A comprehensive survey of anomaly detection techniques for high dimensional big data
Anomaly detection in high dimensional data is becoming a fundamental research problem
that has various applications in the real world. However, many existing anomaly detection …
that has various applications in the real world. However, many existing anomaly detection …
A survey on unsupervised outlier detection in high‐dimensional numerical data
High‐dimensional data in Euclidean space pose special challenges to data mining
algorithms. These challenges are often indiscriminately subsumed under the term 'curse of …
algorithms. These challenges are often indiscriminately subsumed under the term 'curse of …
Robust subspace clustering
Robust subspace clustering Page 1 The Annals of Statistics 2014, Vol. 42, No. 2, 669–699
DOI: 10.1214/13-AOS1199 © Institute of Mathematical Statistics, 2014 ROBUST …
DOI: 10.1214/13-AOS1199 © Institute of Mathematical Statistics, 2014 ROBUST …
Minkowski metric, feature weighting and anomalous cluster initializing in K-Means clustering
RC De Amorim, B Mirkin - Pattern Recognition, 2012 - Elsevier
This paper represents another step in overcoming a drawback of K-Means, its lack of
defense against noisy features, using feature weights in the criterion. The Weighted K …
defense against noisy features, using feature weights in the criterion. The Weighted K …
Using multidimensional clustering based collaborative filtering approach improving recommendation diversity
X Li, T Murata - 2012 IEEE/WIC/ACM International Conferences …, 2012 - ieeexplore.ieee.org
In this paper, we present a hybrid recommendation approach for discovering potential
preferences of individual users. The proposed approach provides a flexible solution that …
preferences of individual users. The proposed approach provides a flexible solution that …
Scalable anomaly ranking of attributed neighborhoods
Given a graph with node attributes, what neighborhoods are anomalous? To answer this
question, one needs a quality score that utilizes both structure and attributes. Popular …
question, one needs a quality score that utilizes both structure and attributes. Popular …
Clustering high dimensional data
I Assent - Wiley Interdisciplinary Reviews: Data Mining and …, 2012 - Wiley Online Library
High‐dimensional data, ie, data described by a large number of attributes, pose specific
challenges to clustering. The so‐called 'curse of dimensionality', coined originally to …
challenges to clustering. The so‐called 'curse of dimensionality', coined originally to …
The role of hubness in clustering high-dimensional data
N Tomasev, M Radovanovic… - IEEE transactions on …, 2013 - ieeexplore.ieee.org
High-dimensional data arise naturally in many domains, and have regularly presented a
great challenge for traditional data mining techniques, both in terms of effectiveness and …
great challenge for traditional data mining techniques, both in terms of effectiveness and …
A survey on enhanced subspace clustering
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 …
dimensional datasets, and has been successfully applied in many domains. In recent years …
Grale: Designing networks for graph learning
How can we find the right graph for semi-supervised learning? In real world applications, the
choice of which edges to use for computation is the first step in any graph learning process …
choice of which edges to use for computation is the first step in any graph learning process …