2013 IEEE Pacific Visualization Symposium (PacificVis) 2013
DOI: 10.1109/pacificvis.2013.6596143
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Exploring agent-based simulations in political science using Aggregate Temporal Graphs

Abstract: Agent-based simulation has become a key technique for modeling and simulating dynamic, complicated behaviors in social and behavioral sciences. As these simulations become more complex, they generate an increasingly large amount of data. Lacking the appropriate tools and support, it has become difficult for social scientists to interpret and analyze the results of these simulations. In this paper, we introduce the Aggregate Temporal Graph (ATG), a graph formulation that can be used to capture complex relations… Show more

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Cited by 1 publication
(2 citation statements)
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References 29 publications
(25 reference statements)
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“…The weights of the edges in such graphs would represent the number of times the two connected states were traversed in one or more runs of the simulation. Crouser et al [2] propose the use of aggregated temporal graphs (ATGs), the vertices of which encapsulate a unique state configuration of the model. Multiple model runs are then aggregated into a single graph.…”
Section: Networked Abm Outputmentioning
confidence: 99%
See 1 more Smart Citation
“…The weights of the edges in such graphs would represent the number of times the two connected states were traversed in one or more runs of the simulation. Crouser et al [2] propose the use of aggregated temporal graphs (ATGs), the vertices of which encapsulate a unique state configuration of the model. Multiple model runs are then aggregated into a single graph.…”
Section: Networked Abm Outputmentioning
confidence: 99%
“…Betweenness centrality (C B ) measures the extent to which a vertex lies in the pathways between all pairs of vertices, and thus captures the extent to which a vertex is a gateway while accounting for the global graph structure. 2 In order to account for higher betweenness for those vertices that receive or emit many edges, we substitute multiple edges with a single edge having a weight of the count of edges. These weights are inverted (i.e., 1/weight) so that the weighted edge between two vertices consecutively traversed in many simulation runs will be considered a shorter path than if they were traversed by few simulations.…”
Section: Temporally Constrained Aggregated Graphsmentioning
confidence: 99%