M‐quantile regression shrinkage and selection via the Lasso and Elastic Net to assess the effect of meteorology and traffic on air quality

Author:

Ranalli M. Giovanna1ORCID,Salvati Nicola2ORCID,Petrella Lea3,Pantalone Francesco4ORCID

Affiliation:

1. Department of Political Science University of Perugia Perugia Italy

2. Department of Economics and Management University of Pisa Pisa Italy

3. MEMOTEF Department Sapienza University of Rome Rome Lazio Italy

4. Department of Social Statistics and Demography University of Southampton Southampton UK

Abstract

AbstractIn this work, we intersect data on size‐selected particulate matter (PM) with vehicular traffic counts and a comprehensive set of meteorological covariates to study the effect of traffic on air quality. To this end, we develop an M‐quantile regression model with Lasso and Elastic Net penalizations. This allows (i) to identify the best proxy for vehicular traffic via model selection, (ii) to investigate the relationship between fine PM concentration and the covariates at different M‐quantiles of the conditional response distribution, and (iii) to be robust to the presence of outliers. Heterogeneity in the data is accounted by fitting a B‐spline on the effect of the day of the year. Analytic and bootstrap‐based variance estimates of the regression coefficients are provided, together with a numerical evaluation of the proposed estimation procedure. Empirical results show that atmospheric stability is responsible for the most significant effect on fine PM concentration: this effect changes at different levels of the conditional response distribution and is relatively weaker on the tails. On the other hand, model selection allows to identify the best proxy for vehicular traffic whose effect remains essentially the same at different levels of the conditional response distribution.

Funder

European Commission

Publisher

Wiley

Subject

Statistics, Probability and Uncertainty,General Medicine,Statistics and Probability

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