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Comparison of feature selection methods for multiclass cancer classification based on microarray data

机译:基于微阵列数据的多分类癌症分类特征选择方法比较

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Multiclass cancer classification remains a challenging task in the field of machine learning. We presented a comparative study of seven feature selection methods and evaluated their performance by six different types of classification methods. We applied it to the four multiclass cancer datasets. We demonstrated that feature selection is critical for multiclass cancer classification performance. We also demonstrated that an appropriate combination of feature selection techniques and classification methods makes it possible to achieve excellent performance on multiclass cancer classification task. Support vector machine method based on recursive feature elimination (SVM-RFE) feature selection algorithm combined with sequential minimal optimization algorithm for training support vector machines (SMO) classification method showed the best performance.
机译:在机器学习领域,多类癌症分类仍然是一项艰巨的任务。我们提出了对七个特征选择方法的比较研究,并通过六种不同类型的分类方法评估了它们的性能。我们将其应用于四个多类癌症数据集。我们证明了特征选择对于多类癌症分类性能至关重要。我们还证明,特征选择技术和分类方法的适当组合可以在多类癌症分类任务上实现出色的性能。基于递归特征消除(SVM-RFE)特征选择算法的支持向量机方法结合顺序最小优化算法训练支持向量机(SMO)分类方法表现出最佳的性能。

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