Publication | Closed Access
Probabilistic embeddings of bounded genus graphs into planar graphs
25
Citations
15
References
2007
Year
Unknown Venue
Guest MetricsGeometric Graph TheoryEngineeringGraph TheoryProbabilistic Graph TheoryBounded Genus GraphsMetrics MTopological Graph TheoryPlanar GraphComputational ComplexityProbability TheoryComputer ScienceDiscrete MathematicsMetric MCombinatorial OptimizationComputational GeometryMetric Graph TheoryGraph Processing
A probabilistic C-embedding of a (guest) metric M into a collection of(host) metrics M'1, ..., M'k is a randomized mapping F of M intoone of the M'1, ..., M'k such that, for any two points p,q in theguest metric: The distance between F(p) and F(q) in any M'i is not smaller thanthe original distance between p and q. The expected distance between F(p) and F(q) in (random) M'i is notgreater than some constant C times the original distance, for C≥ 1. The constant C is called the distortion of the embedding. Low-distortion probabilistic embeddings enable reducing algorithmicproblems over "hard" guest metrics into "easy" host metrics.We show that every metric induced by a graph of bounded genus can beprobabilistically embedded into planar graphs, with constant distortion. The embedding can be computed efficiently, given a drawing of the graphon a genus-g surface.
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