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首页> 外文期刊>Neural Networks: The Official Journal of the International Neural Network Society >A Fast SVD-Hidden-nodes based Extreme Learning Machine for Large-Scale Data Analytics
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A Fast SVD-Hidden-nodes based Extreme Learning Machine for Large-Scale Data Analytics

机译:基于快速SVD隐藏节点的极限学习机,用于大规模数据分析

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Big dimensional data is a growing trend that is emerging in many real world contexts, extending from web mining, gene expression analysis, protein-protein interaction to high-frequency financial data. Nowadays, there is a growing consensus that the increasing dimensionality poses impeding effects on the performances of classifiers, which is termed as the "peaking phenomenon'' in the field of machine intelligence. To address the issue, dimensionality reduction is commonly employed as a preprocessing step on the Big dimensional data before building the classifiers. In this paper, we propose an Extreme Learning Machine (ELM) approach for large-scale data analytic. In contrast to existing approaches, we embed hidden nodes that are designed using singular value decomposition (SVD) into the classical ELM. These SVD nodes in the hidden layer are shown to capture the underlying characteristics of the Big dimensional data well, exhibiting excellent generalization performances. The drawback of using SVD on the entire dataset, however, is the high computational complexity involved. To address this, a fast divide and conquer approximation scheme is introduced to maintain computational tractability on high volume data. The resultant algorithm proposed is labeled here as Fast Singular Value Decomposition-Hidden-nodes based Extreme Learning Machine or FSVD-H-ELM in short. In FSVD-H-ELM, instead of identifying the SVD hidden nodes directly from the entire dataset, SVD hidden nodes are derived from multiple random subsets of data sampled from the original dataset. Comprehensive experiments and comparisons are conducted to assess the FSVD-H-ELM against other state-of-the-art algorithms. The results obtained demonstrated the superior generalization performance and efficiency of the FSVD-H-ELM. (C) 2016 Elsevier Ltd. All rights reserved.
机译:大尺寸数据是一种增长的趋势,在许多现实世界中都在出现,从网络挖掘,基因表达分析,蛋白质与蛋白质相互作用到高频金融数据。如今,越来越多的人认为维数的增加会对分类器的性能产生阻碍作用,这在机器智能领域被称为“高峰现象”,为解决这个问题,降维通常被用作预处理。在构建分类器之前,先处理大维数据。本文提出了一种用于大型数据分析的极限学习机(ELM)方法。与现有方法相反,我们嵌入了使用奇异值分解设计的隐藏节点( SVD)转换为经典ELM。隐藏层中的这些SVD节点被很好地捕获了大维数据的基础特征,表现出出色的泛化性能,但是在整个数据集上使用SVD的缺点是计算复杂度高为了解决这个问题,引入了快速分治法近似方案以保持计算可扩展性大量数据。提议的结果算法在这里标记为基于快速奇异值分解隐藏节点的极限学习机或FSVD-H-ELM。在FSVD-H-ELM中,不是直接从整个数据集中识别SVD隐藏节点,而是从原始数据集采样的数据的多个随机子集派生SVD隐藏节点。进行了全面的实验和比较,以对照其他最新算法来评估FSVD-H-ELM。获得的结果证明了FSVD-H-ELM具有出色的泛化性能和效率。 (C)2016 Elsevier Ltd.保留所有权利。

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