Dynamic generalized linear models with application to environmental epidemiology |
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Authors: | Monica Chiogna Carlo Gaetan Carlo Gaetan |
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Affiliation: | Universitàdi Padova, Italy |
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Abstract: | Summary. We propose modelling short-term pollutant exposure effects on health by using dynamic generalized linear models. The time series of count data are modelled by a Poisson distribution having mean driven by a latent Markov process; estimation is performed by the extended Kalman filter and smoother. This modelling strategy allows us to take into account possible overdispersion and time-varying effects of the covariates. These ideas are illustrated by reanalysing data on the relationship between daily non-accidental deaths and air pollution in the city of Birmingham, Alabama. |
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Keywords: | Environmental epidemiology Kalman filter Randomized residuals State space models |
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