Actas de congresos
StructMatrix: large-scale visualization of graphs by means of structure detection and dense matrices
Fecha
2015-11Registro en:
International Conference on Data Mining Workshops, 15th, 2015, Atlantic City.
9781467384933
Autor
Gualdron, Hugo
Cordeiro, Robson Leonardo Ferreira
Rodrigues Junior, José Fernando
Institución
Resumen
Given a large-scale graph with millions of nodes and edges, how to reveal macro patterns of interest, like cliques, bi-partite cores, stars, and chains? Furthermore, how to visualize such patterns altogether getting insights from the graph to support wise decision-making? Although there are many algorithmic and visual techniques to analyze graphs, none of the existing approaches is able to present the structural information of graphs at large-scale. Hence, this paper describes StructMatrix, a methodology aimed at high-scalable visual inspection of graph structures with the goal of revealing macro patterns of interest. StructMatrix combines algorithmic structure detection and adjacency matrix visualization to present cardinality, distribution, and relationship features of the structures found in a given graph. We performed experiments in real, large-scale graphs with up to one million nodes and millions of edges. StructMatrix revealed that graphs of high relevance (e.g., Web, Wikipedia and DBLP) have characterizations that reflect the nature of their corresponding domains; our findings have not been seen in the literature so far.We expect that our technique will bring deeper insights into large graph mining, leveraging their use for decision making.
Ítems relacionados
Mostrando ítems relacionados por Título, autor o materia.
-
ReGraph = bridging relational and graph databases = ReGraph: interligando bancos de dados relacionais e de grafos
Cavoto, Patrícia Raia Nogueira, 1983- -
Combinando P-Graph y S-Graph en la visualización de rutas de evacuación
Khalifah Gamboa, Magdi -
Graph dominance by rook domains for Znp and Zn3 × Zm2 graphs
Piza-Volio, Eduardo