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A Factor Model Analysis of the Australian Economy and the Effects of Inflation Targeting

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  • Luke Hartigan
  • James Morley

Abstract

Based on a dynamic factor model for a data set with more than 100 variables, we find that macroeconomic fluctuations in Australia can be largely captured by just two common factors. However, the factor structure changed soon after the introduction of inflation targeting in the 1990s, resulting in a large reduction in cross‐sectional variation related to these common factors. Estimates from a block‐exogenous factor‐augmented vector autoregressive model suggest that the transmission and responsiveness of monetary policy also changed, with policy both more effective and responsive to the potential inflationary impacts of shocks following the introduction of inflation targeting.

Suggested Citation

  • Luke Hartigan & James Morley, 2020. "A Factor Model Analysis of the Australian Economy and the Effects of Inflation Targeting," The Economic Record, The Economic Society of Australia, vol. 96(314), pages 271-293, September.
  • Handle: RePEc:bla:ecorec:v:96:y:2020:i:314:p:271-293
    DOI: 10.1111/1475-4932.12539
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    5. Fornero, Jorge & Kirchner, Markus & Molina, Carlos, 2024. "Estimating shadow policy rates in a small open economy and the role of foreign factors," Journal of International Money and Finance, Elsevier, vol. 140(C).
    6. Le, Thi Ngoc Lan & Nasir, Muhammad Ali & Huynh, Toan Luu Duc, 2023. "Capital requirements and banks performance under Basel-III: A comparative analysis of Australian and British banks," The Quarterly Review of Economics and Finance, Elsevier, vol. 87(C), pages 146-157.

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