K-SpecPart: Supervised embedding algorithms and cut overlay for improved hypergraph partitioning
Ismail Bustany, Andrew B. Kahng, Ioannis Koutis, Bodhisatta Pramanik, and Zhiang Wang

TL;DR
K-SpecPart introduces a supervised spectral framework for hypergraph partitioning that leverages global structural information and ensemble techniques to improve cut quality over existing methods.
Contribution
It presents a novel spectral and supervised embedding approach combined with cut overlay clustering, enhancing hypergraph partitioning beyond traditional multilevel methods.
Findings
Achieves up to 15% cutsize improvement in bipartitioning.
Achieves up to 20% cutsize improvement in multi-way partitioning.
Outperforms leading partitioners like hMETIS and KaHyPar.
Abstract
State-of-the-art hypergraph partitioners follow the multilevel paradigm that constructs multiple levels of progressively coarser hypergraphs that are used to drive cut refinement on each level of the hierarchy. Multilevel partitioners are subject to two limitations: (i) hypergraph coarsening processes rely on local neighborhood structure without fully considering the global structure of the hypergraph; and (ii) refinement heuristics risk entrapment in local minima. In this paper, we describe K-SpecPart, a supervised spectral framework for multi-way partitioning that directly tackles these two limitations. K-SpecPart relies on the computation of generalized eigenvectors and supervised dimensionality reduction techniques to generate vertex embeddings. These are computational primitives that are fast and capture global structural properties of the hypergraph that are not explicitly…
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Taxonomy
TopicsVLSI and FPGA Design Techniques · Image and Video Quality Assessment
