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arxiv: 1902.03522 · v2 · pith:YV5SNOQBnew · submitted 2019-02-10 · 💻 cs.DS · cs.DB· cs.DC

Multi-Dimensional Balanced Graph Partitioning via Projected Gradient Descent

classification 💻 cs.DS cs.DBcs.DC
keywords graphbalancedmulti-dimensionalpartitioningperformancealgorithmapproachesbalance
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Motivated by performance optimization of large-scale graph processing systems that distribute the graph across multiple machines, we consider the balanced graph partitioning problem. Compared to the previous work, we study the multi-dimensional variant when balance according to multiple weight functions is required. As we demonstrate by experimental evaluation, such multi-dimensional balance is important for achieving performance improvements for typical distributed graph processing workloads. We propose a new scalable technique for the multidimensional balanced graph partitioning problem. The method is based on applying randomized projected gradient descent to a non-convex continuous relaxation of the objective. We show how to implement the new algorithm efficiently in both theory and practice utilizing various approaches for projection. Experiments with large-scale social networks containing up to hundreds of billions of edges indicate that our algorithm has superior performance compared with the state-of-the-art approaches.

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