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MR-ELM: a MapReduce-based framework for large-scale ELM training in big data era

机译:MR-ELM:基于MapReduce的大数据时代大规模ELM培训框架

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摘要

In the big data era, extreme learning machine (ELM) can be a good solution for the learning of large sample data as it has high generalization performance and fast training speed. However, the emerging big and distributed data blocks may still challenge the method as they may cause large-scale training which is hard to be finished by a common commodity machine in a limited time. In this paper, we propose a MapReduce-based distributed framework named MR-ELM to enable large-scale ELM training. Under the framework, ELM submodels are trained parallelly with the distributed data blocks on the cluster and then combined as a complete single-hidden layer feedforward neural network. Both classification and regression capabilities of MR-ELM have been theoretically proven, and its generalization performance is shown to be as high as that of the original ELM and some common ELM ensemble methods through many typical benchmarks. Compared with the original ELM and the other parallel ELM algorithms, MR-ELM is a general and scalable ELM training framework for both classification and regression and is suitable for big data learning under the cloud environment where the data are usually distributed instead of being located in one machine.
机译:在大数据时代,极限学习机(ELM)具有较高的泛化性能和快速的训练速度,是学习大型样本数据的理想解决方案。但是,新兴的大数据块和分布式数据块可能仍会挑战该方法,因为它们可能会导致大规模训练,而这是普通商用机器很难在有限的时间内完成的。在本文中,我们提出了一个基于MapReduce的分布式框架MR-ELM,以实现大规模的ELM训练。在该框架下,ELM子模型与群集上的分布式数据块并行训练,然后组合为一个完整的单隐藏层前馈神经网络。 MR-ELM的分类和回归功能都已在理论上得到证明,并且通过许多典型基准,其泛化性能与原始ELM和一些常见的ELM集成方法一样高。与原始的ELM和其他并行ELM算法相比,MR-ELM是用于分类和回归的通用且可扩展的ELM训练框架,适用于通常将数据分布而不是位于云环境中的云环境下的大数据学习。一台机器。

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