神经网络的输入输出范式,该集成的成员是从一组神经网络分类器中选择的。分类器的数量是在森林的上升过程中确定的。此外,所提出的方法不仅产生正确的集合,而且产生综合的集合,从而确保了表征集合分类器的两个重要特性。为了对我们提出的方法进行实证评估,我们使用UCI癌症疾病数据集进行分类。我们的实验结果表明,更好地压缩随机林木分类的结果

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