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A user point of view on core inflation measures

A user point of view on core inflation measures. Laurent Bilke Euro Area Macroeconomic Developments Division. ECE/ILO meeting on CPI Geneve, 11 May 2006. The need to remove short-term noise Different ways to cope with this To refer to core inflation measures is one of them. Introduction.

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A user point of view on core inflation measures

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  1. A user point of view on core inflation measures Laurent Bilke Euro Area Macroeconomic Developments Division ECE/ILO meeting on CPI Geneve, 11 May 2006

  2. The need to remove short-term noise Different ways to cope with this To refer to core inflation measures is one of them Introduction

  3. Defining the noise with statistical criteria Three possible goals assigned to CI measures Assessing the properties of CI measures Illustration Outline

  4. (1) Statistical criteria • Statistical vs model based approaches • How to define the noise? • First possibility: noise= sector specific developments • Most volatile items removed • Idiosyncratic component identified and removed • Extreme changes removed

  5. (1) Statistical criteria • Second possibility: noise = less lasting developments We remove the items with the lowest persistence • Persistence • Relationship persistence – variance, variance of the overall is: > For a given item specific noise, low persistence implies low variance

  6. (1) Statistical criteria

  7. (1) Statistical criteria • Two pitfalls: (1) On the danger to exclude more than the noise Trimmed mean: we can exclude some long-term evolutions High tech goods or clothing (2) On the danger to exclude once for ever The case of energy

  8. (1) Statistical criteria Oil prices still pure noise? Less volatile More persistent

  9. (2) Three possible goals • An indicator of current and future trends in inflation • More or less emphasis can be placed on one side or the other (retrospective / prospective analysis) • Emphasis on very short term developments: to remove the developments that we presume will be soon reverted – descriptive approach • To predict inflation developments, x months ahead – leading indicator • An intermediate: to point towards the trend, attractor

  10. (3) How to assess the properties of CI? • Depends on the assigned goal • Descriptive approach • Statistical criteria • Same average than headline • Lower variance • Communication (Wyne, 99) • Computable in real time • Track record • Understandable • Stable in time

  11. (3) How to assess the properties of CI? • Trend/attractor approach • Robalo Marques et al. (2003) 3 conditions (1) Core and headline inflation have the same trend • Cointegrated with unit coefficient (2) CI is an attractor for headline inflation • CI Granger causes headline through en ECM

  12. (3) How to assess the properties of CI? (3) Headline inflation is not an attractor for CI • CI does not Granger causes headline through an ECM + through short-term dynamics (strong exogeneity)

  13. (3) How to assess the properties of CI? • CI as a leading indicator • Out of sample forecast error

  14. (4) An illustration • Three monthly CI measures for the EA: • HICPX: HICP excluding unprocessed food and energy • Trimmed mean, 16% on each side • Dynamic factor model, Cristadoro et al. (2004) • Sample period rather short: 10 years

  15. (4) An illustration • Descriptive approach

  16. (4) An illustration • Attractor approach

  17. (4) An illustration • Leading indicator approach Almost impossible to beat an autoregressive process: • Poor forecasting performance of HICPX and trimmed mean • A bit better for DFM In the short-term: sectoral analysis In the long-term: broad assessment

  18. Conclusion • Useful measures but mainly for descriptive purposes • The one that has some information content on trend inflation is also very hard to communicate on • Treatment of energy as pure noise is problematic (ECB, 2005)

  19. Thank you

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