The purpose of the paper is to present a new statistical approach to hierarchical cluster analysis with n objects measured on p variables. Motivated by the model of multivariate analysis of variance and the method of maximum likelihood, a clustering problem is formulated as a least squares optimization problem, simultaneously solving for both an n-vector of unknown group membership of objects and a linear clustering function. This formulation is shown to be linked to linear regression analysis and Fisher linear discriminant analysis and includes principal component regression for tackling multicollinearity or rank deficiency, polynomial or B-splines regression for handling non-linearity and various variable selection methods to eliminate ir...
The objective of data mining is to take out information from large amounts of data and convert it in...
This book explains and illustrates the most frequently used methods of hierarchical cluster analysis...
In this paper, we provide an overview of existing partitioning and hierarchical clustering algorithm...
In the cluster analysis literature, there are several partitioning (non-hierarchical) methods for cl...
In this article an introduction on unsupervised cluster analysis is provided. Clustering is the orga...
This thesis seeks to describe the development of an inexpensive and efficient clustering technique f...
Cluster analysis is one of the classification methods of multivariate statistical analysis. The task...
Techniques based on agglomerative hierarchical clustering constitute one of the most frequent approa...
Cluster analysis comprises a range of methods for classifying multivariate data into subgroups. By o...
The primary goal in cluster analysis is to discover natural groupings of objects. The field of clust...
Abstract The chapter by Milligan and Hirtle provides an overview of the current state of knowledge i...
Cluster analysis is the study of how to partition data into homogeneous subsets so that the partitio...
A new approach to clustering multivariate data, based on a multilevel linear mixed model, is propose...
Objective: In this work, we focused on developing a clustering approach for biological data. In ma...
<p>Clustering methods are designed to separate heterogeneous data into groups of similar objects suc...
The objective of data mining is to take out information from large amounts of data and convert it in...
This book explains and illustrates the most frequently used methods of hierarchical cluster analysis...
In this paper, we provide an overview of existing partitioning and hierarchical clustering algorithm...
In the cluster analysis literature, there are several partitioning (non-hierarchical) methods for cl...
In this article an introduction on unsupervised cluster analysis is provided. Clustering is the orga...
This thesis seeks to describe the development of an inexpensive and efficient clustering technique f...
Cluster analysis is one of the classification methods of multivariate statistical analysis. The task...
Techniques based on agglomerative hierarchical clustering constitute one of the most frequent approa...
Cluster analysis comprises a range of methods for classifying multivariate data into subgroups. By o...
The primary goal in cluster analysis is to discover natural groupings of objects. The field of clust...
Abstract The chapter by Milligan and Hirtle provides an overview of the current state of knowledge i...
Cluster analysis is the study of how to partition data into homogeneous subsets so that the partitio...
A new approach to clustering multivariate data, based on a multilevel linear mixed model, is propose...
Objective: In this work, we focused on developing a clustering approach for biological data. In ma...
<p>Clustering methods are designed to separate heterogeneous data into groups of similar objects suc...
The objective of data mining is to take out information from large amounts of data and convert it in...
This book explains and illustrates the most frequently used methods of hierarchical cluster analysis...
In this paper, we provide an overview of existing partitioning and hierarchical clustering algorithm...