Matches in ScholarlyData for { <https://w3id.org/scholarlydata/inproceedings/www2012/paper/1004> ?p ?o. }
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- 1004 creator chuan-li.
- 1004 creator philip-yu.
- 1004 creator quanyuan-wu.
- 1004 creator wangqun-lin.
- 1004 creator xiangnan-kong.
- 1004 creator yan-jia.
- 1004 type InProceedings.
- 1004 label "Community Detection in Incomplete Information Networks".
- 1004 sameAs 1004.
- 1004 abstract "With the recent advances in information networks, the problem of community detection has attracted much attention in the last decade. While network community detection has been ubiquitous, the task of collecting complete network data remains challenging in many real-world applications. Usually the collected network is incomplete with most of the edges missing. Commonly, in such networks, all nodes with attributes are available while only the edges within a few local regions of the network can be observed. In this paper, we study the problem of detecting communities in incomplete information networks with missing edges. We first learn a distance metric to reproduce the link-based distance between nodes from the observed edges in the local information regions. We then use the learned distance metric to estimate the distance between any pair of nodes of the network. A hierarchy clustering algorithm DSHRINK, is proposed to detect communities within the incomplete information networks. Empirical studies on real-world information networks demonstrate that our proposed method can effectively detect community structures within incomplete information networks.".
- 1004 hasAuthorList authorList.
- 1004 isPartOf proceedings.
- 1004 keyword "Community detection;".
- 1004 keyword "incomplete information networks;".
- 1004 keyword "metric learning".
- 1004 title "Community Detection in Incomplete Information Networks".