VieM v1.00 -- Vienna Mapping and Sparse Quadratic Assignment User Guide

This paper severs as a user guide to the mapping framework VieM (Vienna Mapping and Sparse Quadratic Assignment). We give a rough overview of the techniques used within the framework and describe the user interface as well as the file formats used.

Comments: arXiv admin note: text overlap with arXiv:1311.1714

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