Chung–Lu Model
The Chung-Lu model generates a graph with potential self-loops given a expected degree sequence as the degree specification.
- Motivation: the Algorithm 2 Sampling is similar to uniformly sampling a graph in the graph space; Chung-Lu model is similar to Erdos-Renyi Random Graph and thus is easier to analyze.
- Model: Fixed , undirected, expected degree sequence , 1
- Phase transitions
- Connectivity:
- The above threshold ensures no isolated nodes, which is conjectured to be the same threshold for connectivity
- Giant component:
- See ^95d986
- Connectivity:
- Example: gives ER
- Remarks:
- Assumption:
- Or just cap the probability to be
- When , the probability of self-loops is of higher-order
- Typical regime of interest: sparse
- All edges are drawn independently
- An alternative generation process is place a Poison-distributed number of edges with mean between each pair of nodes, which may generate multi-edges and self-loops
- An alternative model is to set the probability of self-loops to and renormalize the probabilities of other edges, which leads to slightly off expected degrees but is asymptotically equivalent
- The realized degree distribution can differ significantly from the expected degree sequence
- Assumption:
Connectivity
Let . Suppose . Then, the probability that node is isolated is
Thus, the probability of having no isolated nodes is
Footnotes
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Some definitions model if is counted twice in the process, or contributes two degrees to node . ↩