Nowadays, high volumes of high-value data (e.g., semantic web data) can be generated and published at a high velocity. A collection of these data can be viewed as a big, interlinked, dynamic graph structure of linked resources. Embedded in them are implicit, previously unknown, and potentially use- ful knowledge. Hence, eficient knowledge discovery algo- rithms for mining frequent subgraphs from these dynamic, streaming graph structured data are in demand. Some exist- ing algorithms require very large memory space to discover frequent subgraphs; some others discover collections of fre- quently co-occurring edges (which may be disjoint). In con- trast, we propose|in this paper|algorithms that use lim- ited memory space for discovering collections of frequently co-occurring connected edges. Evaluation results show the effectiveness of our algorithms in frequent subgraph mining from streams of linked graph structured data.
Frequent subgraph mining from streams of linked graph structured data
Cuzzocrea A;
2015
Abstract
Nowadays, high volumes of high-value data (e.g., semantic web data) can be generated and published at a high velocity. A collection of these data can be viewed as a big, interlinked, dynamic graph structure of linked resources. Embedded in them are implicit, previously unknown, and potentially use- ful knowledge. Hence, eficient knowledge discovery algo- rithms for mining frequent subgraphs from these dynamic, streaming graph structured data are in demand. Some exist- ing algorithms require very large memory space to discover frequent subgraphs; some others discover collections of fre- quently co-occurring edges (which may be disjoint). In con- trast, we propose|in this paper|algorithms that use lim- ited memory space for discovering collections of frequently co-occurring connected edges. Evaluation results show the effectiveness of our algorithms in frequent subgraph mining from streams of linked graph structured data.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.


