We consider the problem of assessing long-term trends of ozone concentrations measured on a single site located in an urban area. Among the many methods proposed in the literature to eliminate the confounding effect of changing weather conditions, we employ a stratification of daily maxima based on regression trees. Within each stratum conditional independence and Weilbull distribution are assumed for maxima. Long-term trend is defined non-parametrically by the sequence of yearly medians. Models are estimated following the Bayesian approach. The alternative assumptions of common and stratum specific trends are compared and a model with common trend for all strata is selected for the analyzed real dataset. The conditional independence assumption is checked by the comparison with a model including an autoregressive component. © Springer Science+Business Media, Inc. 2005.
Cocchi, D., Fabrizi, E., Trivisano, C., A stratified model for the assessment of meteorologically adjusted trends of surface ozone, <<ENVIRONMENTAL AND ECOLOGICAL STATISTICS>>, 2005; 12 (2): 195-208. [doi:10.1007/s10651-005-1041-6] [http://hdl.handle.net/10807/169255]
A stratified model for the assessment of meteorologically adjusted trends of surface ozone
Fabrizi, Enrico
Secondo
;
2005
Abstract
We consider the problem of assessing long-term trends of ozone concentrations measured on a single site located in an urban area. Among the many methods proposed in the literature to eliminate the confounding effect of changing weather conditions, we employ a stratification of daily maxima based on regression trees. Within each stratum conditional independence and Weilbull distribution are assumed for maxima. Long-term trend is defined non-parametrically by the sequence of yearly medians. Models are estimated following the Bayesian approach. The alternative assumptions of common and stratum specific trends are compared and a model with common trend for all strata is selected for the analyzed real dataset. The conditional independence assumption is checked by the comparison with a model including an autoregressive component. © Springer Science+Business Media, Inc. 2005.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.