A distributed SVM method based on the iterative MapReduce

Xijiang Ke, Hai Jin, Xia Xie, Jie Cao
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引用次数: 15

Abstract

Linear classification is useful in many applications, but training large-scale data remains an important research issue. Recent advances in linear classification have shown that distributed methods can be efficient in improving the training time. However, for most of the existing training methods,based on MPI or Hadoop, the communication between nodes is the bottleneck. To shorten the communication between nodes, we propose and analyze a method for distributed support vector machine and implement it on an iterative MapReduce framework. Through our distributed method, the local SVMs are generic and can make use of the state-of-the-art SVM solvers. Unlike previous attempts to parallelize SVMs the algorithm does not make assumptions on the density of the support vectors, i.e., the efficiency of the algorithm holds also for the “difficult” cases where the number of support vectors is very high. The performance of the our method is evaluated in an experimental environment. By partitioning the training dataset into smaller subsets and optimizing the partitioned subsets across a cluster of computers, we reduce the training time significantly while maintaining a high level of accuracy in both binary and multiclass classifications.
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基于迭代MapReduce的分布式支持向量机方法
线性分类在许多应用中都很有用,但训练大规模数据仍然是一个重要的研究问题。线性分类的最新进展表明,分布式方法可以有效地缩短训练时间。然而,对于大多数现有的基于MPI或Hadoop的训练方法来说,节点之间的通信是瓶颈。为了缩短节点间的通信,我们提出并分析了一种分布式支持向量机的方法,并在迭代MapReduce框架上实现。通过我们的分布式方法,局部支持向量机具有通用性,可以利用最先进的支持向量机求解器。与之前的并行化支持向量机的尝试不同,该算法不假设支持向量的密度,也就是说,该算法的效率也适用于支持向量数量非常高的“困难”情况。在实验环境中对该方法的性能进行了评价。通过将训练数据集划分为更小的子集,并在一组计算机上优化划分的子集,我们显着减少了训练时间,同时在二进制和多类分类中保持了高水平的准确性。
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