Given a set of objects and a pairwise similarity measure between them,
the goal of correlation clustering is to partition the objects in a
set of clusters to maximize the similarity of the objects within the
same cluster and minimize the similarity of the objects in different
clusters. In most of the variants of correlation clustering, the
number of clusters is not a given parameter; instead, the optimal
number of clusters is automatically determined. Correlation clustering
is perhaps the most natural formulation of clustering: as it just
needs a definition of similarity, its broad generality makes it
applicable to a wide range of problems in different contexts, and,
particularly, makes it naturally suitable to clustering structured
objects for which feature vectors can be difficult to obtain. Despite
its simplicity, generality, and wide applicability, correlation
clustering has so far received much more attention from an
algorithmic-theory perspective than from the data-mining community.
The goal of this lecture is to show how correlation clustering can be
a powerful addition to the toolkit of a data-mining researcher and
practitioner, and to encourage further research in the area.
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Produktdetaljer
ISBN
9783031792106
Publisert
2022
Utgiver
Vendor
Springer
Språk
Product language
Engelsk
Format
Product format
Digital bok