Giant Component and Connectivity in Geographical Threshold Graphs
نویسندگان
چکیده
The geographical threshold graph model is a random graph model with nodes distributed in a Euclidean space and edges assigned through a function of distance and node weights. We study this model and give conditions for the absence and existence of the giant component, as well as for connectivity.
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