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首页> 外文期刊>Information Sciences: An International Journal >Fast learning Circular Complex-valued Extreme Learning Machine (CC-ELM) for real-valued classification problems
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Fast learning Circular Complex-valued Extreme Learning Machine (CC-ELM) for real-valued classification problems

机译:快速学习圆形复数值极限学习机(CC-ELM),用于实数值分类问题

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In this paper, we present a fast learning fully complex-valued extreme learning machine classifier, referred to as 'Circular Complex-valued Extreme Learning Machine (CC-ELM)' for handling real-valued classification problems. CC-ELM is a single hidden layer network with non-linear input and hidden layers and a linear output layer. A circular transformation with a translational/ rotational bias term that performs a one-to-one transformation of real-valued features to the complex plane is used as an activation function for the input neurons. The neurons in the hidden layer employ a fully complex-valued Gaussian-like ('sech') activation function. The input parameters of CC-ELM are chosen randomly and the output weights are computed analytically. This paper also presents an analytical proof to show that the decision boundaries of a single complex-valued neuron at the hidden and output layers of CC-ELM consist of two hyper-surfaces that intersect orthogonally. These orthogonal boundaries and the input circular transformation help CC-ELM to perform real-valued classification tasks efficiently. Performance of CC-ELM is evaluated using a set of benchmark real-valued classification problems from the University of California, Irvine machine learning repository. Finally, the performance of CC-ELM is compared with existing methods on two practical problems, viz., the acoustic emission signal classification problem and a mammogram classification problem. These study results show that CC-ELM performs better than other existing (both) real-valued and complex-valued classifiers, especially when the data sets are highly unbalanced.
机译:在本文中,我们提出了一种快速学习的完全复数值极限学习机分类器,称为“循环复数值极限学习机(CC-ELM)”,用于处理实值分类问题。 CC-ELM是具有非线性输入和隐藏层以及线性输出层的单个隐藏层网络。具有平移/旋转偏差项的圆变换,将实值特征向复杂平面进行一对一变换,用作输入神经元的激活函数。隐藏层中的神经元采用完全复数值的高斯样('sech')激活函数。随机选择CC-ELM的输入参数,并通过分析计算输出权重。本文还提供了一种分析证明,以证明在CC-ELM的隐藏层和输出层处的单个复值神经元的决策边界由正交的两个超表面组成。这些正交边界和输入的圆变换帮助CC-ELM有效地执行实值分类任务。使用加州大学尔湾分校的机器学习资源库中的一组基准实值分类问题,对CC-ELM的性能进行了评估。最后,将CC-ELM的性能与现有方法在两个实际问题上进行比较,即声发射信号分类问题和乳房X线照片分类问题。这些研究结果表明,CC-ELM比其他现有的(实值和复值)分类器表现更好,尤其是在数据集高度不平衡的情况下。

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