This work proposes a methodology to analyze (in)dependencies in compositional data using graphical models. By transforming compositional data into an unconstrained space, we apply Gaussian graphical models to identify meaningful dependency structures. Our approach relies on estimating block-diagonal covariance matrices, ensuring compatibility with compositional constraints. The optimal structure is selected via a penalized likelihood criterion and cross-validation. To illustrate its effectiveness, we apply the proposed method to energy consumption data from 31 countries, uncovering key dependencies among energy sources and providing insights into their interconnections.
Di Brisco, A., Ascari, R., Fiori, A., Nicolussi, F. (2025). Exploring Dependencies in Compositional Data with Graphical Models. In E. di Bella, V. Gioia, C. Lagazio, S. Zaccarin (a cura di), Statistics for Innovation III SIS 2025, Short Papers, Contributed Sessions 2 (pp. 128-134). Springer [10.1007/978-3-031-95995-0_22].
Exploring Dependencies in Compositional Data with Graphical Models
Di Brisco, Agnese M.
;Ascari, Roberto;Fiori, Anna M.;Nicolussi, Federica
2025
Abstract
This work proposes a methodology to analyze (in)dependencies in compositional data using graphical models. By transforming compositional data into an unconstrained space, we apply Gaussian graphical models to identify meaningful dependency structures. Our approach relies on estimating block-diagonal covariance matrices, ensuring compatibility with compositional constraints. The optimal structure is selected via a penalized likelihood criterion and cross-validation. To illustrate its effectiveness, we apply the proposed method to energy consumption data from 31 countries, uncovering key dependencies among energy sources and providing insights into their interconnections.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.


