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Ensemble based fuzzy weighted extreme learning machine for gene expression classification

机译:基于基于基于基于基因的模糊加权极端学习机

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摘要

Multi-class imbalance is one of the challenging problems in many real-world applications, from medical diagnosis to intrusion detection, etc. Existing methods for gene expression classification usually assume relatively balanced class distribution. However, the assumption is invalid for imbalanced data learning. This paper presents an effective method named EN-FWELM for class imbalance learning. First, based on a fast classifier extreme learning machine (ELM), fuzzy membership of sample is proposed in order to eliminate classification error coming from noise and outlier samples, and balance factor is introduced in combination with sample distribution and sample number associated with class to alleviate the bias against performance caused by imbalanced data. Furthermore, ensemble of ELMs is used for making classification performance more stable and accurate. A number of base ELMs are removed based on dissimilarity measure, and the remaining base ELMs are integrated by majority voting. Finally, experimental results on various gene expression classification and real-world classification demonstrate that the proposed EN-FWELM remarkably outperforms other approaches in the literature.
机译:多级不平衡是许多真实世界应用中的挑战性问题之一,从医学诊断到入侵检测等。现有的基因表达分类方法通常承担相对平衡的阶级分布。但是,假设对于不平衡数据学习是无效的。本文介绍了一个名为en-fwelm的有效方法,用于类别不平衡学习。首先,基于快速分类器极限学习机(ELM),提出了模糊的样本的模糊成员资格,以消除来自噪声和异常样本的分类误差,并且与与类相关联的样本分布和样本号相结合引入平衡因子。缓解因数据不平衡引起的性能的偏见。此外,ELM的集合用于使分类性能更稳定和准确。基于不相似度量除去许多基础elm,并且剩余的基础elm被多数投票整合。最后,对各种基因表达分类和现实世界分类的实验结果表明,所提出的en-Fwelm非常优于文献中的其他方法。

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