We study the problem of clustering uncertain objects whose locations are described by probability density functions (pdfs). We show that the UK-means algorithm, which generalizes the k-means algorithm to handle uncertain objects, is very inefficient. The inefficiency comes from the fact that UK-means computes expected distances (EDs) between objects and cluster representatives. For arbitrary pdfs, expected distances are computed by numerical integrations, which are costly operations. We propose pruning techniques that are based on Voronoi diagrams to reduce the number of expected distance calculations. These techniques are analytically proven to be more effective than the basic bounding-box-based technique previously known in the literature...
The Voronoi diagram is an important technique for answering nearest-neighbor queries for spatial dat...
This paper targets the problem of computing meaningful clusterings from uncertain data sets. Existin...
Density-based techniques seem promising for handling datauncertainty in uncertain data clustering. N...
Abstract—We study the problem of clustering uncertain objects whose locations are described by proba...
Increasing quantity of data with uncertainty has been arising from various applications such as sens...
We study the problem of clustering data objects whose locations are uncertain. A data object is repr...
We study the problem of clustering data objects whose locations are uncertain. A data object is repr...
xvi, 113 p. : ill. ; 30 cm.PolyU Library Call No.: [THS] LG51 .H577P COMP 2013 XuWe study the proble...
clus ns squared Euclidean distance, UK-means (without pruning techniques) is reduced to K-means and ...
This paper proposes an optimisation to the UK-means algorithm, which generalises the k-means algorit...
We study the problem of clustering data objects with location uncertainty. In our model, a data obje...
Clustering of uncertain objects in large uncertain databases and problem of mining uncertain data ha...
LNCS v. 3918 has title: Advances in knowledge discovery and data mining: 10th Pacific-Asia Conferenc...
Clustering of uncertain objects in large uncertain databases and problem of mining uncertain data ha...
Clustering of uncertain objects in large uncertain databases and problem of mining uncertain data ha...
The Voronoi diagram is an important technique for answering nearest-neighbor queries for spatial dat...
This paper targets the problem of computing meaningful clusterings from uncertain data sets. Existin...
Density-based techniques seem promising for handling datauncertainty in uncertain data clustering. N...
Abstract—We study the problem of clustering uncertain objects whose locations are described by proba...
Increasing quantity of data with uncertainty has been arising from various applications such as sens...
We study the problem of clustering data objects whose locations are uncertain. A data object is repr...
We study the problem of clustering data objects whose locations are uncertain. A data object is repr...
xvi, 113 p. : ill. ; 30 cm.PolyU Library Call No.: [THS] LG51 .H577P COMP 2013 XuWe study the proble...
clus ns squared Euclidean distance, UK-means (without pruning techniques) is reduced to K-means and ...
This paper proposes an optimisation to the UK-means algorithm, which generalises the k-means algorit...
We study the problem of clustering data objects with location uncertainty. In our model, a data obje...
Clustering of uncertain objects in large uncertain databases and problem of mining uncertain data ha...
LNCS v. 3918 has title: Advances in knowledge discovery and data mining: 10th Pacific-Asia Conferenc...
Clustering of uncertain objects in large uncertain databases and problem of mining uncertain data ha...
Clustering of uncertain objects in large uncertain databases and problem of mining uncertain data ha...
The Voronoi diagram is an important technique for answering nearest-neighbor queries for spatial dat...
This paper targets the problem of computing meaningful clusterings from uncertain data sets. Existin...
Density-based techniques seem promising for handling datauncertainty in uncertain data clustering. N...