Hierarchical Clustering is an unsupervised data analysis method which has been widely used for decades. Despite its popularity, it had an underdeveloped analytical foundation and to ad- dress this, Dasgupta recently introduced an optimization viewpoint of hierarchical clustering with pairwise similarity information that spurred a line of work shedding light on old algorithms (e.g., Average-Linkage), but also designing new algorithms. Here, for the maximization dual of Das- gupta’s objective (introduced by Moseley-Wang), we present polynomial-time .4246 approxima- tion algorithms that use Max-Uncut Bisection as a subroutine. The previous best worst-case approximation factor in polynomial time was .336, improving only slightly over Average-Li...
Hierarchical clustering based on pairwise similarities is a common tool used in a broad range of sci...
Data Clustering is defined as grouping together objects which share similar properties. These proper...
Hierarchical clustering is typically implemented as a greedy heuristic algorithm with no explicit ob...
Hierarchical clustering is a recursive partitioning of a dataset into clusters at an increasingly fi...
Hierarchical clustering is a recursive partitioning of a dataset into clusters at an increasingly fi...
Hierarchical clustering is a recursive partitioning of a dataset into clusters at an increasingly fi...
We study the complexity of finding an optimal hierarchical clustering of an unweighted similarity gr...
We study the complexity of finding an optimal hierarchical clustering of an unweighted similarity gr...
We perform new theoretical as well as first-time experimental studies for the NP-hard problem to fin...
This paper explores hierarchical clustering in the case where pairs of points have dissimilarity sco...
Hiererachical clustering, that is computing a recursive partitioning of a dataset to obtain clusters...
Hierarchical methods are well known clustering technique that can be potentially very useful for var...
International audienceThe minimum height of vertex and edge partition trees are well-studied graph p...
We present a hierarchical maximum-margin clus-tering method for unsupervised data analysis. Our meth...
In this paper we introduce a simple clustering method for undirected graphs. The clustering method u...
Hierarchical clustering based on pairwise similarities is a common tool used in a broad range of sci...
Data Clustering is defined as grouping together objects which share similar properties. These proper...
Hierarchical clustering is typically implemented as a greedy heuristic algorithm with no explicit ob...
Hierarchical clustering is a recursive partitioning of a dataset into clusters at an increasingly fi...
Hierarchical clustering is a recursive partitioning of a dataset into clusters at an increasingly fi...
Hierarchical clustering is a recursive partitioning of a dataset into clusters at an increasingly fi...
We study the complexity of finding an optimal hierarchical clustering of an unweighted similarity gr...
We study the complexity of finding an optimal hierarchical clustering of an unweighted similarity gr...
We perform new theoretical as well as first-time experimental studies for the NP-hard problem to fin...
This paper explores hierarchical clustering in the case where pairs of points have dissimilarity sco...
Hiererachical clustering, that is computing a recursive partitioning of a dataset to obtain clusters...
Hierarchical methods are well known clustering technique that can be potentially very useful for var...
International audienceThe minimum height of vertex and edge partition trees are well-studied graph p...
We present a hierarchical maximum-margin clus-tering method for unsupervised data analysis. Our meth...
In this paper we introduce a simple clustering method for undirected graphs. The clustering method u...
Hierarchical clustering based on pairwise similarities is a common tool used in a broad range of sci...
Data Clustering is defined as grouping together objects which share similar properties. These proper...
Hierarchical clustering is typically implemented as a greedy heuristic algorithm with no explicit ob...