Title of article :
Estimating New-Keynesian Phillips curves: A full
information maximum likelihood approach
Author/Authors :
Jesper Lindé، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2005
Abstract :
The New-Keynesian Phillips curve has recently become an important ingredient in monetary
policy models. However, using limited information methods, the empirical support for the New-
Keynesian Phillips curve appear to be mixed. This paper argues, by means of Monte Carlo
simulations with a simple New-Keynesian sticky price model, that single equations methods, e.g.
GMM, are likely to produce imprecise and biased estimates. Then, it is argued that estimating the
model with full information maximum likelihood (FIML) is a useful way of obtaining better
estimates. Finally, a version of the model used in the Monte Carlo simulations is estimated on U.S.
data with FIML and although the pure forward-looking New-Keynesian Phillips curve is rejected, a version with both forward- and backward-looking components provides a reasonable approximation
of U.S. inflation dynamics.
Keywords :
New-Keynesian Phillips Curve , Rational expectations IS-curve , Backward-looking Phillips curve , Generalized method of moments , Full information maximum likelihood estimation , Measurement errors
Journal title :
Journal monetary economics
Journal title :
Journal monetary economics