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Measuring uncertainty at the regional level using newspaper text

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  • Christopher Rauh

    (Université de Montréal)

Abstract

In this paper I present a methodology to provide uncertainty measures at the regional level in real time using the full bandwidth of news. In order to do so I download vast amounts of newspaper articles, summarize these into topics using unsupervised machine learning, and then show that the resulting topics foreshadow fluctuations in economic indicators. Given large regional disparities in economic performance and trends within countries, it is particularly important to have regional measures for a policymaker to tailor policy responses. I use a vector-autoregression model for the case of Canada, a large and diverse country, to show that the generated topics are significantly related to movements in economic performance indicators, inflation, and the unemployment rate at the national and provincial level. Evidence is provided that a composite index of the generated diverse topics can serve as a measure of uncertainty. Moreover, I show that some topics are general enough to have homogenous associations across provinces, while others are specific to fluctuations in certain regions.

Suggested Citation

  • Christopher Rauh, 2019. "Measuring uncertainty at the regional level using newspaper text," Cahiers de recherche 2019-07, Universite de Montreal, Departement de sciences economiques.
  • Handle: RePEc:mtl:montde:2019-07
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    File URL: http://hdl.handle.net/1866/22365
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    Keywords

    Machine learning; Latent Dirichlet allocation; Newspaper text; Economic uncertainty; Topic model; Canada;
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