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The failure analysis of extreme learning machine on big data and the counter measure

机译:大数据和反措施极限学习机的故障分析

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Extreme learning machine (ELM) for single-hidden layer feedforward neural networks (SLFNs) was known for its extremely fast learning speed while maintaining acceptable generalization. Unfortunately, the failure of ELM on big data occurs frequently. The course is, the main computation of ELM focus on the calculation of generalized inverse of hidden layer output matrix, which depends on singular value decomposition (SVD) and has very low efficiency especially on high order matrix. In view of this high calculation complexity directly courses the failure of ELM on big data, normal equation extreme learning machine is proposed, which use the normal equation to reduce the size of the matrix equation and overcome the failure. The experiments on benchmarks show that the new proposed model has better performance than the ELM, so as to have more potential for large scale data learning.
机译:用于单隐式层前馈神经网络(SLFN)的极端学习机(ELM)以其极快的学习速度而闻名,同时保持可接受的概括。不幸的是,榆木对大数据的失败频繁发生。课程是,ELM的主要计算重点是隐藏层输出矩阵的广义逆的计算,这取决于奇异值分解(SVD),特别是在高阶矩阵上具有非常低的效率。鉴于这种高计算复杂性直接源于大数据的ELM失败,提出了正常方程式极限学习机,它使用正常方程来减小矩阵方程的大小并克服故障。基准测试的实验表明,新的拟议模型比榆树具有更好的性能,从而具有更大的大规模数据学习潜力。

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