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An AI-powered Tool for Central Bank Business Liaisons: Quantitative Indicators and On-demand Insights from Firms

Author

Listed:
  • Nicholas Gray

    (Reserve Bank of Australia)

  • Finn Lattimore

    (Reserve Bank of Australia)

  • Kate McLoughlin

    (Reserve Bank of Australia)

  • Callan Windsor

    (Reserve Bank of Australia)

Abstract

In a world of high policy uncertainty, central banks are relying more on soft information sources to complement traditional economic statistics and model-based forecasts. One valuable source of soft information comes from intelligence gathered through central bank liaison programs – structured programs in which central bank staff regularly talk with firms to gather insights. This paper introduces a new text analytics and retrieval tool that efficiently processes, organises, and analyses liaison intelligence gathered from firms using modern natural language processing techniques. The textual dataset spans around 25 years, integrates new information as soon as it becomes available, and covers a wide range of business sizes and industries. The tool uses both traditional text analysis techniques and powerful language models to provide analysts and researchers with three key capabilities: (1) quickly querying the entire history of business liaison meeting notes; (2) zooming in on particular topics to examine their frequency (topic exposure) and analysing the associated tone and uncertainty of the discussion; and (3) extracting precise numerical values from the text, such as firms' reported figures for wages and prices growth. We demonstrate how these capabilities are useful for assessing economic conditions by generating text-based indicators of wages growth and incorporating them into a nowcasting model. We find that adding these text-based features to current best-in-class predictive models, combined with the use of machine learning methods designed to handle many predictors, significantly improves the performance of nowcasts for wages growth. Predictive gains are driven by a small number of features, indicating a sparse signal in contrast to other predictive problems in macroeconomics, where the signal is typically dense.

Suggested Citation

  • Nicholas Gray & Finn Lattimore & Kate McLoughlin & Callan Windsor, 2025. "An AI-powered Tool for Central Bank Business Liaisons: Quantitative Indicators and On-demand Insights from Firms," RBA Research Discussion Papers rdp2025-06, Reserve Bank of Australia.
  • Handle: RePEc:rba:rbardp:rdp2025-06
    DOI: 10.47688/rdp2025-06
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    JEL classification:

    • C5 - Mathematical and Quantitative Methods - - Econometric Modeling
    • C8 - Mathematical and Quantitative Methods - - Data Collection and Data Estimation Methodology; Computer Programs
    • D2 - Microeconomics - - Production and Organizations
    • E5 - Macroeconomics and Monetary Economics - - Monetary Policy, Central Banking, and the Supply of Money and Credit
    • E6 - Macroeconomics and Monetary Economics - - Macroeconomic Policy, Macroeconomic Aspects of Public Finance, and General Outlook
    • J3 - Labor and Demographic Economics - - Wages, Compensation, and Labor Costs

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