Survey
* Your assessment is very important for improving the workof artificial intelligence, which forms the content of this project
* Your assessment is very important for improving the workof artificial intelligence, which forms the content of this project
Master or Servant? Agency Slack and the Politics of IMF Lending Mark Copelovitch Department of Political Science University of Wisconsin-Madison IPES Conference November 17, 2006 Who “Controls” the International Monetary Fund? • “The IMF…is a set of ‘silk-suited dilettantes’ given to ‘champagne and caviar at the expense of the American taxpayer.’” – Sen. Lauch Faircloth (R-NC), The Wall Street Journal, 3/27/98 • “Everywhere else in the world…politicians and businessmen insist that one of the biggest problems with the IMF is that…it acts as the United States Treasury's lap dog.” – David Sanger, New York Times, 10/2/98 The Politics of IMF Lending: Two Main Perspectives Principal(s) Executive Board? US government Agent What explains lending variation? IMF staff Technocratic economic criteria or staff rent-seeking (Knight/Santaella, Dreher/Vaubel) IMF staff US geopolitical or financial interests (Thacker, Oatley, Broz, Stone) Existing Explanations: Problems and Questions A mixed empirical record • Similar economic circumstances, different loans • Some countries with strong ties to US get better deals than others Conceptual gaps • US has strongest voice, but not veto, over IMF decisions – “G-5” countries all exercise significant authority • Bureaucratic rent-seeking: when does the staff “get away” with it? Argument in Brief A principal-agent model of IMF policymaking • G-5 governments as the “collective principal” • IMF staff as agent Main findings • Both states and IMF staff exercise partial but incomplete control over Fund lending • Agency slack is case-specific: staff autonomy is conditional on the intensity and heterogeneity of principal (G-5) interests – Must account for other large shareholders’ interests, not just US – IMF staff are not “runaway” bureaucrats A Collective Principal Model of IMF Lending IMF Executive Board (“G-5”) US UK GE R JP N IMF staff FR A Preferences influenced by domestic interests (geopolitical, financial) Preferences influenced by economic criteria and bureaucratic incentives Borrower country Key question: how much “agency slack” in a given lending case? G-5 Bank Exposure in Recent IMF Lending Cases Aggregate G-5 exposure ($billions) 100% 68.5 39.5 50.3 60.6 34.6 0.3 6.9 90% 80% 70% France 60% Germany 50% Japan 40% UK 30% US 20% 10% 0% Korea 1997 Mexico 1995 Brazil 2002 Thailand 1997 Russia 1999 Bosnia 2002 SOURCE: Bank for International Settlements. Consolidated International Banking Statistics Croatia 2003 Measuring Agency Slack: G-5 Interest Intensity and Heterogeneity Heterogeneity of G-5 interests Intensity of G-5 interests High Low Low High • G-5 consensus • G-5 conflict • Largest loans • Large loans, but “logrolling” cost • G-5 consensus • G-5 conflict • Smallest loans • Small loans, but “rent-seeking” premium Mean Loan Size (Amount/Quota) by G-5 Bank Exposure Short-term IMF loans, 47 countries, 1984-2003 G-5 bank exposure, coefficient of variation Aggregate G-5 bank exposure High* Low* Low* High* AMTQTA=2.04 (N=84) AMTQTA=1.12 (N=34) AMTQTA=0.63 (N=26) AMTQTA=0.60 (N=64) *Above or below sample mean in a given year Empirical Analysis Dataset • 197 short-term IMF loans to 47 countries, 1984-2003 Sources • IMF archival documents • IMF, World Bank, and BIS databases Dependent variables • Loan sizei,t – new short-term IMF lending/quota (log) • Robust to alternative specifications (raw amount, amount/GDP) Models • OLS, panel-corrected standard errors, “modified” lagged DV, country fixed effects • Robust to alternative specifications Variables Explanatory variables • Measures of aggregate G-5 interests • Bank exposure, foreign aid commitments, UN voting affinity • Weighted by relative voting power of G-5 countries • Measures of G-5 interest heterogeneity • Coefficients of variation of bank exposure, foreign aid, and UN affinity • 100*(std/mean) = measures dispersion as % of mean Control variables • Borrower macroeconomic/political characteristics • Temporal trends/global conditions • “Modified” lagged DV (dummy for outstanding previous loans) First Differences - IMF Loan Size (Model 3) Predicted change in loan size (AMTQTA) Interpretation Length of loan 45.77% 20 to 30 months GDP / quota 27.61% 67.4 to 127.74 times quota External debt / GDP 24.30% 58.49 to 94.3 Debt service / exports 34.35% 23.55 to 42.26 Short-term debt / reserves 14.39% 0.79 to 3.09 Quota review -12.30% 0 to 1 Variable Coefficient of variation, G5BANK G5BANK=3.55 G5BANK=7.36 G5BANK=9.9 Predicted change in loan size (AMTQTA) 11.16% -10.18% -12.29% Effect of G-5 Interest Heterogeneity at Different Levels of G-5 Interest Intensity - Bank Exposure Effect of G-5 Interest Heterogeneity at Different Levels of G-5 Interest Intensity - Foreign Aid Effect of G-5 Interest Heterogeneity at Different Levels of G-5 Interest Intensity - UN Voting Affinity Main Findings G-5 governments’ interests heavily influence IMF lending • Amount and distribution of bank exposure and foreign aid significantly influence loan characteristics • UN voting affinity has less clear effects Agency slack depends on G-5 interest intensity & heterogeneity • Staff autonomy increases when G-5 interests are weak and divided IMF lending is highly political • Evidence for both common political explanations, but each is conditional on the other Implications and Conclusions Understanding IO behavior • Beyond questions of cooperation and institutional design – How do IOs make decisions once the rules/institutions are established? • Focusing on delegation/agency and internal decision-making rules is critical Reforming the IMF • Abolishing the IMF/curtailing lending – Would not eliminate G-5 interests, but would simply shift the focus to bilateral/ad hoc official lending • Executive Board voting reform – Replacing G-5 domestic interests with other countries’ is unlikely to remove politics from the process