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A Robust and Optimally Pruned Extreme Learning Machine

机译:一种强大而最佳修剪的极端学习机

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In recent years, the interest in the study of outlier robustness properties in Extreme Learning Machines (ELM) has grown. Most of the published works uses a more robust estimation method than the commonly adopted ordinary least squares. Nevertheless, the ELM network offers other challenges that also influence its robustness properties, such as the number of hidden neurons and the computational stability of the hidden layer's output matrix. That being said, we propose here two networks: ROP-ELM and ROPP-ELM that address the three aforementioned problems at once, in a combination of a pruning method, a cost function based on ?_1-norm and the addition of a biologically plausible mechanism named Intrinsic Plasticity.
机译:近年来,在极端学习机(ELM)中对异常稳健性物业(ELM)研究的兴趣已经发展。大多数已发布的作品使用比通常采用的普通最小二乘法更强大的估计方法。尽管如此,ELM网络提供了其他挑战,这些挑战也影响其鲁棒性的性质,例如隐藏的神经元的数量和隐藏层的输出矩阵的计算稳定性。如上所述,我们提出了这里的两个网络:ROP-ELM和ROPP-ELM,即一次性地解决三个上述问题,基于修剪方法,成本函数基于Δ_1-norm和添加生物合理的机制命名为内在塑性。

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