Data di Pubblicazione:
2018
Abstract:
The DBSCAN algorithm is a well-known density based
clustering approach particularly useful in spatial data
mining for its ability to find objects' groups with heterogeneous
shapes and homogeneous local density distributions
in the feature space. Furthermore, it can be suitable as scaling
down approach to deal with big data for its ability to
remove noise. Nevertheless, it suffers for some limitations,
mainly the inability to identify clusters with variable density
distributions and partially overlapping borders, which is
often a characteristics of both scientific data and real-world
data. To this end, in this work, we propose three fuzzy extensions
of the DBSCAN algorithm to generate clusters with
distinct fuzzy density characteristics. The original version of
DBSCAN requires two precise parameters (minPts and epsilon) to
define locally dense areas which serve as seeds of the clusters.
Nevertheless, precise values of both parameters may be
not appropriate in all regions of the dataset. In the proposed
extensions of DBSCAN, we define soft constraints to model
approximate values of the input parameters. The first extension,
named Fuzzy Core DBSCAN, relaxes the constraint on
the neighbourhood's density to generate clusters with fuzzy
core points, i.e. cores with distinct density; the second extension,
named Fuzzy Border DBSCAN, relaxes epsilon to allow the
generation of clusters with overlapping borders. Finally, the
third extension, named Fuzzy DBSCAN subsumes the previous ones, thus allowing to generate clusters with both fuzzy
cores and fuzzy overlapping borders. Our proposals are compared
w.r.t. state of the art fuzzy clustering methods over
real-world datasets.
Tipologia CRIS:
01.01 Articolo in rivista
Keywords:
fuzzy density based clustering
Elenco autori:
Bordogna, Gloria
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