
LINQS
STATISTICAL RELATIONAL LEARNING GROUP @ UMD
Link Mining: A Survey
SigKDD Explorations Special Issue on Link Mining, Volume 7, Number 2 - december 2005
Many datasets of interest today are best described as a linked
collection of interrelated objects. These may represent homogeneous
networks, in which there is a single-object type and link type, or
richer, heterogeneous networks, in which there may be multiple object
and link types (and possibly other semantic information). Examples of
homogeneous networks include single mode social networks, such as
people connected by friendship links, or the WWW, a collection of
linked web pages. Examples of heterogeneous networks include those in
medical domains describing patients, diseases, treatments and
contacts, or in bibliographic domains describing publications,
authors, and venues. {\em Link mining} refers to data mining
techniques that explicitly consider these links when building
predictive or descriptive models of the linked data. Commonly
addressed link mining tasks include object ranking, group detection,
collective classification, link prediction and subgraph discovery.
While network analysis has been studied in depth in particular areas
such as social network analysis, hypertext mining, and web analysis,
only recently has there been a cross-fertilization of ideas among
these different communities. This is an exciting, rapidly expanding
area. In this article, we review some of the common emerging themes.
BibTex references
@Article\{getoor:kdd-exp05,
author = "Getoor, Lise and Diehl, Christopher",
title = "Link Mining: A Survey",
journal = "SigKDD Explorations Special Issue on Link Mining",
number = "2",
volume = "7",
month = "december",
year = "2005",
}
![getoor-kdd-exp05.pdf [126Ko]](/basilic/web/Publications/images/pdf.png)

