Abstract Tensor Decomposition Based Approach for Training Extreme Learning Machines
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Tensor Decomposition Based Approach for Training Extreme Learning Machines

机译:基于卷尺的训练极限机器方法

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AbstractConventional Extreme Learning Machines utilize Moore–Penrose generalized pseudo-inverse to solve hidden layer activation matrix and perform analytical determination of output weights. Scalability is the major concern to be addressed in Extreme Learning Machines while dealing with large dataset. Motivated by these scalability concerns, this paper proposes a novel tensor decomposition based Extreme Learning Machine which utilize PARAFAC and TUCKER decomposition based techniques in a SPARK platform. This proposed Extreme Learning Machine achieve reduced training time and better accuracy when compared with a conventional Extreme Learning Machine.]]>
机译:<![cdata [ Abstract 传统的极端学习机器利用Moore-PenRose广义伪逆求解隐藏层激活矩阵并执行输出权重的分析测定。 可扩展性是在处理大型数据集的同时在极端学习机器中解决的主要问题。 本文提出了这种可扩展性问题的激励,提出了一种基于张量分解的基于极端学习机,它利用了Spark平台中的基于PARAFAC和Tucker分解的技术。 与传统的极端学习机相比,这一提出的极端学习机会实现培训时间减少和更好的准确性。 ]]>

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