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This study analyzes why estimates of the European Economic and Monetary Union (EMU) trade effect vary so much in the literature. It explores different methodologies, data sets, and factors influencing trade effects. The study concludes with a meta-estimate of the EMU trade effect and investigates potential publication bias. The findings provide insights into the magnitude and factors affecting the EMU trade effect.
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Why do Estimates of the EMU Effect on Trade Vary So Much? Andrew K. Rose Berkeley-Haas ABFER, CEPR, NBER
Motivating Questions (with answers) • Why do estimates of the EMU trade effect vary so much in the literature? • Larger data sets – more countries, more time – deliver larger estimates • Consistent with meta-analysis, data, theory • Given this, what actually is the EMU trade effect? • Around 50% (much larger than most literature)
Methodological Wrinkle • Use meta-analysis to motivate data/theory work • Leads to conclusion that most literature irrelevant • But for understandable reasons • Literature used as motivation for analysis that refutes (most of the) literature!
Costs and Benefits of Joining a Monetary Union Costs • Loss of nominal exchange rate as policy tool • Loss of national monetary policy control Benefits • Greater transparency of prices encourages greater competition and efficiency • Reduced currency risk encourages more trade and investment
Measuring Trade Effects (1)“Old” Gravity Model ln(Tradeijt) = CUijt + Zijt+ {δt} +ijt • Tradeijt = average nominal value of bilateral trade between i and j at time t, • Z = gravity control variables, usual suspects: e.g. GDP, distance, common language, border, regional RTA, colonial history, etc. … • {δt} = year-specific effects, • CU = 1 if i and j use the same currency at time t and 0 otherwise; the coefficient of interest
Measuring Trade Effects (2)Newer (Export) Gravity Models • Much work on “theory-consistent” gravity estimation • Use Least Squares on exportswith time-varying country Dummy Variables to control for multilateral resistance, other general equilibrium effects: ln(Exportsijt) = CUijt + Zijt+ {λit} + {ψjt} + ijt • Xijt= nominalvalue of bilateral exports from i to j at time t, • {λit} = set of time-varying exporter dummy variables, • {ψjt} = set of time-varying importer dummy variables
Examples of Currency Unions • Multilateral Currency Unions • European Economic and Monetary Union “EMU” (1999-) • By far the most interesting and relevant • Different: involves a) rich; b) large countries; and c) targets inflation • CFA Franc Zones • Eastern Caribbean Currency Union • Common (Rand) Monetary Area … • Anchor Currency Unions • British £: Bahamas (-1965), NZ (-1966), Ireland (-1978) … • US $: Panama, Bahamas (1966-), Ecuador (2000-), • Fr Franc: Morocco (-1957), Algeria (-1968) …
Debate in Literature on Magnitude of Trade Effect of CUs • Ridiculous, 200% • Rose (2000) • Big, 90-100%. • Glick and Rose (2002), Frankel (2010) • Moderate, 40-50% • Eicher and Henn (2011) • Small, 0-20% • Micco et al (2003), Bun and Klaasen (2002, 2007), de Nardis and Vicarelli (2003), Flam and Nordstrom (2007), Berger and Nitsch (2008), Camarero et al (2013) • Negative? • Baldwin and Taglioni (2007)
Meta-Estimate • Random effects estimator delivers estimate of (exp(.116)-1≈) 12.3% • Economically non-trivial • Statistically significant • Robust to reasonable sub-samples
Publication Bias • Over twenty (of 45) papers unpublished • Still, can investigate easily with standard techniques • Funnel plots of estimate against precision indicates weak right skew • Many estimates outside 95% confidence interval! • Results in Figure 2 • Conclude: little evidence of publication bias • But worrying dispersion!
Why do EMU Estimates Vary Across Studies? • Rising with (log) observations • Small (positive) effect of years in EMU • Positive (big) effect of span in years • Positive (big) effect of number countries • Histograms, scatterplots, regressions all provided in Figure 3 • Note paucity of observations • Special note: usually very few countries in sample
Confirmation via Meta-Regression • Want to check ocular evidence of Figure 3: • Strong positive effect of #countries • Strong positive effect of #years • Other effects? • Check via Meta Regression Analysis (Table 2) • Check for sensitivity to weighting • Check for other determinants
Quick Summary • In literature: longer, wider spans of data over both time and countries systematically associated with higher estimate of EMU trade effect • Curious … extra data increases γeven if extra observations not directly relevant to EMU! • (Explains why these observations – e.g., small/poor countries – often omitted from studies; natural to include only relevant observations when estimating EMU trade effect – encompassing)
Caveat • But … only 7 papers in literature use preferred methodology (exports, dyadic and time-varying country fixed effects) … and most papers use few countries (median 22), years (median 20) • So, seems wise to check meta-results with actual data, plain-vanilla methodology
Confirmation Technique (Intentionally Prosaic) Data • IMF DoTS trade: >200 “countries” 1948-2013 • >875,000 observations! • Country Characteristics: World Factbook • Regional Trade Agreements (RTAs): WTO • Currency Unions: Glick-Rose updated • 1:1 for extended period of time (not hard fixes); transitive Estimating Equation ln(Exportsijt) = CUijt + Zijt+ {λit} + {ψjt} + ijt
(Why We Want a Large Data Set) A large data set – spanning both countries and time (increasing importance): • Many degrees of freedom • Direct comparison of individual CUs/RTAs • Check sensitivity wrt span of years: important in meta-analysis! • Ditto wrt country span (ditto) • Better multilateral resistance estimates? • (Now!) feasible to include 22k country-time (+32k dyadic) FE
Gravity Estimates of EMU EffectVarying end dates and country samples
Dimensionality Effects • Adding more years increases γ! • Adding more countries increases γ • Consistent with meta-regressions!
Conclusions from Meta-Regression-cum-Regression Analysis • Throwing away data easily allows one to estimate small/negative EMU export effect • Adding years of data in EMU (relevant!) increases EMU export effect • Adding countries outside EMU (seemingly irrelevant!) decreases EMU export effect
Why (the Differences)? Theory … • Anderson and van Wincoop (2003, p 176); multilateral trade resistance depends positively on trade barriers with all trading partners • Dropping small and/or poor countries (likely to have systematically different trade resistance) leads to biased estimates of multilateral trade resistance; higher multilateral resistance leads to more trade. • Downward-biased estimates of multilateral resistance (λ, Ψ FE) biases γ down. • Multilateral trade resistance is a function of all bilateral trade barriers, so all trade partners should be included • Just a (large number of) fixed effects • Can check if fewer countries/years lead to smaller FE
… and Practice: Estimates ofMultilateral Resistance shows Bias
Conclusion/Summary: Why do Estimatesof EMU Trade Effect Vary so Much? • Varying sample sizes by time and (especially) country • More Data is Better! • Established via meta-analysis and regressions • Truncating sample (omitting small/poor countries) biases downward EMU trade effect in a) theory, b) data, and c) literature • Including entire post-war sample of countries/years delivers large estimate of EMU export effect of γ≈.43 or (exp(.43-1≈) 54%! • Economically large (may grow) • Statistically significant (robust t-statistic>20) • Quite consistent with Rose-Stanley (2005): 47%
Future Research • Handling zero and missing trade observations • LS estimates may be biased because of: • Heteroskedasticity, and/or • Discarded observations of zero/missing trade • Santos Silva and Tenreyro propose Poisson pseudo-maximum likelihood to handle both • But difficult to use in big panels like ours • Interaction of effects of joining CUs and other forms of economic integration, such as regional trade arrangements • Many countries joined EMU in years prior to joined EMU