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Erbas, B. and Hyndman, R.J. (2001)

16th International Workshop on Statistical Modelling, Odense, Denmark. 2-6 July, 2001.

Abstract: Epidemiological studies have consistently shown short term associations between levels of air pollution and respiratory disease in countries of diverse populations, geographical locations and varying levels of air pollution and climate. The aims of this paper are: (1) to assess the sensitivity of the observed pollution effects to model specification, with particular emphasis on the inclusion of seasonally adjusted covariates; and (2) to study the effect of air pollution on respiratory disease in Melbourne, Australia.

Keywords: air pollution, autocorrelation, generalized additive models, respiratory disease, seasonal adjustment

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