In this paper, we study the problem of opening centers to cluster a set of clients in a metric space so as to minimize the sum of the costs of the centers and of the cluster radii, in a dynamic environment where clients arrive and depart, and the solution must be updated efficiently while remaining competitive with respect to the current optimal solution. We call this dynamic sum-of-radii clustering problem. We present a data structure that maintains a solution whose cost is within a constant factor of the cost of an optimal solution in metric spaces with bounded doubling dimension and whose worst-case update time is logarithmic in the parameters of the problem
We consider the problem of center-based clustering in low-dimensional Euclidean spaces under the per...
Clustering is a primitive and important operator that analyzes a given dataset to discover its hidde...
For a given set of points in a metric space and an integer $k$, we seek to partition the given point...
International audienceReal networks have in common that they evolve over time and their dynamics hav...
AbstractWe study the problem of clustering points in a metric space so as to minimize the sum of clu...
We study two generalizations of classic clustering problems called dynamic ordered $k$-median and dy...
We study the min-size $k$-clustering problem, a geometric clustering problem which generalizes clust...
We consider two closely related fundamental clustering problems in this paper. In the min-sum k-clus...
Motivated by applications such as document and image classification in information retrieval, we con...
We give polynomial time approximation schemes for the problem of partitioning an input set of n poin...
In this paper we consider two metric covering/clustering problems - Minimum Cost Covering Problem (M...
Given a set of n points and their pairwise distances, the goal of clustering is to partition the po...
which permits unrestricted use, distribution, and reproduction in any medium, provided the original ...
International audienceStatic and dynamic clustering algorithms are a fundamental tool in any machine...
We study a clustering problem where the goal is to maximize the coverage of the input points by k ch...
We consider the problem of center-based clustering in low-dimensional Euclidean spaces under the per...
Clustering is a primitive and important operator that analyzes a given dataset to discover its hidde...
For a given set of points in a metric space and an integer $k$, we seek to partition the given point...
International audienceReal networks have in common that they evolve over time and their dynamics hav...
AbstractWe study the problem of clustering points in a metric space so as to minimize the sum of clu...
We study two generalizations of classic clustering problems called dynamic ordered $k$-median and dy...
We study the min-size $k$-clustering problem, a geometric clustering problem which generalizes clust...
We consider two closely related fundamental clustering problems in this paper. In the min-sum k-clus...
Motivated by applications such as document and image classification in information retrieval, we con...
We give polynomial time approximation schemes for the problem of partitioning an input set of n poin...
In this paper we consider two metric covering/clustering problems - Minimum Cost Covering Problem (M...
Given a set of n points and their pairwise distances, the goal of clustering is to partition the po...
which permits unrestricted use, distribution, and reproduction in any medium, provided the original ...
International audienceStatic and dynamic clustering algorithms are a fundamental tool in any machine...
We study a clustering problem where the goal is to maximize the coverage of the input points by k ch...
We consider the problem of center-based clustering in low-dimensional Euclidean spaces under the per...
Clustering is a primitive and important operator that analyzes a given dataset to discover its hidde...
For a given set of points in a metric space and an integer $k$, we seek to partition the given point...