articleThe Journal of FinanceAug 9, 2024HYBRID OA

Business News and Business Cycles

Washington University in St. Louis

Indexed incrossref

Abstract

ABSTRACT We propose an approach to measuring the state of the economy via textual analysis of business news. From the full text of 800,000 Wall Street Journal articles for 1984 to 2017, we estimate a topic model that summarizes business news into interpretable topical themes and quantifies the proportion of news attention allocated to each theme over time. News attention closely tracks a wide range of economic activities and can forecast aggregate stock market returns. A text‐augmented vector autoregression demonstrates the large incremental role of news text in forecasting macroeconomic dynamics. We retrieve the narratives that underlie these improvements in market and business cycle forecasts.

Citation impact

139
total citations
FWCI
122.65
Percentile
100%
References
51
Citations per year

Authors

4

Topics & keywords

Keywords
  • Business cycle
  • Aggregate (composite)
  • Vector autoregression
  • Theme (computing)
  • Narrative
  • Stock market
  • News analytics
  • Stock (firearms)
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