In many applications we are interested in finding clusters of data that share the same properties, like linear shape. We propose a hierarchical clustering procedure that merges groups if they are fitted well by the same linear model. The representative orthogonal model of each cluster is estimated robustly using iterated LQS regressions. We apply the method to two artificial datasets, providing a comparison of results against other non-hierarchical methods that can estimate linear clusters
Hierarchical clustering is the grouping of objects of interest according to their similarity into a ...
Data Clustering is defined as grouping together objects which share similar properties. These proper...
International audienceFinding a set of nested partitions of a dataset is useful to uncover relevant ...
In many applications we are interested in finding clusters of data that share the same properties, l...
In the cluster analysis literature, there are several partitioning (non-hierarchical) methods for cl...
Clustering partitions a dataset such that observations placed together in a group are similar but di...
Cluster analysis is the study of how to partition data into homogeneous subsets so that the partitio...
Clustering in data mining is a discovery process that groups a set of data such that the intracluste...
Non-hierarchical clustering methods are frequently based on the idea of forming groups around 'objec...
The objective of data mining is to take out information from large amounts of data and convert it in...
This paper develops a new method for hierarchical clustering. Unlike other existing clustering schem...
This paper develops a new method for hierarchical clustering. Unlike other existing clustering schem...
The goal of clustering is to identify distinct groups in a dataset. Compared to non-parametric clust...
We survey agglomerative hierarchical clustering algorithms and discuss efficient implementations tha...
Abstract. Agglomerative hierarchical clustering methods based on Gaussian probability models have re...
Hierarchical clustering is the grouping of objects of interest according to their similarity into a ...
Data Clustering is defined as grouping together objects which share similar properties. These proper...
International audienceFinding a set of nested partitions of a dataset is useful to uncover relevant ...
In many applications we are interested in finding clusters of data that share the same properties, l...
In the cluster analysis literature, there are several partitioning (non-hierarchical) methods for cl...
Clustering partitions a dataset such that observations placed together in a group are similar but di...
Cluster analysis is the study of how to partition data into homogeneous subsets so that the partitio...
Clustering in data mining is a discovery process that groups a set of data such that the intracluste...
Non-hierarchical clustering methods are frequently based on the idea of forming groups around 'objec...
The objective of data mining is to take out information from large amounts of data and convert it in...
This paper develops a new method for hierarchical clustering. Unlike other existing clustering schem...
This paper develops a new method for hierarchical clustering. Unlike other existing clustering schem...
The goal of clustering is to identify distinct groups in a dataset. Compared to non-parametric clust...
We survey agglomerative hierarchical clustering algorithms and discuss efficient implementations tha...
Abstract. Agglomerative hierarchical clustering methods based on Gaussian probability models have re...
Hierarchical clustering is the grouping of objects of interest according to their similarity into a ...
Data Clustering is defined as grouping together objects which share similar properties. These proper...
International audienceFinding a set of nested partitions of a dataset is useful to uncover relevant ...