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dc.contributor.advisorBorges, Carlos F.
dc.contributor.advisorRasmussen, Craig W.
dc.contributor.advisorGera, Ralucca
dc.contributor.advisorAlderson, David L. Jr.
dc.contributor.advisorEverton, Sean F.
dc.contributor.advisorBaumgartner, Gerry
dc.contributor.advisorArney, David
dc.contributor.authorRoginski, Jonathan W.
dc.date.accessioned2018-08-24T22:34:15Z
dc.date.available2018-08-24T22:34:15Z
dc.date.issued2018-06
dc.identifier.urihttps://hdl.handle.net/10945/59576
dc.description.abstractThis research provides an innovative approach to identifying the influence of vertices on the topology of a graph by introducing and exploring the neighbor matrix and distance centrality. The neighbor matrix depicts the “distance profile” of each vertex, identifying the number of vertices at each shortest path length from the given vertex. From the neighbor matrix, we can derive 11 oft-used graph invariants. Distance centrality uses the neighbor matrix to identify how much influence a given vertex has over graph structure by calculating the amount of neighbor matrix change resulting from vertex removal. We explore the distance centrality in the context of three synthetic graphs and three graphs representing actual social networks. Regression analysis enables the determination that the distance centrality contains different information than four current centrality measures (betweenness, closeness, degree, and eigenvector). The distance centrality proved to be more robust against small changes in graphs through analysis of graphs under edge swapping, deletion, and addition paradigms than betweenness and eigenvector centrality, though less so than degree and closeness centralities. We find that the neighbor matrix and the distance centrality reliably enable the identification of vertices that are significant in different and important contexts than current measures.en_US
dc.description.urihttp://archive.org/details/thedistancecentr1094559576
dc.publisherMonterey, CA; Naval Postgraduate Schoolen_US
dc.rightsThis publication is a work of the U.S. Government as defined in Title 17, United States Code, Section 101. Copyright protection is not available for this work in the United States.en_US
dc.titleTHE DISTANCE CENTRALITY: MEASURING STRUCTURAL DISRUPTION OF A NETWORKen_US
dc.typeThesisen_US
dc.contributor.departmentOperations Research (OR)
dc.contributor.departmentApplied Mathematics (MA)
dc.subject.authornetworken_US
dc.subject.authorgraphen_US
dc.subject.authorneighbor matrixen_US
dc.subject.authordistance centralityen_US
dc.subject.authorgraph topologyen_US
dc.subject.authorattack and defenseen_US
dc.subject.authordisruptionen_US
dc.subject.authorpercolationen_US
dc.subject.authorrobustnessen_US
dc.subject.authorsimulationen_US
dc.description.serviceLieutenant Colonel, United States Armyen_US
etd.thesisdegree.nameDoctor of Philosophy in Applied Mathematicsen_US
etd.thesisdegree.levelDoctoralen_US
etd.thesisdegree.disciplineOperations Researchen_US
etd.thesisdegree.disciplineApplied Mathematicsen_US
etd.thesisdegree.grantorNaval Postgraduate Schoolen_US
dc.identifier.thesisid27182
dc.description.distributionstatementApproved for public release; distribution is unlimited.


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