Preference Biased Edge Weight Assignment for Connectivity-Based Resilience Computation in Telecommunication Networks

Resilience in telecommunication networks is viewed as a level of connectivity among nodes. This article discusses a preference-based edge weights assignment strategy. Preference values bias the selection of node and edge-related attributes to compute the level of connectivity.

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