Literature DB >> 35224127

Graph Matching between Bipartite and Unipartite Networks: to Collapse, or not to Collapse, that is the Question.

Jesús Arroyo1, Carey E Priebe2, Vince Lyzinski3.   

Abstract

Graph matching consists of aligning the vertices of two unlabeled graphs in order to maximize the shared structure across networks; when the graphs are unipartite, this is commonly formulated as minimizing their edge disagreements. In this paper we address the common setting in which one of the graphs to match is a bipartite network and one is unipartite. Commonly, the bipartite networks are collapsed or projected into a unipartite graph, and graph matching proceeds as in the classical setting. This potentially leads to noisy edge estimates and loss of information. We formulate the graph matching problem between a bipartite and a unipartite graph using an undirected graphical model, and introduce methods to find the alignment with this model without collapsing. We theoretically demonstrate that our methodology is consistent, and provide non-asymptotic conditions that ensure exact recovery of the matching solution. In simulations and real data examples, we show how our methods can result in a more accurate matching than the naive approach of transforming the bipartite networks into unipartite, and we demonstrate the performance gains achieved by our method in simulated and real data networks, including a co-authorship-citation network pair, and brain structural and functional data.

Entities:  

Keywords:  bipartite networks; graph matching; graphical lasso; undirected graphical models

Year:  2021        PMID: 35224127      PMCID: PMC8865401          DOI: 10.1109/tnse.2021.3086508

Source DB:  PubMed          Journal:  IEEE Trans Netw Sci Eng        ISSN: 2327-4697


  14 in total

1.  The huge Package for High-dimensional Undirected Graph Estimation in R.

Authors:  Tuo Zhao; Han Liu; Kathryn Roeder; John Lafferty; Larry Wasserman
Journal:  J Mach Learn Res       Date:  2012-04       Impact factor: 3.654

2.  A Mapping Between Structural and Functional Brain Networks.

Authors:  Jil Meier; Prejaas Tewarie; Arjan Hillebrand; Linda Douw; Bob W van Dijk; Steven M Stufflebeam; Piet Van Mieghem
Journal:  Brain Connect       Date:  2016-03-29

3.  Sparse inverse covariance estimation with the graphical lasso.

Authors:  Jerome Friedman; Trevor Hastie; Robert Tibshirani
Journal:  Biostatistics       Date:  2007-12-12       Impact factor: 5.899

4.  A novel sparse graphical approach for multimodal brain connectivity inference.

Authors:  Bernard Ng; Gaël Varoquaux; Jean-Baptiste Poline; Bertrand Thirion
Journal:  Med Image Comput Comput Assist Interv       Date:  2012

5.  Efficiently inferring community structure in bipartite networks.

Authors:  Daniel B Larremore; Aaron Clauset; Abigail Z Jacobs
Journal:  Phys Rev E Stat Nonlin Soft Matter Phys       Date:  2014-07-10

6.  Graph Matching: Relax at Your Own Risk.

Authors:  Vince Lyzinski; Donniell E Fishkind; Marcelo Fiori; Joshua T Vogelstein; Carey E Priebe; Guillermo Sapiro
Journal:  IEEE Trans Pattern Anal Mach Intell       Date:  2016-01       Impact factor: 6.226

7.  A new method for improving functional-to-structural MRI alignment using local Pearson correlation.

Authors:  Ziad S Saad; Daniel R Glen; Gang Chen; Michael S Beauchamp; Rutvik Desai; Robert W Cox
Journal:  Neuroimage       Date:  2008-10-11       Impact factor: 6.556

Review 8.  Bipartite graphs in systems biology and medicine: a survey of methods and applications.

Authors:  Georgios A Pavlopoulos; Panagiota I Kontou; Athanasia Pavlopoulou; Costas Bouyioukos; Evripides Markou; Pantelis G Bagos
Journal:  Gigascience       Date:  2018-04-01       Impact factor: 6.524

9.  Fast approximate quadratic programming for graph matching.

Authors:  Joshua T Vogelstein; John M Conroy; Vince Lyzinski; Louis J Podrazik; Steven G Kratzer; Eric T Harley; Donniell E Fishkind; R Jacob Vogelstein; Carey E Priebe
Journal:  PLoS One       Date:  2015-04-17       Impact factor: 3.240

10.  An open science resource for establishing reliability and reproducibility in functional connectomics.

Authors:  Xi-Nian Zuo; Jeffrey S Anderson; Pierre Bellec; Rasmus M Birn; Bharat B Biswal; Janusch Blautzik; John C S Breitner; Randy L Buckner; Vince D Calhoun; F Xavier Castellanos; Antao Chen; Bing Chen; Jiangtao Chen; Xu Chen; Stanley J Colcombe; William Courtney; R Cameron Craddock; Adriana Di Martino; Hao-Ming Dong; Xiaolan Fu; Qiyong Gong; Krzysztof J Gorgolewski; Ying Han; Ye He; Yong He; Erica Ho; Avram Holmes; Xiao-Hui Hou; Jeremy Huckins; Tianzi Jiang; Yi Jiang; William Kelley; Clare Kelly; Margaret King; Stephen M LaConte; Janet E Lainhart; Xu Lei; Hui-Jie Li; Kaiming Li; Kuncheng Li; Qixiang Lin; Dongqiang Liu; Jia Liu; Xun Liu; Yijun Liu; Guangming Lu; Jie Lu; Beatriz Luna; Jing Luo; Daniel Lurie; Ying Mao; Daniel S Margulies; Andrew R Mayer; Thomas Meindl; Mary E Meyerand; Weizhi Nan; Jared A Nielsen; David O'Connor; David Paulsen; Vivek Prabhakaran; Zhigang Qi; Jiang Qiu; Chunhong Shao; Zarrar Shehzad; Weijun Tang; Arno Villringer; Huiling Wang; Kai Wang; Dongtao Wei; Gao-Xia Wei; Xu-Chu Weng; Xuehai Wu; Ting Xu; Ning Yang; Zhi Yang; Yu-Feng Zang; Lei Zhang; Qinglin Zhang; Zhe Zhang; Zhiqiang Zhang; Ke Zhao; Zonglei Zhen; Yuan Zhou; Xing-Ting Zhu; Michael P Milham
Journal:  Sci Data       Date:  2014-12-09       Impact factor: 6.444

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