DocumentCode
3779474
Title
Structural-semantic approach for approximate frequent subgraph mining
Author
Mohamed Moussaoui;Montaceur Zaghdoud;Jalel Akaichi
Author_Institution
BESTMOD Laboratory, Higher Institute of Management, Tunisia, Central Polytechnic School of Tunis
fYear
2015
Firstpage
1
Lastpage
8
Abstract
Frequent subgraph mining refers usually to graph matching and it is widely used when analyzing big data with large graphs. A lot of research works dealt with structural exact or inexact graph matching but a little attention is paid to semantic matching when graph vertices and/or edges are attributed and typed. Therefore, it seems very interesting to integrate background knowledge into the analysis and that extracted frequent subgraphs should become more pruned by applying a new semantic filter instead of using only structural similarity in graph matching process. Consequently, this paper focuses on developing a new hybrid approximate structural semantic graph matching to discover a set of frequent subgraphs. It uses both similarity measures. An approximate structural similarity function based on graph edit distance function and a semantic vertices similarity function based on possibilistic information affinity function. Both structural and semantic filters contribute together to prune extracted frequent sets. Indeed, new hybrid structural-semantic frequent subgraph mining approach will be suitable to be applied to several applications such as community detection and social network analysis.
Keywords
"Semantics","Data mining","Social network services","Possibility theory","Electronic mail","Uncertainty","Image edge detection"
Publisher
ieee
Conference_Titel
Computer Systems and Applications (AICCSA), 2015 IEEE/ACS 12th International Conference of
Electronic_ISBN
2161-5330
Type
conf
DOI
10.1109/AICCSA.2015.7507244
Filename
7507244
Link To Document