Title of article
Monetary policy under model and data-parameter uncertainty
Author/Authors
Gino Cateau، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2007
Pages
19
From page
2083
To page
2101
Abstract
Empirical Taylor rules are much less aggressive than those derived from optimization-based models. This paper analyzes whether accounting for uncertainty across competing models and (or) real-time data considerations can explain this discrepancy. It considers a central bank that chooses a Taylor rule in a framework that allows for an aversion to the second-order risk associated with facing multiple models and measurement-error configurations. The paper finds that if the central bank cares strongly enough about stabilizing the output gap, this aversion leads to significant declines in the coefficients of the Taylor rule even if the central bankʹs loss function assigns little weight to reducing interest rate variability. Furthermore, a small degree of aversion can generate an optimal rule that matches the empirical Taylor rule.
Keywords
Taylor rule , Uncertainty , Non-reduction two-stage lotteries
Journal title
Journal monetary economics
Serial Year
2007
Journal title
Journal monetary economics
Record number
713280
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