Complex multidimensional concepts are often explained by a tree-shape structure by considering nested partitions of variables, where each variable group is associated with a specific concept. Recalling that relations among variables can be detected by their covariance matrix, this paper introduces a covariance structure that reconstructs hierarchical relationships among variables highlighting three features of the variable groups. We finally present an application of the latter covariance structure to the model-based clustering.
Cavicchia, C., Vichi, M., Zaccaria, G. (2021). Model-based clustering with parsimonious covariance structure. In CLADAG 2021. Book of abstracts and short papers. 13th scientific meeting of the classification and data analysis group - Firenze, September 9-11, 2021 (pp.296-299). Firenze University Press [10.36253/978-88-5518-340-6].
Model-based clustering with parsimonious covariance structure
Zaccaria, G
2021
Abstract
Complex multidimensional concepts are often explained by a tree-shape structure by considering nested partitions of variables, where each variable group is associated with a specific concept. Recalling that relations among variables can be detected by their covariance matrix, this paper introduces a covariance structure that reconstructs hierarchical relationships among variables highlighting three features of the variable groups. We finally present an application of the latter covariance structure to the model-based clustering.File | Dimensione | Formato | |
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