Functional Concurrent Regression with Compositional Covariates and Its Application to the Time-Varying Effect of Causes of Death on Human Longevity

Emanuele Giovanni Depaoli, University of Padova - Department of Statistical Sciences
Marco Stefanucci , University of Rome Tor Vergata
Stefano Mazzuco, University of Padova

Multivariate functional data that are cross-sectionally compositional data are attracting increasing interest in the statistical modeling literature, a major example being trajectories over time of compositions derived from cause-specific mortality rates. In this work, we develop a novel functional concurrent regression model in which independent variables are functional compositions. This allows us to investigate the relationship over time between life expectancy at birth and compositions derived from cause-specific mortality rates of four distinct age classes, namely 0-4, 5-39, 40-64 and 65+. A penalized approach is developed to estimate the regression coefficients and select the relevant variables. Then an efficient computational strategy based on an augmented Lagrangian algorithm is derived to solve the resulting optimization problem. The good performances of the model in predicting the response function and estimating the unknown functional coefficients are shown in a simulation study. The results on real data confirm the important role of neoplasms and cardiovascular diseases in determining life expectancy emerged in other studies and reveal several other contributions not yet observed

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 Presented in Session 96. Modelling and Forecasting Mortality