Large data sets organized into a three-way proximity array are generally difficult to comprehend and specific techniques are necessary to extract relevant information. The existing classification methodologies for dissimilarities between objects collected in different occasions assume a unique common underlying classification structure. However, since the objects' clustering structure often changes along the occasions, the use of a single classification to reconstruct the taxonomic information frequently appears quite unrealistic. The methodology proposed here models the dissimilarities in a likelihood framework. The goal is to identify a (secondary) partition of the occasions in homogeneous classes and, simultaneously, a (primary) consensu...
none1noThe technological progress of the last decades has made a huge amount of information availabl...
The paper presents a methodology for classifying three-way dissimilarity data, which are reconstruct...
In questo lavoro viene proposta una nuova metodologia per individuare una partizione sfocata di matr...
A classification model for three-way dissimilarity data is presented including the idea to identify ...
This paper presents a methodology for partitioning two modes (objects and occasions) of three-way di...
Finite mixture models are often used to classify two- (units and variables) or three- (units, variab...
Clustering or classifying individuals into groups such that there is relative homogeneity within the...
175 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2007.Scaling and clustering techni...
A weighted Euclidean distance model for analyzing three-way dissimilarity data (stimuli by stimuli b...
When the data consist of certain attributes measured on the same set of items in different situation...
A common and very old problem in statistics is the separation of a heterogeneous population into mor...
In this paper, we propose a complete method for clustering data, which are in the form of unit vecto...
A novel clustering model for three-way data concerning a set of objects on which variables are measu...
In the context of three-way proximity data, an INDCLUS-type model is presented to address the issue ...
International audienceModel based clustering (MBC) is a method that selects an op- timal clustering ...
none1noThe technological progress of the last decades has made a huge amount of information availabl...
The paper presents a methodology for classifying three-way dissimilarity data, which are reconstruct...
In questo lavoro viene proposta una nuova metodologia per individuare una partizione sfocata di matr...
A classification model for three-way dissimilarity data is presented including the idea to identify ...
This paper presents a methodology for partitioning two modes (objects and occasions) of three-way di...
Finite mixture models are often used to classify two- (units and variables) or three- (units, variab...
Clustering or classifying individuals into groups such that there is relative homogeneity within the...
175 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2007.Scaling and clustering techni...
A weighted Euclidean distance model for analyzing three-way dissimilarity data (stimuli by stimuli b...
When the data consist of certain attributes measured on the same set of items in different situation...
A common and very old problem in statistics is the separation of a heterogeneous population into mor...
In this paper, we propose a complete method for clustering data, which are in the form of unit vecto...
A novel clustering model for three-way data concerning a set of objects on which variables are measu...
In the context of three-way proximity data, an INDCLUS-type model is presented to address the issue ...
International audienceModel based clustering (MBC) is a method that selects an op- timal clustering ...
none1noThe technological progress of the last decades has made a huge amount of information availabl...
The paper presents a methodology for classifying three-way dissimilarity data, which are reconstruct...
In questo lavoro viene proposta una nuova metodologia per individuare una partizione sfocata di matr...