MELODY-JOIN: Efficient Earth Mover's Distance similarity joins using MapReduce

Jin Huang, Rui Zhang, R. Buyya, Jian Chen
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引用次数: 21

Abstract

The Earth Mover's Distance (EMD) similarity join retrieves pairs of records with EMD below a given threshold. It has a number of important applications such as near duplicate image retrieval and pattern analysis in probabilistic datasets. However, the computational cost of EMD is super cubic to the number of bins in the histograms used to represent the data objects. Consequently, the EMD similarity join operation is prohibitive for large datasets. This is the first paper that specifically addresses the EMD similarity join and we propose to use MapReduce to approach this problem. The MapReduce algorithms designed for generic metric distance similarity joins are inefficient for the EMD similarity join because they involve a large number of distance computations and have unbalanced workloads on reducers when dealing with skewed datasets. We propose a novel framework, named MELODY-JOIN, which transforms data into the space of EMD lower bounds and performs pruning and partitioning at a low cost because computing these EMD lower bounds has a constant complexity. Furthermore, we address two key problems, the limited pruning power and the unbalanced workloads, by enhancing each phase in the MELODY-JOIN framework. We conduct extensive experiments on real datasets. The results show that MELODY-JOIN outperforms the state-of-the-art technique by an order of magnitude, scales up better on large datasets than the state-of-the-art technique, and scales out well on distributed machines.
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MELODY-JOIN:使用MapReduce的高效土方距离相似连接
earthmover 's Distance (EMD)相似连接检索EMD低于给定阈值的记录对。它有许多重要的应用,如近重复图像检索和概率数据集的模式分析。然而,EMD的计算成本是用于表示数据对象的直方图中bin数量的超立方。因此,EMD相似连接操作对于大型数据集是禁止的。这是第一篇专门讨论EMD相似连接的论文,我们建议使用MapReduce来解决这个问题。为通用度量距离相似连接设计的MapReduce算法对于EMD相似连接是低效的,因为它们涉及大量的距离计算,并且在处理倾斜数据集时,减少器上的工作负载不平衡。由于计算EMD下界具有一定的复杂度,我们提出了一种新的框架MELODY-JOIN,该框架将数据转换到EMD下界空间,并以较低的成本进行剪枝和分区。此外,我们通过增强MELODY-JOIN框架中的每个阶段来解决两个关键问题,即有限的修剪能力和不平衡的工作负载。我们在真实的数据集上进行大量的实验。结果表明,MELODY-JOIN的性能比最先进的技术高出一个数量级,在大型数据集上的扩展比最先进的技术更好,并且在分布式机器上的扩展也很好。
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