New MOX Report on “A semiparametric space-time quantile regression model”

A new MOX Report entitled “A semiparametric space-time quantile regression model” by Di Battista, I.; De Sanctis, M.F.; Arnone, E.; Castiglione, C.; Palummo, A.; Sangalli, L.M. has appeared in the MOX Report Collection.
Check it out here: https://www.mate.polimi.it/biblioteca/add/qmox/33-2025.pdf

Abstract: Spatio-temporal data often exhibit non-Gaussian behaviour, heteroscedasticity and skeweness. Such data are, for example, highly prevalent in environmental and ecological sciences. In this work, we propose a semiparametric model for space-time quantile regression. The estimation functional incorporates roughness penalties based on differential operators over both the spatial and temporal dimensions. We study the theoretical properties of the model, proving the consistency and asymptotic normality of the associated estimators. To evaluate the effectiveness of the proposed method, we conduct simulation studies, bench-marking it against state-of-the-art techniques. Finally, we apply the model to analyse the space-time evolution of nitrogen dioxide concentration in the Lombardy region (Italy). The analyses of this pollutant are of primarily importance for informing policies aimed at improving air quality.