Modelling seasonally varying data: A case study for Sudden Infant Death Syndrome (SIDS) |
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Authors: | Jennifer A Mooney Peter J Helms |
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Institution: | Departments of Child Health and Mathematical Sciences , University of Aberdeen , UK |
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Abstract: | Many time series are measured monthly, either as averages or totals, and such data often exhibit seasonal variability – the values of the series are consistently larger for some months of the year than for others. A typical series of this type is the number of deaths each month attributed to SIDS (Sudden Infant Death Syndrome). Seasonality can be modelled in a number of ways. This paper describes and discusses various methods for modelling seasonality in SIDS data, though much of the discussion is relevant to other seasonally varying data. There are two main approaches, either fitting a circular probability distribution to the data, or using regression-based techniques to model the mean seasonal behaviour. Both are discussed in this paper. |
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Keywords: | Cardioid distribution circular data cosinor analysis regression seasonality SIDS von Mises distribution |
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