Subspace clustering

HP Kriegel, P Kröger, A Zimek - Wiley Interdisciplinary Reviews …, 2012 - Wiley Online Library
Subspace clustering refers to the task of identifying clusters of similar objects or data records
(vectors) where the similarity is defined with respect to a subset of the attributes (ie, a …

Clustering high-dimensional data: A survey on subspace clustering, pattern-based clustering, and correlation clustering

HP Kriegel, P Kröger, A Zimek - … on knowledge discovery from data (tkdd …, 2009 - dl.acm.org
As a prolific research area in data mining, subspace clustering and related problems
induced a vast quantity of proposed solutions. However, many publications compare a new …

Subspace multi-clustering: a review

J Hu, J Pei - Knowledge and information systems, 2018 - Springer
Clustering has been widely used to identify possible structures in data and help users to
understand data in an unsupervised manner. Traditional clustering methods often provide a …

Evaluating clustering in subspace projections of high dimensional data

E Müller, S Günnemann, I Assent, T Seidl - Proceedings of the VLDB …, 2009 - dl.acm.org
Clustering high dimensional data is an emerging research field. Subspace clustering or
projected clustering group similar objects in subspaces, ie projections, of the full space. In …

Clustering very large multi-dimensional datasets with mapreduce

RL Ferreira Cordeiro, C Traina… - Proceedings of the 17th …, 2011 - dl.acm.org
Given a very large moderate-to-high dimensionality dataset, how could one cluster its
points? For datasets that don't fit even on a single disk, parallelism is a first class option. In …

A survey on enhanced subspace clustering

K Sim, V Gopalkrishnan, A Zimek, G Cong - Data mining and knowledge …, 2013 - Springer
Subspace clustering finds sets of objects that are homogeneous in subspaces of high-
dimensional datasets, and has been successfully applied in many domains. In recent years …

SpringerBriefs in Computer Science

S Zdonik, P Ning, S Shekhar, J Katz, X Wu, LC Jain… - 2012 - Springer
This is an introduction to multicast routing, which is the study of methods for routing from one
source to many destinations, or from many sources to many destinations. Multicast is …

DUSC: Dimensionality unbiased subspace clustering

I Assent, R Krieger, E Müller… - seventh IEEE international …, 2007 - ieeexplore.ieee.org
To gain insight into today's large data resources, data mining provides automatic
aggregation techniques. Clustering aims at grouping data such that objects within groups …

Finding non-redundant, statistically significant regions in high dimensional data: a novel approach to projected and subspace clustering

G Moise, J Sander - Proceedings of the 14th ACM SIGKDD international …, 2008 - dl.acm.org
Projected and subspace clustering algorithms search for clusters of points in subsets of
attributes. Projected clustering computes several disjoint clusters, plus outliers, so that each …

Outlier ranking via subspace analysis in multiple views of the data

E Müller, I Assent, P Iglesias, Y Mülle… - 2012 IEEE 12th …, 2012 - ieeexplore.ieee.org
Outlier mining is an important task for finding anomalous objects. In practice, however, there
is not always a clear distinction between outliers and regular objects as objects have …