In this paper we develop a mixed graphical model for identifying conditional independence relations between continuous and discrete variables in a quantile framework using Parzen’s definition of mid-quantile. To recover the graph structure and induce sparsity, we consider the neighborhood selection approach in which conditional mid-quantiles of each variable in the network are modeled as a sparse function of all others. Building on previous work, we propose a two-step estimation procedure where, in the first step, conditional mid-probabilities are obtained and, in the second step, the model parameters are estimated by solving an implicit equation with a LASSO penalty. The empirical application investigates the relationship between depression and inflammation on a sample of individuals from the National Health and Nutrition Examination Survey 2017-2020.

Quantile-based graphical models for continuous and discrete variables

Luca Merlo
;
2023-01-01

Abstract

In this paper we develop a mixed graphical model for identifying conditional independence relations between continuous and discrete variables in a quantile framework using Parzen’s definition of mid-quantile. To recover the graph structure and induce sparsity, we consider the neighborhood selection approach in which conditional mid-quantiles of each variable in the network are modeled as a sparse function of all others. Building on previous work, we propose a two-step estimation procedure where, in the first step, conditional mid-probabilities are obtained and, in the second step, the model parameters are estimated by solving an implicit equation with a LASSO penalty. The empirical application investigates the relationship between depression and inflammation on a sample of individuals from the National Health and Nutrition Examination Survey 2017-2020.
2023
9788891935618
LASSO, mixed random variables, mid-CDF, neighborhood selection, NHANES
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14092/4681
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