11 pages, 1 figureWe study the problem of online clustering where a clustering algorithm has to assign a new point that arrives to one of $k$ clusters. The specific formulation we use is the $k$-means objective: At each time step the algorithm has to maintain a set of k candidate centers and the loss incurred is the squared distance between the new point and the closest center. The goal is to minimize regret with respect to the best solution to the $k$-means objective ($\mathcal{C}$) in hindsight. We show that provided the data lies in a bounded region, an implementation of the Multiplicative Weights Update Algorithm (MWUA) using a discretized grid achieves a regret bound of $\tilde{O}(\sqrt{T})$ in expectation. We also present an online-to...
Working with huge amount of data and learning from it by extracting useful information is one of the...
We continue the study of the online unit clustering problem, introduced by Chan and Zarrabi-Zadeh (\...
Abstract—This paper introduces an optimized version of the standard K-Means algorithm. The optimizat...
We study the problem of learning a clustering of an online set of points. The specific formulation w...
We introduce a set of clustering algorithms whose performance func-tion is such that the algorithms ...
K-Means is one of the most popular clustering algorithms, and it is easy to implement It seeks to m...
Given a set of n points and their pairwise distances, the goal of clustering is to partition the po...
This paper concludes and analyses four widely-used algorithms in the field of online clustering: seq...
Probably the most famous clustering formulation is k-means. This is the focus today. Note: k-means i...
We consider a new setting of online clustering of contextual cascading bandits, an online learning p...
AbstractOnline unit clustering is a clustering problem where classification of points is done in an ...
The popular k-means algorithm is used to discover clusters in vector data automatically. We present ...
This paper introduces k\u27-means algorithm that performs correct clustering without pre-assigning t...
Advances in recent techniques for scientific data collection in the era of big data allow for the sy...
We present new algorithms for the k-means clustering problem. They use the kd-tree data structure to...
Working with huge amount of data and learning from it by extracting useful information is one of the...
We continue the study of the online unit clustering problem, introduced by Chan and Zarrabi-Zadeh (\...
Abstract—This paper introduces an optimized version of the standard K-Means algorithm. The optimizat...
We study the problem of learning a clustering of an online set of points. The specific formulation w...
We introduce a set of clustering algorithms whose performance func-tion is such that the algorithms ...
K-Means is one of the most popular clustering algorithms, and it is easy to implement It seeks to m...
Given a set of n points and their pairwise distances, the goal of clustering is to partition the po...
This paper concludes and analyses four widely-used algorithms in the field of online clustering: seq...
Probably the most famous clustering formulation is k-means. This is the focus today. Note: k-means i...
We consider a new setting of online clustering of contextual cascading bandits, an online learning p...
AbstractOnline unit clustering is a clustering problem where classification of points is done in an ...
The popular k-means algorithm is used to discover clusters in vector data automatically. We present ...
This paper introduces k\u27-means algorithm that performs correct clustering without pre-assigning t...
Advances in recent techniques for scientific data collection in the era of big data allow for the sy...
We present new algorithms for the k-means clustering problem. They use the kd-tree data structure to...
Working with huge amount of data and learning from it by extracting useful information is one of the...
We continue the study of the online unit clustering problem, introduced by Chan and Zarrabi-Zadeh (\...
Abstract—This paper introduces an optimized version of the standard K-Means algorithm. The optimizat...