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Optimization-Based Extreme Learning Machine with Multi-kernel Learning Approach for Classification

机译:基于优化的极限学习机与多核学习方法的分类

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The optimization method based extreme learning machine (optimization-based ELM) is generalized from single-hidden-layer feed-forward neural networks (SLFNs) by making use of kernels instead of neuron-alike hidden nodes. This approach is known for its high scalability, low computational complexity, and mild optimization constrains. The multi-kernel learning (MKL) framework Simple MKL iteratively determines the combination of kernels by gradient descent wrapping a standard support vector machine (SVM) solver. Simple MKL can be applied to many kinds of supervised learning problems to receive a more stable performance with rapid convergence speed. This paper proposes a new approach: MK-ELM (multi-kernel extreme learning machine) that applies Simple MKL framework to the optimization-based ELM algorithm. The performance analysis on binary classification problems with various scales shows that MK-ELM tends to achieve the best generalization performance as well as being the most insensitive to parameters comparing to optimization-based ELM and Simple MKL. As a result, MK-ELM can be implemented in real applications easily.
机译:通过使用内核而不是类似神经元的隐藏节点,从单隐藏层前馈神经网络(SLFN)推广了基于优化方法的极限学习机(基于优化的ELM)。这种方法以其高可伸缩性,低计算复杂性和适度的优化约束而著称。多内核学习(MKL)框架Simple MKL通过梯度下降包装标准支持向量机(SVM)求解器来迭代确定内核的组合。简单MKL可以应用于多种有监督的学习问题,以更快的收敛速度获得更稳定的性能。本文提出了一种新方法:MK-ELM(多核极限学习机),该方法将简单MKL框架应用于基于优化的ELM算法。对不同规模的二进制分类问题的性能分析表明,与基于优化的ELM和Simple MKL相比,MK-ELM倾向于实现最佳的泛化性能,并且对参数最不敏感。结果,可以在实际应用中轻松实现MK-ELM。

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