Adaptive aggregation on graphs
classification
🧮 math.NA
keywords
aggregationestimatesgraphsposteriorisettingsseveraladaptiveadaptively
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We generalize some of the functional (hyper-circle) a posteriori estimates from finite element settings to general graphs or Hilbert space settings. We provide several theoretical results in regard to the generalized a posteriori error estimators. We use these estimates to construct aggregation based coarse spaces for graph Laplacians. The estimator is used to assess the quality of an aggregation adaptively. Furthermore, a reshaping algorithm based is tested on several numerical examples.
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