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A New Fuzzy Extreme Learning Machine for Regression Problems with Outliers or Noises

机译:一种新的模糊极端学习机,用于回归出异常值或噪音的回归问题

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Extreme Learning Machine (ELM), recently proposed by Huang et al., has attracted much attention from more and more researchers in the machine learning and data mining community, and has shown similar or better generalization performance with dramatically reduced training time than Support Vector Machines (SVM). In ELM, it is implicitly assumed that all samples in training datasets share the same importance. Therefore, when it comes to datasets with outliers or noises, like SVM, ELM may produce suboptimal regression models due to overfitting. In this paper, by equipping ELM with the fuzzy concept, we propose a novelty approach called New Fuzzy ELM (NF-ELM) to deal with the above problem. In NF-ELM, firstly, different training samples are assigned with different fuzzy-membership values based on their degree of being outliers or noises. Secondly, these membership values are incorporated into the ELM algorithm to make it less sensitive to outliers or noises. The performance of the proposed NF-ELM algorithm is evaluated on three artificial datasets and thirteen real-world benchmark function approximation problems. The results indicate that the proposed NF-ELM algorithm achieves better predictive accuracy in most cases than ELM and SVM does.
机译:最近由Huang等人提出的极端学习机(ELM),从机器学习和数据挖掘社区中吸引了越来越多的研究人员的关注,并且展示了类似或更好的泛化性能,而且大幅减少了比支持向量机的训练时间(SVM)。在榆树中,隐含地假设训练数据集中的所有样本都共享相同的重要性。因此,当涉及具有异常值或噪声的数据集时,如SVM,ELM可能会产生由于过度装备而产生的次优回归模型。在本文中,通过用模糊概念装备ELM,我们提出了一种称为新的模糊榆树(NF-ELM)的新颖性方法来处理上述问题。在NF-ELM中,首先,基于其是异常值或噪声的程度,将不同的训练样本分配有不同的模糊会员值。其次,这些隶属值被纳入ELM算法,以使其对异常值或噪声不太敏感。所提出的NF-ELM算法的性能在三个人工数据集和十三个现实世界基准函数近似问题中进行评估。结果表明,在大多数情况下,所提出的NF-ELM算法在大多数情况下实现了比ELM和SVM的更好的预测精度。

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