Subspace clustering has been investigated extensively since traditional clustering algorithms often fail to detect meaningful clusters in high-dimensional data spaces. Many recently proposed subspace clustering methods suffer from two severe problems: First, the algorithms typically scale exponentially with the data dimensionality and/or the subspace dimensionality of the clusters. Second, for performance reasons, many algorithms use a global density threshold for clustering, which is quite questionable since clusters in subspaces of significantly different dimensionality will most likely exhibt significantly varying densities. In this paper, we propose a generic framework to overcome these limitations. Our framework is based on an efficien...
We present a novel method for clustering data drawn from a union of arbitrary dimensional subspaces,...
Clusters may exist in different subspaces of a multidimensional dataset. Traditional full-space clus...
Clusters may exist in different subspaces of a multidimensional dataset. Traditional full-space clus...
Subspace clustering has been investigated exten-sively since traditional clustering algorithms often...
Abstract- Clustering high dimensional data is an emerging research field. Most clustering technique ...
Clustering techniques often define the similarity between instances using distance measures over the...
International audienceIn high dimensional data, the general performance of traditional clustering al...
Many real-world data sets consist of a very high dimensional feature space. Most clustering techniqu...
Many clustering algorithms tend to break down in high-dimensional feature spaces, because the cluste...
Clustering is an important data mining task for groupingsimilar objects. In high dimensional data, h...
cluster analysis of data with anywhere from a few dozens to many thousands of dimensions. High-dimen...
Many clustering algorithms tend to break down in high-dimensional feature spaces, because the cluste...
Clustering high dimensional data is an emerging research field. Subspace clustering or projected clu...
© 2019 Minh Tuan DoanClustering is the task of grouping similar objects together, where each group f...
Clusters may exist in different subspaces of a multidimensional dataset. Traditional full-space clus...
We present a novel method for clustering data drawn from a union of arbitrary dimensional subspaces,...
Clusters may exist in different subspaces of a multidimensional dataset. Traditional full-space clus...
Clusters may exist in different subspaces of a multidimensional dataset. Traditional full-space clus...
Subspace clustering has been investigated exten-sively since traditional clustering algorithms often...
Abstract- Clustering high dimensional data is an emerging research field. Most clustering technique ...
Clustering techniques often define the similarity between instances using distance measures over the...
International audienceIn high dimensional data, the general performance of traditional clustering al...
Many real-world data sets consist of a very high dimensional feature space. Most clustering techniqu...
Many clustering algorithms tend to break down in high-dimensional feature spaces, because the cluste...
Clustering is an important data mining task for groupingsimilar objects. In high dimensional data, h...
cluster analysis of data with anywhere from a few dozens to many thousands of dimensions. High-dimen...
Many clustering algorithms tend to break down in high-dimensional feature spaces, because the cluste...
Clustering high dimensional data is an emerging research field. Subspace clustering or projected clu...
© 2019 Minh Tuan DoanClustering is the task of grouping similar objects together, where each group f...
Clusters may exist in different subspaces of a multidimensional dataset. Traditional full-space clus...
We present a novel method for clustering data drawn from a union of arbitrary dimensional subspaces,...
Clusters may exist in different subspaces of a multidimensional dataset. Traditional full-space clus...
Clusters may exist in different subspaces of a multidimensional dataset. Traditional full-space clus...