Ensemble post-processing is a promising method to obtain flexible distributed lag models: : A simulation study of time series of air pollution and daily mortality.

Last updated on 22-8-2019 by Anonymous (not verified)

Public Access

Published

Peer reviewed scientific article

Abstract:

Distributed lag models (DLM) are regression models that include multiple lagged exposure variables as covariates. They are frequently used to model the relationship between daily mortality and short-term air pollution exposures. Specifying a maximum lag number is but one of the difficulties in using a DLM for environmental epidemiology. We propose an easily extendible ensemble post-processing approach. The resultant estimates are both more parsimonious, approaching zero with increasing lag, and more efficient. The benefits are shown to be robust under various simulation scenario’s and illus…

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