Survey on Sparse Graph Limits + A Toy Example

Published on ● Video Link: https://www.youtube.com/watch?v=QLT9RP6ykSE



Duration: 45:51
489 views
8


Mei Yin (University of Denver)
https://simons.berkeley.edu/node/22616
Graph Limits, Nonparametric Models, and Estimation

The theory of graph limits is an important tool in understanding properties of large networks. We begin the talk with a survey of this theory, concentrating in particular on the sparse setting. We then investigate a power-law random graph model and cast it in the sparse graph limit theory framework. The distinctively different structures of the limit graph are explored in detail in the sub-critical and super-critical regimes. In the sub-critical regime, the graph is empty with high probability, and in the rare event that it is non-empty, it consists of a single edge. Contrarily, in the super-critical regime, a non-trivial random graph exists in the limit, and it serves as an uncovered boundary case between different types of graph convergence.




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Tags:
Simons Institute
theoretical computer science
UC Berkeley
Computer Science
Theory of Computation
Theory of Computing
Graph Limits Nonparametric Models and Estimation
Mei Yin