Faster MPC Algorithms for Approximate Allocation in Uniformly Sparse Graphs

Abstract

We study the allocation problem in the Massively Parallel Computation (MPC) model. This problem is a special case of b-matching, in which the input is a bipartite graph with capacities greater than 1 in only one part of the bipartition. We give a (1+ε) approximate algorithm for the problem, which runs in O( λ) MPC rounds, using sublinear space per machine and O(λ n) total space, where λ is the arboricity of the input graph. Our result is obtained by providing a new analysis of a LOCAL algorithm by Agrawal, Zadimoghaddam, and Mirrokni [ICML 2018], which improves its round complexity from O( n) to O( λ). Prior to our work, no o( n) round algorithm for constant-approximate allocation was known in either LOCAL or sublinear space MPC models for graphs with low arboricity.

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