Acyclic partitioning of large directed acyclic graphs

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Herrmann, Julien and Özkaya, M. Yusuf and Uçar, Bora and Kaya, Kamer and Çatalyürek, Ümit V. (2018) Acyclic partitioning of large directed acyclic graphs. [Working Paper / Technical Report] Sabanci University ID:9163

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Official URL: https://hal.inria.fr/hal-01744603/


We investigate the problem of partitioning the vertices of a directed acyclic graph into a given number of parts. The objective function is to minimize the number or the total weight of the edges having end points in different parts, which is also known as edge cut. The standard load balancing constraint of having an equitable partition of the vertices among the parts should be met. Furthermore, the partition is required to be acyclic, i.e., the inter-part edges between the vertices from different parts should preserve an acyclic dependency structure among the parts. In this work, we adopt the multilevel approach with coarsening, initial partitioning, and refinement phases for acyclic partitioning of directed acyclic graphs. We focus on two-way partitioning (sometimes called bisection), as this scheme can be used in a recursive way for multi-way partitioning. To ensure the acyclicity of the partition at all times, we propose novel and efficient coarsening and refinement heuristics. The quality of the computed acyclic partitions is assessed by computing the edge cut. We also propose effective ways to use the standard undirected graph partitioning methods in our multilevel scheme. We perform a large set of experiments on a dataset consisting of (i) graphs coming from an application and (ii) some others corresponding to matrices from a public collection. We report improvements, on average, around 59% compared to the current state of the art.

Item Type:Working Paper / Technical Report
Subjects:Q Science > QA Mathematics > QA075 Electronic computers. Computer science
ID Code:35222
Deposited By:Kamer Kaya
Deposited On:31 Jul 2018 16:40
Last Modified:31 Jul 2018 16:40

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