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首页> 外文期刊>Biomedical Engineering >CLASSIFICATION OF MULTIPLE CANCER TYPES USING FUZZY SUPPORT VECTOR MACHINES AND OUTLIER DETECTION METHODS
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CLASSIFICATION OF MULTIPLE CANCER TYPES USING FUZZY SUPPORT VECTOR MACHINES AND OUTLIER DETECTION METHODS

机译:基于模糊支持向量机和异常检测方法的多种癌症分类

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摘要

The support vector machine (SVM) is a new learning method and has shown comparable or better results than the neural networks on some applications. In this paper, we applied SVM to classify multiple cancer types by gene expression profiles and exploit some strategies of the SVM method, including fuzzy logic and statistical theories. Using the proposed strategies and outlier detection methods, the FSVM (fuzzy support vector machine) can achieve a comparable or better performance than other methods, and provide a more flexible architecture to discriminate against SRBCT and non-SRBCT samples.
机译:支持向量机(SVM)是一种新的学习方法,在某些应用程序中显示出比神经网络可比或更好的结果。在本文中,我们应用SVM通过基因表达谱对多种癌症类型进行分类,并利用SVM方法的一些策略,包括模糊逻辑和统计理论。使用提出的策略和离群值检测方法,FSVM(模糊支持向量机)可以实现与其他方法相当或更好的性能,并提供了更灵活的体系结构来区分SRBCT和非SRBCT样本。

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