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  • Publication
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    Evaluating Approximate Point Forecasting of Count Processes
    (MDPI, 2019)
    Homburg, Annika
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    Alwan, Layth C.
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    Göb, Rainer
    In forecasting count processes, practitioners often ignore the discreteness of counts and compute forecasts based on Gaussian approximations instead. For both central and non-central point forecasts, and for various types of count processes, the performance of such approximate point forecasts is analyzed. The considered data-generating processes include different autoregressive schemes with varying model orders, count models with overdispersion or zero inflation, counts with a bounded range, and counts exhibiting trend or seasonality. We conclude that Gaussian forecast approximations should be avoided.