
International Symposium on Forecasting
Boston
June 24-27, 2012
In this paper we explore the hierarchical nature of tourism demand time series and produce short-term forecasts for Australian domestic tourism. The data and forecasts are organized in a hierarchy based on disaggregating the data according to geographical regions and purposes of travel. We consider five approaches to hierarchical forecasting: two variations of the top-down approach, the bottom-up method, a newly proposed top-down approach where top-level forecasts are disaggregated according to the forecasted proportions of lower level series, and a recently proposed optimal combination approach. Our forecast performance evaluation shows that the top-down approach based on forecast proportions and the optimal combination method perform best for the tourism hierarchies we consider. By applying these methods, we produce detailed forecasts of the Australian domestic tourism market.
George Athanasopoulos, 02 August 2010
We have discovered two small errors in counting observations at the very beginning of Section 5. We state "We then re-estimate the models based on the first 12 observations (1998:Q1-2001:Q4), and produce 1- to 8-step-ahead forecasts". The correct quarters are "(1998:Q1-2000:Q4)". We also state: "This process is iterated until 2005:Q3," this should be "until 2006:Q3". George