The diameter k-clustering problem is the problem of partitioning a finite subset of R^d into k subsets called clusters such that the maximum diameter of the clusters is minimized. One early clustering algorithm that computes a hierarchy of approximate solutions to this problem for all values of k is the agglomerative clustering algorithm with the complete linkage strategy. For decades this algorithm has been widely used by practitioners. However, it is not well studied theoretically. In this paper we analyze the agglomerative complete linkage clustering algorithm. Assuming that the dimension dis a constant, we show that for any k the solution computed by this algorithm is an O(log k)-approximation to the diameter k-clustering problem. Moreo...
The clustering problem consists in finding patterns in a data set in order to divide it into cluster...
Clustering or cluster analysis [5] is a method in unsupervised learning and one of the most used tec...
AbstractIt is shown that the complete linkage clustering of n points in Rd, where d⩾1 is a constant,...
In agglomerative hierarchical clustering, the traditional approaches of computing cluster distances ...
In agglomerative hierarchical clustering, the traditional approaches of computing cluster distances ...
AbstractIt is shown that the complete linkage clustering of n points in Rd, where d⩾1 is a constant,...
We study the min-size $k$-clustering problem, a geometric clustering problem which generalizes clust...
The clustering problem consists in finding patterns in a data set in order to divide it into cluster...
The clustering problem consists in finding patterns in a data set in order to divide it into cluster...
AbstractWe study the problem of clustering points in a metric space so as to minimize the sum of clu...
The clustering problem consists in finding patterns in a data set in order to divide it into cluster...
Aglomerativni hierarchické shlukováni je důležitý shlukovaci algoritmus, který má mnoho praktických ...
Many commonly used data-mining techniques utilized across research fields perform poorly when used ...
Standard agglomerative clustering suggests establishing a new reliable linkage at every step. Howeve...
The clustering problem consists in finding patterns in a data set in order to divide it into cluster...
The clustering problem consists in finding patterns in a data set in order to divide it into cluster...
Clustering or cluster analysis [5] is a method in unsupervised learning and one of the most used tec...
AbstractIt is shown that the complete linkage clustering of n points in Rd, where d⩾1 is a constant,...
In agglomerative hierarchical clustering, the traditional approaches of computing cluster distances ...
In agglomerative hierarchical clustering, the traditional approaches of computing cluster distances ...
AbstractIt is shown that the complete linkage clustering of n points in Rd, where d⩾1 is a constant,...
We study the min-size $k$-clustering problem, a geometric clustering problem which generalizes clust...
The clustering problem consists in finding patterns in a data set in order to divide it into cluster...
The clustering problem consists in finding patterns in a data set in order to divide it into cluster...
AbstractWe study the problem of clustering points in a metric space so as to minimize the sum of clu...
The clustering problem consists in finding patterns in a data set in order to divide it into cluster...
Aglomerativni hierarchické shlukováni je důležitý shlukovaci algoritmus, který má mnoho praktických ...
Many commonly used data-mining techniques utilized across research fields perform poorly when used ...
Standard agglomerative clustering suggests establishing a new reliable linkage at every step. Howeve...
The clustering problem consists in finding patterns in a data set in order to divide it into cluster...
The clustering problem consists in finding patterns in a data set in order to divide it into cluster...
Clustering or cluster analysis [5] is a method in unsupervised learning and one of the most used tec...
AbstractIt is shown that the complete linkage clustering of n points in Rd, where d⩾1 is a constant,...