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Power-Law Degree Distribution in the Connected Component of a Duplication Graph

Authors :
Jacquet, Philippe
Turowski, Krzysztof
Szpankowski, Wojciech
inTeRnet BEyond the usual (TRiBE )
Inria Saclay - Ile de France
Institut National de Recherche en Informatique et en Automatique (Inria)-Institut National de Recherche en Informatique et en Automatique (Inria)
Uniwersytet Jagielloński w Krakowie = Jagiellonian University (UJ)
Department of Computer Science [Purdue]
Purdue University [West Lafayette]
Source :
31st International Conference on Probabilistic, Combinatorial and Asymptotic Methods for the Analysis of Algorithms (AofA2020), AofA2020-31st International Conference on Probabilistic, Combinatorial and Asymptotic Methods for the Analysis of Algorithms, AofA2020-31st International Conference on Probabilistic, Combinatorial and Asymptotic Methods for the Analysis of Algorithms, Jun 2020, Klagenfurt, Austria
Publication Year :
2020
Publisher :
HAL CCSD, 2020.

Abstract

We study the partial duplication dynamic graph model, introduced by Bhan et al. in [Bhan et al., 2002] in which a newly arrived node selects randomly an existing node and connects with probability p to its neighbors. Such a dynamic network is widely considered to be a good model for various biological networks such as protein-protein interaction networks. This model is discussed in numerous publications with only a few recent rigorous results, especially for the degree distribution. Recently Jordan [Jordan, 2018] proved that for 0 < p < 1/e the degree distribution of the connected component is stationary with approximately a power law. In this paper we rigorously prove that the tail is indeed a true power law, that is, we show that the degree of a randomly selected node in the connected component decays like C/k^β where C an explicit constant and β ≠ 2 is a non-trivial solution of p^(β-2) + β - 3 = 0. This holds regardless of the structure of the initial graph, as long as it is connected and has at least two vertices. To establish this finding we apply analytic combinatorics tools, in particular Mellin transform and singularity analysis.<br />LIPIcs, Vol. 159, 31st International Conference on Probabilistic, Combinatorial and Asymptotic Methods for the Analysis of Algorithms (AofA 2020), pages 16:1-16:14

Details

Language :
English
Database :
OpenAIRE
Journal :
31st International Conference on Probabilistic, Combinatorial and Asymptotic Methods for the Analysis of Algorithms (AofA2020), AofA2020-31st International Conference on Probabilistic, Combinatorial and Asymptotic Methods for the Analysis of Algorithms, AofA2020-31st International Conference on Probabilistic, Combinatorial and Asymptotic Methods for the Analysis of Algorithms, Jun 2020, Klagenfurt, Austria
Accession number :
edsair.doi.dedup.....57f72ba8f00a5515bd68ef0a2de9f8b1