Experiential learning methodology adopted for effective delivery of Computer Communication Networks course during Covid-19 pandemic

Author(s):  
Vijaya Eligar ◽  
Shamshuddin K ◽  
Hemant Kelagadi ◽  
Anil Kabbur ◽  
Nalini Iyer
2008 ◽  
Vol 41 (2) ◽  
pp. 15427-15432
Author(s):  
Pierre T. Kabamba ◽  
Wen-Chiao Lin ◽  
Semyon M. Meerkov ◽  
Choon Yik Tang

2013 ◽  
pp. 446-464 ◽  
Author(s):  
Ana Paula Appel ◽  
Christos Faloutsos ◽  
Caetano Traina Junior

Graphs appear in several settings, like social networks, recommendation systems, computer communication networks, gene/protein biological networks, among others. A large amount of graph patterns, as well as graph generator models that mimic such patterns have been proposed over the last years. However, a deep and recurring question still remains: “What is a good pattern?” The answer is related to finding a pattern or a tool able to help distinguishing between actual real-world and fake graphs. Here we explore the ability of ShatterPlots, a simple and powerful algorithm to tease out patterns of real graphs, helping us to spot fake/masked graphs. The idea is to force a graph to reach a critical (“Shattering”) point, randomly deleting edges, and study its properties at that point.


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