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{{Short description|Concept in network science}}
{{Network science}}
The '''stochastic [[Blockmodel|block model]]''' is a [[generative model]] for random [[Graph (discrete mathematics)|graphs]]. This model tends to produce graphs containing ''communities'', subsets of nodes characterized by being connected with one another with particular edge densities. For example, edges may be more common within communities than between communities. Its mathematical formulation
== Definition ==
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== Extensions to signed graphs ==
Signed graphs allow for both favorable and adverse relationships and serve as a common model choice for various data analysis applications, e.g., correlation clustering. The stochastic block model can be trivially extended to signed graphs by assigning both positive and negative edge weights or equivalently using a difference of adjacency matrices of two stochastic block models.
<ref>{{cite
| author1=Alyson Fox |author2=Geoffrey Sanders |author3=Andrew Knyazev
|
| journal=2018 IEEE High Performance Extreme Computing Conference (HPEC)▼
== DARPA/MIT/AWS Graph Challenge: streaming stochastic block partition ==
GraphChallenge<ref>[http://graphchallenge.mit.edu] {{Webarchive|url=https://web.archive.org/web/20230204160402/http://graphchallenge.mit.edu/
<ref>[http://graphchallenge.mit.edu/champions] {{Webarchive|url=https://web.archive.org/web/20230204160403/http://graphchallenge.mit.edu/champions
| author1 = A. J. Uppal |author2 = J. Choi |author3 = T. B. Rolinger |author4 = H. Howie Huang
|
base algorithm, matching its quality of clusters while being multiple orders of magnitude faster.<ref>{{cite
| journal=2021 IEEE High Performance Extreme Computing Conference (HPEC)▼
▲base algorithm, matching its quality of clusters while being multiple orders of magnitude faster.<ref>{{cite journal
| author1 = David Zhuzhunashvili |author2 = Andrew Knyazev
|
| date = 2017 |pages = 1–6
|doi = 10.1109/HPEC.2017.8091045|arxiv = 1708.07481 |isbn = 978-1-5386-3472-1
|s2cid = 19781504
}}</ref>
<ref>{{cite
| author1 = Lisa Durbeck |author2 = Peter Athanas
|
| date = 2020 |pages = 1–8
|doi = 10.1109/HPEC43674.2020.9286181|isbn = 978-1-7281-9219-2
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title = Mixed membership stochastic blockmodels| journal = Journal of Machine Learning Research |arxiv = 0705.4485| date = May 2007 | volume = 9| pages = 1981–2014| pmid = 21701698| pmc = 3119541| bibcode = 2007arXiv0705.4485A}}</ref>
<ref name="fat19">{{cite arXiv| last = Fathi| first = Reza| title = Efficient Distributed Community Detection in the Stochastic Block Model|eprint= 1904.07494| date = April 2019 | class = cs.DC}}</ref>
<ref name="hol">{{cite journal |title=Stochastic blockmodels: First steps |journal=[[Social Networks]] |year=1983 |last1=Holland |first1=Paul W |last2=Laskey |first2=Kathryn Blackmond |last3=Leinhardt |first3=Samuel |volume=5 |issue=2 |pages=109–137 |issn=0378-8733 |doi=10.1016/0378-8733(83)90021-7 |s2cid=34098453 |url=https://doi.org/10.1016/0378-8733(83)90021-7 |accessdate=2021-06-16 |archive-date=2023-02-04 |archive-url=https://web.archive.org/web/20230204160405/https://www.sciencedirect.com/science/article/abs/pii/0378873383900217?via%3Dihub |url-status=live |url-access=subscription }}</ref>
<ref name="ker">{{cite journal |title=Stochastic blockmodels and community structure in networks |journal=Physical Review E |year=2011 |last1=Karrer |first1=Brian |last2=Newman |first2=Mark E J |volume=83 |issue=1 |page=016107 |doi=10.1103/PhysRevE.83.016107 |pmid=21405744 |url=https://link.aps.org/doi/10.1103/PhysRevE.83.016107 |accessdate=2021-06-16 |arxiv=1008.3926 |bibcode=2011PhRvE..83a6107K |s2cid=9068097 |archive-date=2023-02-04 |archive-url=https://web.archive.org/web/20230204160406/https://journals.aps.org/pre/abstract/10.1103/PhysRevE.83.016107 |url-status=live }}</ref>
<ref name="pei">{{cite journal |title=Hierarchical block structures and high-resolution model selection in large networks |journal=Physical Review X |year=2014 |last=Peixoto |first=Tiago |volume=4 |issue=1 |page=011047 |doi=10.1103/PhysRevX.4.011047 |url=https://journals.aps.org/prx/abstract/10.1103/PhysRevX.4.011047 |accessdate=2021-06-16 |arxiv=1310.4377 |bibcode=2014PhRvX...4a1047P |s2cid=5841379 |archive-date=2021-06-24 |archive-url=https://web.archive.org/web/20210624195430/https://journals.aps.org/prx/abstract/10.1103/PhysRevX.4.011047 |url-status=live }}</ref>
}}
[[Category:Machine learning]]▼
[[Category:Random graphs]]
[[Category:Networks]]
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