Development and evaluation of probabilistic forecasting methods for small area populations

Author:

Grossman Irina1ORCID,Bandara Kasun2ORCID,Wilson Tom1,Kirley Michael2

Affiliation:

1. Melbourne School of Population and Global Health, The University of Melbourne, Carlton, AU-VIC, Australia

2. School of Computing and Information Systems, Melbourne Centre for Data Science, University of Melbourne, AU-VIC, Australia

Abstract

Planning and development decisions in both the government and business sectors often require small area population forecasts. Unfortunately, current methods often produce forecasts that are inaccurate, particularly for remote areas and those with smaller populations. Such inaccuracy necessitates the development and evaluation of methods to forecast and communicate forecast uncertainty, however, little research has been conducted in this domain for small area populations. In this paper, we evaluate a set of probabilistic forecasting methods which include Autoregressive integrated moving average, Exponential Smoothing, THETA, LightGBM and XGBOOST, to produce point forecasts and 80% prediction intervals for Australian SA2 small area populations. We also investigate methods to combine the intervals to produce ensemble forecasts. Our results show that individual probabilistic methods generally produce prediction intervals which underestimate forecast uncertainty. Combining forecasts improves the overall accuracy of point forecasts and the coverage of their intervals, however, coverage still tends to be less than the expected 80% for all but the most conservative combination method.

Funder

Australian Research Council

Publisher

SAGE Publications

Subject

Management, Monitoring, Policy and Law,Nature and Landscape Conservation,Urban Studies,Geography, Planning and Development,Architecture

Reference61 articles.

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