Publication | Open Access
Metric graph reconstruction from noisy data
30
Citations
16
References
2011
Year
Unknown Venue
Graph SparsityEngineeringSimilarity MeasureGraph Signal ProcessingRange SearchingGraph MatchingLocalizationData ScienceData MiningMetric Graph ReconstructionPublic HealthComputational GeometryMetric GraphsKnowledge DiscoveryInverse ProblemsComputer ScienceMetric GraphGraph TheoryMetric GeometryMetric Graph TheorySimilarity SearchWasserstein Distance
Many real-world data sets can be viewed of as noisy samples of special types of metric spaces called metric graphs [16]. Building on the notions of correspondence and Gromov-Hausdorff distance in metric geometry, we describe a model for such data sets as an approximation of an underlying metric graph. We present a novel algorithm that takes as an input such a data set, and outputs the underlying metric graph with guarantees. We also implement the algorithm, and evaluate its performance on a variety of real world data sets.
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