Symbolic Data Analysis can be defined as the extension of standard data analysis to more complex data tables. We illustrate the application of the Ascendant Hierarchical Cluster Analysis (AHCA) to a symbolic data set (with a known structure) in the field of the automobile industry (car data set), in which objects are described by variables whose values are intervals of the real data set (interval variables). The AHCA of thirty-three car models, described by eight interval variables (with different scales of measure), was based on the standardized weighted generalized affinity coefficient, by the method of Wald and Wolfowitz. We applied three probabilistic aggregation criteria in the scope of the VL methodology (V for Validity, L for Linkage...
In data mining, we generate class/cluster models from large datasets. Symbolic Data Analysis (SDA) i...
AbstractWe propose a hierarchical clustering for the visual analogue scale (VAS) in the framework of...
Contemporary computers bring us very large datasets, datasets which can be too large for those same ...
Copyright © 2013 Walter de Gruyter GmbH.In this paper, we illustrate an application of Ascendant Hie...
This article is is licensed under a Creative Commons Attribution-NonCommercial 4.0 International Lic...
6th Workshop on Statistics, Mathematics and Computation-3rd Portuguese-Polish Workshop on Biometry (...
ABSTRACT — In this work, classical as well as probabilistic hierarchical clustering models are used ...
6th Workshop on Statistics, Mathematics and Computation-3rd Portuguese-Polish Workshop on Biometry (...
Copyright © 2013 Walter de Gruyter GmbH.In this paper, we illustrate an application of Ascendant Hie...
This journal provides immediate open access to its content on the principle that making research fre...
This is an open access article distributed under the Creative Commons Attribution License, which per...
3rd SMTDA Conference Proceedings, 11-14 June 2014, Lisbon Portugal.We present one example, in which ...
3rd SMTDA Conference Proceedings, 11-14 June 2014, Lisbon Portugal.We present one example, in which ...
This is an open access article distributed under the Creative Commons Attribution License, which per...
Copyright © 2010 Polish Biometric Society.Complex Data Analysis is a relatively new field that provi...
In data mining, we generate class/cluster models from large datasets. Symbolic Data Analysis (SDA) i...
AbstractWe propose a hierarchical clustering for the visual analogue scale (VAS) in the framework of...
Contemporary computers bring us very large datasets, datasets which can be too large for those same ...
Copyright © 2013 Walter de Gruyter GmbH.In this paper, we illustrate an application of Ascendant Hie...
This article is is licensed under a Creative Commons Attribution-NonCommercial 4.0 International Lic...
6th Workshop on Statistics, Mathematics and Computation-3rd Portuguese-Polish Workshop on Biometry (...
ABSTRACT — In this work, classical as well as probabilistic hierarchical clustering models are used ...
6th Workshop on Statistics, Mathematics and Computation-3rd Portuguese-Polish Workshop on Biometry (...
Copyright © 2013 Walter de Gruyter GmbH.In this paper, we illustrate an application of Ascendant Hie...
This journal provides immediate open access to its content on the principle that making research fre...
This is an open access article distributed under the Creative Commons Attribution License, which per...
3rd SMTDA Conference Proceedings, 11-14 June 2014, Lisbon Portugal.We present one example, in which ...
3rd SMTDA Conference Proceedings, 11-14 June 2014, Lisbon Portugal.We present one example, in which ...
This is an open access article distributed under the Creative Commons Attribution License, which per...
Copyright © 2010 Polish Biometric Society.Complex Data Analysis is a relatively new field that provi...
In data mining, we generate class/cluster models from large datasets. Symbolic Data Analysis (SDA) i...
AbstractWe propose a hierarchical clustering for the visual analogue scale (VAS) in the framework of...
Contemporary computers bring us very large datasets, datasets which can be too large for those same ...