A multidimensional unfolding technique that is not prone to degenerate solutions and is based on multidimensional scaling of a complete data matrix is proposed. We adopt the strategy of augmenting the data matrix, trying to build a complete dissimilarity matrix, by using copula-based association measures among rankings (the individuals), and between rankings and objects (namely, a rank-order representation of the objects through tied rankings). The proposed technique leads to acceptable recovery of given preference structures.
Copula-Based Non-Metric Unfolding on Augmented Data Matrix / Nai Ruscone, Marta; Fernández, Daniel; D'Ambrosio, Antonio. - In: JOURNAL OF CLASSIFICATION. - ISSN 0176-4268. - 41:3(2024), pp. 678-697. [10.1007/s00357-024-09495-x]
Copula-Based Non-Metric Unfolding on Augmented Data Matrix
D'Ambrosio AntonioConceptualization
2024
Abstract
A multidimensional unfolding technique that is not prone to degenerate solutions and is based on multidimensional scaling of a complete data matrix is proposed. We adopt the strategy of augmenting the data matrix, trying to build a complete dissimilarity matrix, by using copula-based association measures among rankings (the individuals), and between rankings and objects (namely, a rank-order representation of the objects through tied rankings). The proposed technique leads to acceptable recovery of given preference structures.| File | Dimensione | Formato | |
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