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A comparative study of pseudo-inverse computing for the extreme learning machine classifier

机译:极限学习机分类器伪逆计算的比较研究

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Most feed-forward artificial neural network training algorithms for classification problems are based on an iterative steepest descent technique. Their well-known drawback is slow convergence. A fast solution is an Extreme Learning Machine (ELM) computing the Moore-Penrose inverse using SVD. However, the most significant training time is pseudo-inverse computing. Thus, this paper proposes two fast solutions to pseudo-inverse computing based on QR with pivoting and Fast General Inverse algorithms. They are QR-ELM and GENINV-ELM, respectively. The benchmarks are conducted on 5 standard classification problems, i.e., diabetes, satellite images, image segmentation, forest cover type and sensit vehicle (combined) problems. The experimental results clearly showed that both QR-ELM and GENINV-ELM can speed up the training time of ELM and the quality of their solutions can be compared to that of the original ELM. They also show that QR-ELM is more robust than GENINV-ELM.
机译:大多数用于分类问题的前馈人工神经网络训练算法都基于迭代最速下降技术。它们的众所周知的缺点是收敛速度慢。一种快速的解决方案是使用SVD计算Moore-Penrose逆的极限学习机(ELM)。但是,最重要的训练时间是伪逆计算。因此,本文提出了两种基于旋转的QR快速伪逆算法和快速通用逆算法。它们分别是QR-ELM和GENINV-ELM。基准测试针对5个标准分类问题,即糖尿病,卫星图像,图像分割,森林覆盖类型和敏感媒介(综合)问题。实验结果清楚地表明,QR-ELM和GENINV-ELM均可加快ELM的训练时间,其解决方案的质量可与原始ELM相比。他们还表明,QR-ELM比GENINV-ELM更强大。

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