DocumentCode
659462
Title
Incremental algorithms for closeness centrality
Author
Sariyuce, Ahmet Erdem ; Kaya, Kamer ; Saule, Erik ; Catalyurek, Umit V.
fYear
2013
fDate
6-9 Oct. 2013
Firstpage
487
Lastpage
492
Abstract
Centrality metrics have shown to be highly correlated with the importance and loads of the nodes within the network traffic. In this work, we provide fast incremental algorithms for closeness centrality computation. Our algorithms efficiently compute the closeness centrality values upon changes in network topology, i.e., edge insertions and deletions. We show that the proposed techniques are efficient on many real-life networks, especially on small-world networks, which have a small diameter and spike-shaped shortest distance distribution. We experimentally validate the efficiency of our algorithms on large-scale networks and show that they can update the closeness centrality values of 1.2 million authors in the temporal DBLP-coauthorship network 460 times faster than it would take to recompute them from scratch.
Keywords
computer networks; telecommunication network topology; centrality metrics; closeness centrality computation; closeness centrality values; edge deletions; edge insertions; fast incremental algorithms; large-scale networks; network topology; network traffic; small-world networks; spike-shaped shortest distance distribution; temporal DBLP-coauthorship network; Algorithm design and analysis; Filtering; Measurement; Network topology; Power system dynamics; Runtime; Social network services; closeness centrality; dynamic networks; small-world networks;
fLanguage
English
Publisher
ieee
Conference_Titel
Big Data, 2013 IEEE International Conference on
Conference_Location
Silicon Valley, CA
Type
conf
DOI
10.1109/BigData.2013.6691611
Filename
6691611
Link To Document