This work presents a modified version of Hasse diagram technique, the weighted Regularized Hasse (wR-Hasse), which aims to reduce the number of incomparabilities and derive weighted rankings of the objects.These objectives are accomplished by (a) introducing a mathematical threshold on the definition of incomparability and (b) weighting criteria according to their relevance.In order to test the new approach, we used eight data sets from literature, aiming at extensively investigating the effect of thresholds and weighting schemes on the outcome.Results showed how (a) wR-Hasse effectively reduces the number of incomparabilities with respect to the original Hasse and (b) weighting schemes tune the contribution of relevant criteria to the final outcome. Moreover, this approach allows to obtain statistics useful to further investigate data structure and relationships between object ranks.

Grisoni, F., Consonni, V., Nembri, S., Todeschini, R. (2015). How to weight Hasse matrices and reduce incomparabilities. CHEMOMETRICS AND INTELLIGENT LABORATORY SYSTEMS, 147, 95-104 [10.1016/j.chemolab.2015.08.006].

How to weight Hasse matrices and reduce incomparabilities

GRISONI, FRANCESCA;CONSONNI, VIVIANA;TODESCHINI, ROBERTO
2015

Abstract

This work presents a modified version of Hasse diagram technique, the weighted Regularized Hasse (wR-Hasse), which aims to reduce the number of incomparabilities and derive weighted rankings of the objects.These objectives are accomplished by (a) introducing a mathematical threshold on the definition of incomparability and (b) weighting criteria according to their relevance.In order to test the new approach, we used eight data sets from literature, aiming at extensively investigating the effect of thresholds and weighting schemes on the outcome.Results showed how (a) wR-Hasse effectively reduces the number of incomparabilities with respect to the original Hasse and (b) weighting schemes tune the contribution of relevant criteria to the final outcome. Moreover, this approach allows to obtain statistics useful to further investigate data structure and relationships between object ranks.
Articolo in rivista - Articolo scientifico
Multi-criteria decision making; Hasse diagrams; weighted regularized Hasse; wR-Hasse
English
2015
147
95
104
3071
open
Grisoni, F., Consonni, V., Nembri, S., Todeschini, R. (2015). How to weight Hasse matrices and reduce incomparabilities. CHEMOMETRICS AND INTELLIGENT LABORATORY SYSTEMS, 147, 95-104 [10.1016/j.chemolab.2015.08.006].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/99757
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