Determining intrinsic number of clusters in a multidimensional dataset is a commonly encountered problem in exploratory data analysis. Unsupervised clustering algorithms often rely on specification of cluster number as an input parameter. However, this is typically not known a priori. Many methods have been proposed to estimate cluster number, including statistical and information-theoretic approaches such as the gap statistic, but these methods are not always reliable when applied to non-normally distributed datasets containing outliers or noise. In this study, I propose a novel method called hierarchical linkage regression, which uses regression to estimate the intrinsic number of clusters in a multidimensional dataset. The method operate...
DNA microarray and gene expression problems often require a researcher to perform clustering on thei...
Cluster validation constitutes one of the most challenging problems in unsupervised cluster analysis...
<div><p>Four of the most common limitations of the many available clustering methods are: i) the lac...
Abstract: A fundamental and difficult problem in cluster analysis is the determination of the “true...
Abstract. In cluster analysis, there are two methods, hierarchical and no hierarchical method. Hiera...
There is mounting evidence to suggest that the complete linkage method does the best clustering job ...
Cluster analysis characterizes data that are similar enough and useful into meaningful groups (clust...
Clustering is a key component of most detectors of cyber-attacks, and increasingly, for both theoret...
In the cluster analysis literature, there are several partitioning (non-hierarchical) methods for cl...
Cluster analysis is a field of study where the aim is to discover distinct groups or clusters in a d...
Techniques based on agglomerative hierarchical clustering constitute one of the most frequent approa...
Clustering is one of the most popular artificial intelligence techniques which aims at identifying g...
Four of the most common limitations of the many available clustering methods are: i) the lack of a p...
In agglomerative hierarchical clustering, the traditional approaches of computing cluster distances ...
The goal of clustering is to detect the presence of distinct groups in a data set and assign group l...
DNA microarray and gene expression problems often require a researcher to perform clustering on thei...
Cluster validation constitutes one of the most challenging problems in unsupervised cluster analysis...
<div><p>Four of the most common limitations of the many available clustering methods are: i) the lac...
Abstract: A fundamental and difficult problem in cluster analysis is the determination of the “true...
Abstract. In cluster analysis, there are two methods, hierarchical and no hierarchical method. Hiera...
There is mounting evidence to suggest that the complete linkage method does the best clustering job ...
Cluster analysis characterizes data that are similar enough and useful into meaningful groups (clust...
Clustering is a key component of most detectors of cyber-attacks, and increasingly, for both theoret...
In the cluster analysis literature, there are several partitioning (non-hierarchical) methods for cl...
Cluster analysis is a field of study where the aim is to discover distinct groups or clusters in a d...
Techniques based on agglomerative hierarchical clustering constitute one of the most frequent approa...
Clustering is one of the most popular artificial intelligence techniques which aims at identifying g...
Four of the most common limitations of the many available clustering methods are: i) the lack of a p...
In agglomerative hierarchical clustering, the traditional approaches of computing cluster distances ...
The goal of clustering is to detect the presence of distinct groups in a data set and assign group l...
DNA microarray and gene expression problems often require a researcher to perform clustering on thei...
Cluster validation constitutes one of the most challenging problems in unsupervised cluster analysis...
<div><p>Four of the most common limitations of the many available clustering methods are: i) the lac...