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Cancer Classification Based on Support Vector Machine Optimized by Particle Swarm Optimization and Artificial Bee Colony

机译:基于支持向量机的癌症分类优化粒子群优化和人工蜜蜂殖民地优化

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摘要

Intelligent optimization algorithms have advantages in dealing with complex nonlinear problems accompanied by good flexibility and adaptability. In this paper, the FCBF (Fast Correlation-Based Feature selection) method is used to filter irrelevant and redundant features in order to improve the quality of cancer classification. Then, we perform classification based on SVM (Support Vector Machine) optimized by PSO (Particle Swarm Optimization) combined with ABC (Artificial Bee Colony) approaches, which is represented as PA-SVM. The proposed PA-SVM method is applied to nine cancer datasets, including five datasets of outcome prediction and a protein dataset of ovarian cancer. By comparison with other classification methods, the results demonstrate the effectiveness and the robustness of the proposed PA-SVM method in handling various types of data for cancer classification.
机译:智能优化算法在处理复杂的非线性问题方面具有良好的灵活性和适应性。 在本文中,FCBF(基于快速相关的特征选择)方法用于过滤无关和冗余特征,以提高癌症分类的质量。 然后,我们基于由PSO(粒子群优化)优化的SVM(支持向量机)进行分类,与ABC(人为蜂菌落)方法组合,其表示为PA-SVM。 所提出的PA-SVM方法应用于九个癌症数据集,包括卵巢癌的蛋白质数据集5个结果预测数据集。 通过与其他分类方法的比较,结果证明了所提出的PA-SVM方法在处理各种类型的癌症分类数据方面的有效性和稳健性。

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