2019
DOI: 10.1109/access.2019.2951189
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Training Back Propagation Neural Networks in MapReduce on High-Dimensional Big Datasets With Global Evolution

Abstract: Owing to its scalability and high fault-tolerance even on a distributed environment built up with personal computers, MapReduce has been introduced to parallelise the training of Back Propagation Neural Networks (BPNNs) on high-dimensional big datasets. Based on the evolution of local BPNNs produced by distributed Map tasks with different data splits, the paper proposes a novel approach to the distributed data-parallel training of BPNNs in MapReduce. The approach provides a reasonable measure to get global con… Show more

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