Using pooled information and bootstrap methods to assess debt sustainability in low income countries
Conventional assessments of debt sustainability in low income countries are hampered by poor data and weaknesses in methodology. In particular, the standard International Monetary Fund-World bank debt sustainability framework relies on questionable emp...
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Format: | Policy Research Working Paper |
Language: | English |
Published: |
2012
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Online Access: | http://www-wds.worldbank.org/external/default/main?menuPK=64187510&pagePK=64193027&piPK=64187937&theSitePK=523679&menuPK=64187510&searchMenuPK=64187283&siteName=WDS&entityID=000158349_20120227111354 http://hdl.handle.net/10986/3264 |
Summary: | Conventional assessments of debt
sustainability in low income countries are hampered by poor
data and weaknesses in methodology. In particular, the
standard International Monetary Fund-World bank debt
sustainability framework relies on questionable empirical
assumptions: its baseline projections ignore statistical
uncertainty, and its stress tests, which are performed as
robustness checks, lack a clear economic interpretation and
ignore the interdependence between the relevant
macroeconomic variables. This paper proposes to alleviate
these problems by pooling data from many countries and
estimating the shocks and macroeconomic interdependence
faced by a generic, low income country. The paper estimates
a panel vector autoregression to trace the evolution of the
determinants of debt, and performs simulations to calculate
statistics on external debt for individual countries. The
methodology allows for the value of the determinants of debt
to differ across countries in the long run, and for
additional heterogeneity through country-specific exogenous
variables. Results in this paper suggest that ignoring the
uncertainty and interdependence of macroeconomic variables
leads to biases in projected debt trajectories, and
consequently, the assessment of debt sustainability. |
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