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Hybrid Firefly Based Simultaneous Gene Selection and Cancer Classification Using Support Vector Machines and Random Forests

机译:基于杂交萤火虫的同时基因选择和癌症分类,使用支持向量机和随机森林

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Microarray cancer gene expression datasets are high dimensional and thus complex for efficient computational analysis. In this study, we address the problem of simultaneous gene selection and robust classification of cancerous samples by presenting two hybrid algorithms, namely Discrete firefly based Support Vector Machines (DFA-SVM) and DFA-Random Forests (DFA-RF) with weighted gene ranking as heuristics. The performances of the algorithms are then tested using two cancer gene expression datasets retrieved from the Kent Ridge Biomedical Dataset Repository. Our results show that both DFA-SVM and DFA-RF can help in extracting more informative genes aiding to building high performance prediction models.
机译:微阵列癌基因表达数据集是高尺寸的,因此复杂的用于有效的计算分析。在本研究中,我们通过呈现两个杂交算法,即具有加权基因排名的离散萤火虫基础的支持向量机(DFA-RF)来解决癌症样品的同时基因选择和耐受癌性别分类的问题作为启发式。然后使用从肯特脊生物医学数据集存储库中检索的两个癌症基因表达数据集进行算法的性能。我们的研究结果表明,DFA-SVM和DFA-RF都可以帮助提取更具信息性的基因,以建立高性能预测模型。

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