Preserving Minority Structures in Graph Sampling
2020
Sampling is a widely used graph reduction
technique to accelerate graph computations and simplify graph visualizations.
By comprehensively analyzing the literature on graph sampling, we assume that
existing algorithms cannot effectively preserve minority structures that are
rare and small in a graph but are very important in graph analysis. In this
work, we initially conduct a pilot user study to investigate representative
minority structures that are most appealing to human viewers. We then perform
an experimental study to evaluate the performance of existing graph sampling
algorithms regarding minority structure preservation. Results confirm our
assumption and suggest key points for designing a new graph sampling approach
named mino-centric graph sampling (MCGS). In this approach, a triangle-based algorithm
and a cut-point-based algorithm are proposed to efficiently identify minority
structures. A set of importance assessment criteria are designed to guide the
preservation of important minority structures. Three optimization objectives
are introduced into a greedy strategy to balance the preservation between
minority and majority structures and suppress the generation of new minority
structures. A series of experiments and case studies are conducted to evaluate
the effectiveness of the proposed MCGS.
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