We consider a semi-supervised clustering problem where the locations of the data objects are subject to uncertainty. Each uncertainty set is assumed to be either a closed convex bounded polyhedron or a closed disk. The final clustering is expected to be in accordance with a given number of instance level constraints. The objective function considered minimizes the total of the sum of the violation costs of the unsatisfied instance level constraints and a weighted sum of squared maximum Euclidean distances between the locations of the data objects and the centroids of the clusters they are assigned to. Given a cluster, we first consider the problem of computing its centroid, namely the centroid computation problem under uncertainty (CCPU).. ...
We consider a network design and expansion problem, where we need to make a capacity investment now,...
We consider a network design and expansion problem, where we need to make a capacity investment now,...
We propose a new data-driven technique for constructing uncertainty sets for robust optimization pro...
We consider a semi-supervised clustering problem where the locations of the data objects are subject...
Three research problems are addressed in this study. The first one is a semi-supervised clustering p...
Clustering uncertain data has emerged as a challenging task in uncertain data management and mining....
We study the problem of clustering data objects whose locations are uncertain. A data object is repr...
In this paper, we adapt Tuy's concave cutting plane method to the problem of finding an optimal grou...
We study the graph clustering problem where each observation (edge or no-edge between a pair of node...
We study the problem of clustering data objects with location uncertainty. In our model, a data obje...
Semi-supervised clustering leverages side information such as pairwise constraints to guide clusteri...
Database technology is playing an increasingly important role in understanding and solving large-sca...
Clustering is the task of finding groups of elements that are highly similar. It is one of the key t...
Chebyshev-inequality-based convex relaxations of Chance-Constrained Programs (CCPs) are shown to be ...
clus ns squared Euclidean distance, UK-means (without pruning techniques) is reduced to K-means and ...
We consider a network design and expansion problem, where we need to make a capacity investment now,...
We consider a network design and expansion problem, where we need to make a capacity investment now,...
We propose a new data-driven technique for constructing uncertainty sets for robust optimization pro...
We consider a semi-supervised clustering problem where the locations of the data objects are subject...
Three research problems are addressed in this study. The first one is a semi-supervised clustering p...
Clustering uncertain data has emerged as a challenging task in uncertain data management and mining....
We study the problem of clustering data objects whose locations are uncertain. A data object is repr...
In this paper, we adapt Tuy's concave cutting plane method to the problem of finding an optimal grou...
We study the graph clustering problem where each observation (edge or no-edge between a pair of node...
We study the problem of clustering data objects with location uncertainty. In our model, a data obje...
Semi-supervised clustering leverages side information such as pairwise constraints to guide clusteri...
Database technology is playing an increasingly important role in understanding and solving large-sca...
Clustering is the task of finding groups of elements that are highly similar. It is one of the key t...
Chebyshev-inequality-based convex relaxations of Chance-Constrained Programs (CCPs) are shown to be ...
clus ns squared Euclidean distance, UK-means (without pruning techniques) is reduced to K-means and ...
We consider a network design and expansion problem, where we need to make a capacity investment now,...
We consider a network design and expansion problem, where we need to make a capacity investment now,...
We propose a new data-driven technique for constructing uncertainty sets for robust optimization pro...