Purpose-There has been significant interest in the classification of exchange rate regimes in order to investigate a wide range of hypotheses. Studies of the effects of exchange rate regimes on crises and other aspects of economic performance can have important implications for policy choices. The paper provides a guide to the major new large data sets that classify exchange rate regimes and to critically analyze important methodological issues. Design/methodology/approach-The study surveys and critiques the literature and provides theoretical analysis of major issues involved in classifying exchange rate regimes. Findings-The study finds that all of the new data sets have problems but some have more problems than others and several of them are substantial improvements on what was previously available. It is also shown that the best ways to classify depend on the issue being addressed and that for detailed studies variants of measures using the concept of exchange market pressure are the most promising. Directions for future research are also discussed. Originality/value-The paper makes researchers aware of the new data sets that are available and discusses their strengths and weaknesses. It also presents original analysis of several of the major conceptual issues involved in classifying exchange rate regimes.
There has been much interest in whether fixed exchange rates can provide a strong source of discipline over domestic monetary and fiscal policies. We argue that previous studies, however, have not paid sufficient attention to the distinction between constraint and incentive effects and that these operate quite differently for hard and soft fixes. Using annual data for 31 emerging and 32 developing countries during 1990-2003, our analysis implies that hard fixes should have much stronger discipline effects on money growth and inflation and our empirical study supports their prediction. Our theoretical analysis suggests that neither hard nor soft fixes are likely to provide strong discipline over fiscal policy and this is confirmed by our empirical analysis as well
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