In this paper we develop streaming algorithms for the diameter problem and the k-center clustering problem in the sliding window model. In this model we are interested in maintaining a solution for the N most recent points of the stream. In the diameter problem we would like to maintain two points whose distance approximates the diameter of the point set in the window. Our algorithm computes a (3 + epsilon)-approximation and uses O(1/epsilon*ln(alpha)) memory cells, where alpha is the ratio of the largest and smallest distance and is assumed to be known in advance. We also prove that under reasonable assumptions obtaining a (3 - epsilon)-approximation requires Omega(N^{1/3}) space. For the k-center problem, where the goal is to find k cente...
This thesis studies clustering problems on data streams, specifically with applications to metric sp...
Let $S$ be a set of $n$ points in $d$-space and let $1 \leq k \leq n$ be an integer. A unified appro...
Clustering is an important problem and has numerous applications. In this paper we consider an impor...
In this paper we develop streaming algorithms for the diameter problem and the k-center clustering p...
In this paper we present novel streaming algorithms for the k-center and the diameter estimation pro...
In this paper we present a novel streaming algorithm for the k-center clustering problem for general...
In PODS 2003, Babcock, Datar, Motwani and O\u27Callaghan gave the first streaming solution for the k...
Metric k-center clustering is a fundamental unsupervised learning primitive. Although widely used, t...
Metric k-center clustering is a fundamental unsupervised learning primitive. Although widely used, t...
In the matroid center problem, which generalizes the k-center problem, we need to pick a set of cent...
We explore clustering problems in the streaming sliding window model in both general metric spaces a...
Abstract. We study the problem of maintaining a (1+ɛ)-factor approximation of the diameter of a stre...
In the k-center problem for streaming points in d-dimensional metric space, input points are given i...
Center-based clustering is a fundamental primitive for data analysis and becomes very challenging fo...
Motivated by an application from geodesy, we introduce a novel clustering problem which is a $k$-cen...
This thesis studies clustering problems on data streams, specifically with applications to metric sp...
Let $S$ be a set of $n$ points in $d$-space and let $1 \leq k \leq n$ be an integer. A unified appro...
Clustering is an important problem and has numerous applications. In this paper we consider an impor...
In this paper we develop streaming algorithms for the diameter problem and the k-center clustering p...
In this paper we present novel streaming algorithms for the k-center and the diameter estimation pro...
In this paper we present a novel streaming algorithm for the k-center clustering problem for general...
In PODS 2003, Babcock, Datar, Motwani and O\u27Callaghan gave the first streaming solution for the k...
Metric k-center clustering is a fundamental unsupervised learning primitive. Although widely used, t...
Metric k-center clustering is a fundamental unsupervised learning primitive. Although widely used, t...
In the matroid center problem, which generalizes the k-center problem, we need to pick a set of cent...
We explore clustering problems in the streaming sliding window model in both general metric spaces a...
Abstract. We study the problem of maintaining a (1+ɛ)-factor approximation of the diameter of a stre...
In the k-center problem for streaming points in d-dimensional metric space, input points are given i...
Center-based clustering is a fundamental primitive for data analysis and becomes very challenging fo...
Motivated by an application from geodesy, we introduce a novel clustering problem which is a $k$-cen...
This thesis studies clustering problems on data streams, specifically with applications to metric sp...
Let $S$ be a set of $n$ points in $d$-space and let $1 \leq k \leq n$ be an integer. A unified appro...
Clustering is an important problem and has numerous applications. In this paper we consider an impor...