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II Conferencia Internacional de Procesamiento de la Información "CIPI - IOTAI2019" -International Workshop on Internet of Things and Artificial Intelligence

II Conferencia Internacional de Procesamiento de la Información

CIPI - IOTAI2019

Space Efficient Decremental Betweenness Algorithm for Directed Graphs

Resumen

Betweenness is one of the most popular centrality measures in the analysis of social networks. Its computation has a high cost making it implausible for relatively large networks. The dynamic nature of many social networks opens up the possibility of developing faster algorithms for the dynamic version of the problem. In this work, we propose a new decremental algorithm to compute betweenness centrality of all nodes in directed graphs extracted from social networks. Our algorithm uses linear space, making it suitable for large scale applications. The experimental evaluation on a variety of networks has shown our algorithm is faster than recalculation from scratch and competitive with recent approaches.

Abstract

Betweenness is one of the most popular centrality measures in the analysis of social networks. Its computation has a high cost making it implausible for relatively large networks. The dynamic nature of many social networks opens up the possibility of developing faster algorithms for the dynamic version of the problem. In this work, we propose a new decremental algorithm to compute betweenness centrality of all nodes in directed graphs extracted from social networks. Our algorithm uses linear space, making it suitable for large scale applications. The experimental evaluation on a variety of networks has shown our algorithm is faster than recalculation from scratch and competitive with recent approaches.

Sobre el ponente

Reynaldo Gil Pons

Lic. Reynaldo Gil Pons

CERPAMID Flag of Cuba

Trabajo como investigador en Datys

Información Práctica
Ponencia
English (US)
No definido
30 minutos
No definido
Autores
Lic. Reynaldo Gil Pons
Dr. leticia arco
Palabras clave
betweenness centrality
dynamic algorithms
social network analysis