Using an evolving criterion to assess the Federal Reserve's behaviour in recent years

Authors

  • Davide Ferrari
  • Antonio Ribba

DOI:

https://doi.org/10.13133/2037-3643/9859

Keywords:

Monetary Policy, Monetary, Policy

Abstract

The aim of this paper is to analyse the behaviour of the Federal Reserve in the Greenspan era by using recently developed neuro-fuzzy techniques. Such models require the operation assumptions concerning the conduct of monetary policy to be set in the form of flexible rules. Moreover, the approach allows an adaptive model to be built, thus pointing out the role played by the evolution of the monetary policy decision mechanism. Besides the usual set of macro-economic variables, the input data set includes a stock market indicator. Our results show that the simulated series of federal funds rate mimics almost perfectly the actual behaviour of the monetary policy instrument.

  

JEL Codes: E52, E58

References

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Published

2012-04-19

How to Cite

Ferrari, D., & Ribba, A. (2012). Using an evolving criterion to assess the Federal Reserve’s behaviour in recent years. PSL Quarterly Review, 58(235). https://doi.org/10.13133/2037-3643/9859

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