Approximation algorithms for clustering points in metric spaces is a flourishing area of research, with much research effort spent on getting a better understanding of the approximation guarantees possible for many objective functions such as k-median, k-means, and min-sum clustering. This quest for better approximation algorithms is further fueled by the implicit hope that these better approximations also give us more accurate clusterings. E.g., for many problems such as clustering proteins by function, or clustering images by subject, there is some unknown “correct” target clustering and the implicit hope is that approximately optimizing these objective functions will in fact produce a clustering that is close (in symmetric difference) t...
We give polynomial time approximation schemes for the problem of partitioning an input set of n poin...
International audienceProving hardness of approximation for min-sum objectives is an infamous challe...
Abstract—We consider k-median clustering in finite metric spaces and k-means clustering in Euclidean...
Approximation algorithms for clustering points in metric spaces is a flourishing area of re-search, ...
Given a set of n points and their pairwise distances, the goal of clustering is to partition the po...
Given a set of n points and their pairwise distances, the goal of clustering is to partition the po...
Abstract—We consider k-median clustering in finite metric spaces and k-means clustering in Euclidean...
This paper considers the well-studied algorithmic regime of designing a (1+ϵ)-approximation algorith...
Clustering with outliers is one of the most fundamental problems in Computer Science. Given a set X...
This paper considers the well-studied algorithmic regime of designing a (1+ϵ)-approximation algorith...
This paper considers the well-studied algorithmic regime of designing a (1+ϵ)-approximation algorith...
In this paper, we show that for several clustering problems one can extract a small set of points, s...
We consider two closely related fundamental clustering problems in this paper. In the min-sum k-clus...
Clustering is often formulated as a discrete optimization problem. The objective is to find, among a...
Clustering is often formulated as a discrete optimization problem. The objective is to find, among a...
We give polynomial time approximation schemes for the problem of partitioning an input set of n poin...
International audienceProving hardness of approximation for min-sum objectives is an infamous challe...
Abstract—We consider k-median clustering in finite metric spaces and k-means clustering in Euclidean...
Approximation algorithms for clustering points in metric spaces is a flourishing area of re-search, ...
Given a set of n points and their pairwise distances, the goal of clustering is to partition the po...
Given a set of n points and their pairwise distances, the goal of clustering is to partition the po...
Abstract—We consider k-median clustering in finite metric spaces and k-means clustering in Euclidean...
This paper considers the well-studied algorithmic regime of designing a (1+ϵ)-approximation algorith...
Clustering with outliers is one of the most fundamental problems in Computer Science. Given a set X...
This paper considers the well-studied algorithmic regime of designing a (1+ϵ)-approximation algorith...
This paper considers the well-studied algorithmic regime of designing a (1+ϵ)-approximation algorith...
In this paper, we show that for several clustering problems one can extract a small set of points, s...
We consider two closely related fundamental clustering problems in this paper. In the min-sum k-clus...
Clustering is often formulated as a discrete optimization problem. The objective is to find, among a...
Clustering is often formulated as a discrete optimization problem. The objective is to find, among a...
We give polynomial time approximation schemes for the problem of partitioning an input set of n poin...
International audienceProving hardness of approximation for min-sum objectives is an infamous challe...
Abstract—We consider k-median clustering in finite metric spaces and k-means clustering in Euclidean...