Regional economic forecasting: state-of-the-art methodology and future challenges
DOI:
https://doi.org/10.17811/ebl.3.4.2014.218-231Resumen
Over the last decade, the topic of regional economic forecasting has become increasingly prevalent in academic literature. The most striking problem in this context is data availability at a regional level. However, considerable methodological improvements have been made to address this problem. This paper summarises a multitude of articles from academic journals and describes state-of-the-art techniques in regional economic forecasting. After identifying current practices, the article closes with a roadmap for possible future research activities.
Citas
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