It is well-known that for high dimensional data clustering, standard algorithms such as EM and the K-means are often trapped in local minimum. many initialization methods were proposed to tackle this problem, but with only limited success. In this paper they propose a new approach to resolve this problem by repeated dimension reductions such that K-means or EM are performed only in very low dimensions. Cluster membership is utilized as a bridge between the reduced dimensional sub-space and the original space, providing flexibility and ease of implementation. Clustering analysis performed on highly overlapped Gaussians, DNA gene expression profiles and internet newsgroups demonstrate the effectiveness of the proposed algorithm
The aim of this article is to propose a procedure to cluster functional observations in a subspace ...
The aim of this article is to propose a procedure to cluster functional observations in a subspace ...
The aim of this article is to propose a procedure to cluster functional observations in a subspace ...
It is well-known that for high dimensional data cluster-ing, standard algorithms such as EM and the ...
Abstract It is well-known that for high dimensional data cluster-ing, standard algorithms such as EM...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
cluster analysis of data with anywhere from a few dozens to many thousands of dimensions. High-dimen...
Abstract — Dimensionality reduction is essential in multidimensional data mining since the dimension...
The K-means clustering algorithm is an old algorithm that has been intensely researched owing to its...
Emerging high-dimensional data mining applications needs to find interesting clusters embeded in arb...
More and more data are produced every day. Some clustering techniques have been developed to automat...
K-means clustering is being widely studied problem in a variety of application domains. The computat...
dimensional data is still a challenge problem. Therefore, obtaining their low-dimensional compact re...
The data mining is the knowledge extraction or finding the hidden patterns from large data these dat...
The aim of this article is to propose a procedure to cluster functional observations in a subspace ...
The aim of this article is to propose a procedure to cluster functional observations in a subspace ...
The aim of this article is to propose a procedure to cluster functional observations in a subspace ...
The aim of this article is to propose a procedure to cluster functional observations in a subspace ...
It is well-known that for high dimensional data cluster-ing, standard algorithms such as EM and the ...
Abstract It is well-known that for high dimensional data cluster-ing, standard algorithms such as EM...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
cluster analysis of data with anywhere from a few dozens to many thousands of dimensions. High-dimen...
Abstract — Dimensionality reduction is essential in multidimensional data mining since the dimension...
The K-means clustering algorithm is an old algorithm that has been intensely researched owing to its...
Emerging high-dimensional data mining applications needs to find interesting clusters embeded in arb...
More and more data are produced every day. Some clustering techniques have been developed to automat...
K-means clustering is being widely studied problem in a variety of application domains. The computat...
dimensional data is still a challenge problem. Therefore, obtaining their low-dimensional compact re...
The data mining is the knowledge extraction or finding the hidden patterns from large data these dat...
The aim of this article is to propose a procedure to cluster functional observations in a subspace ...
The aim of this article is to propose a procedure to cluster functional observations in a subspace ...
The aim of this article is to propose a procedure to cluster functional observations in a subspace ...
The aim of this article is to propose a procedure to cluster functional observations in a subspace ...