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Multi-view clustering for mining heterogeneous social network data
Author(s)
Date Issued
2009-03
Date Available
2010-03-29T14:15:08Z
Abstract
Uncovering community structure is a core challenge in social network analysis. This is a significant challenge for large networks where there is a single type of relation in the network (e.g. friend or knows). In practice there may be other types of relation, for instance demographic or geographic information, that also reveal network structure. Uncovering structure in such multi-relational networks presents a greater challenge due to the difficulty of integrating information from different, often discordant views. In this paper we describe a system for performing cluster analysis on heterogeneous multi-view data, and present an analysis of the research themes in a bibliographic literature network, based on the integration of both co-citation links and text similarity relationships between papers in the network.
Sponsorship
Science Foundation Ireland
Type of Material
Conference Publication
Subject – LCSH
Social networks
Machine learning
Cluster analysis
Bibliometrics
Language
English
Status of Item
Not peer reviewed
Conference Details
Paper presented at the Workshop on Information Retrieval over Social Networks, 31st European Conference on Information Retrieval (ECIR'09), Toulouse, France, April 6-9, 2009
This item is made available under a Creative Commons License
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pica-ecir09-pub.pdf
Size
337.96 KB
Format
Adobe PDF
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