none2Several proximity measures have been proposed to compare classifications derived from different clustering algorithms. Few are the proposed solutions for the comparison of two classification trees. We have considered particularly two of these: one (Shannon and Banks, 1999) is a distance that measures the amount of rearrangement needed to change one of the trees so that they result in an identical structure, while the other (Miglio, 1996) is a similarity measure that compares the partitions associated to the trees taking into account their predictive power. In this paper we analyze features and limitations of these proximity measures and suggest a normalizing factor for the distance defined by Shannon and Banks; furthermore we propose a...
The Robinson-Foulds (RF) distance is the most popular method of evaluating the dissimilarity between...
This paper presents a nonspatial operationalization of the Krumhansl (1978, 1982) distancedensity mo...
Abstract-A nonparametric clustering technique incorporating the concept of similarity based on the s...
Several proximity measures have been proposed to compare classifications derived from different clus...
Similarity or distance measures are core components used by distance-based clustering algorithms to ...
In cluster analysis, data are clustered into meaningful groups so that the objects in the same group...
In this paper we propose a new index Z for measuring the dissimilarity between two hierarchical clus...
In this paper we propose a new index Z for measuring the dissimilaritybetween two hierarchical clust...
none2Methods for comparing and combining classification trees based on proximity measures have been ...
Comparing tree-structured data for structural similarity is a recurring theme and one on which much ...
Abstract. In this paper we consider structural comparison of sequences, that is, to compare sequence...
Abstract In this paper we suggest a new index for measuring the distance between two hierarchical cl...
Comparing two or more phylogenetic trees is a fundamental task in computational biology. The simples...
Despite of the large number of algorithms developed for clustering, the study on comparing clusterin...
Efficient learning of a data analysis task strongly depends on the data representation. Most methods...
The Robinson-Foulds (RF) distance is the most popular method of evaluating the dissimilarity between...
This paper presents a nonspatial operationalization of the Krumhansl (1978, 1982) distancedensity mo...
Abstract-A nonparametric clustering technique incorporating the concept of similarity based on the s...
Several proximity measures have been proposed to compare classifications derived from different clus...
Similarity or distance measures are core components used by distance-based clustering algorithms to ...
In cluster analysis, data are clustered into meaningful groups so that the objects in the same group...
In this paper we propose a new index Z for measuring the dissimilarity between two hierarchical clus...
In this paper we propose a new index Z for measuring the dissimilaritybetween two hierarchical clust...
none2Methods for comparing and combining classification trees based on proximity measures have been ...
Comparing tree-structured data for structural similarity is a recurring theme and one on which much ...
Abstract. In this paper we consider structural comparison of sequences, that is, to compare sequence...
Abstract In this paper we suggest a new index for measuring the distance between two hierarchical cl...
Comparing two or more phylogenetic trees is a fundamental task in computational biology. The simples...
Despite of the large number of algorithms developed for clustering, the study on comparing clusterin...
Efficient learning of a data analysis task strongly depends on the data representation. Most methods...
The Robinson-Foulds (RF) distance is the most popular method of evaluating the dissimilarity between...
This paper presents a nonspatial operationalization of the Krumhansl (1978, 1982) distancedensity mo...
Abstract-A nonparametric clustering technique incorporating the concept of similarity based on the s...