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YES 2011 Discussions Dubrovnik Economic Conference. Paul Wachtel Stern School of Business. New York University. Are some banks more lenient in implementation of placement classification rule?. Tomislav Ridzak. Overview. A fascinating piece of applied banking research
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YES 2011 DiscussionsDubrovnik Economic Conference Paul Wachtel Stern School of Business. New York University
Are some banks more lenient in implementation of placement classification rule? Tomislav Ridzak
Overview • A fascinating piece of applied banking research • Will be of interests to bank regulators, policy makers and, of course, the banks themselves. • Simple idea with big implications that need to be explored
Idea • Companies have more than one banking relationship. • Do different banks rate the same bank differently? • There is going to be some random variation. • Can be important tool for bank examiners. • Can be informative about bank behavior • But… more to do…relate it back to policy
Policy implications to explore • Do banks with less capital rate loans more leniently? • Do banks that are less profitable rate loans more leniently? • If answers are yes, then • Banks are ‘gaming’ the regulators. • Risk regulations of unclear value
Data • Loans to non financial companies by 33 Croatian banks 2006-09 • Need to ‘prepare’ data • Define default • Handle collateral SINCE THERE IS SOME ARBITRARINESS, ROBUSTNESS TO DEFINTIONS SHOULD BE EXAMINED.
Method from educational stats BANKS (or Graders) __________________ COMPAN IES (or Students) WHICH BANK IS GRADING IN A SIGNIFICANTLY DIFFERENT WAY?
Method from educational stats BANKS (or Graders) __________________ COMPAN IES (or Students) WHICH BANK IS GRADING IN A SIGNIFICANTLY DIFFERENT WAY?
RESULTS • There are differences – 2-6 banks are significantly grading away from the pack • But, how much should we expect? I need a benchmark of some kind. How much behavioral variation is ‘normal’? Appendix figures hint at some answers. • Small, insignificant relationship between relative leniency and coverage ratio (is that average for all of banks’ loans?) • Collateral correction should be for each loan
CONCLUSION • Imaginative application. • But, what is the goal • So, regulators know more about banks • Or, research on bank behavior
The role of demand and supply in cyclical fluctuations of household debt in Coratia Ivana Herceg
Overview • Nice paper are a really important issue (not just a Croatia issue) • But, I am not sure why • I can understand what the paper sets out to do • But, it is hard to figure out from the paper what was actually done. • Which makes it hard to know what the results are
The issue • It is common (lots of references shown) to attribute credit booms / crises to easy bank lending standards – supply shift • But credit booms occur when economy is growing and the income elasticity of the demand for credit is high – So it could be a demand shift. • So, which is it? S or D?
Approach • Standard econometrics – identify S and D curves and see which is moving more in the boom. • Hard to find identifying restrictions • Not clear what data to use other than aggregates • Use information from Croatia household survey to infer bank supply behavior and household demand behavior. • Paper bogs down in confusing explanations of the econometrics and never tells us what it can accomplish.
Infer supply • Look at households who took at loans (this is the bank’s product) and estimate a production frontier – standard application of stochastic frontier analysis
Understanding Frontier Two inputs – efficient frontier Extent to which individual is below frontier – weakness of demand Extent to which frontier moves over time – change in supply. In crisis – Did frontier shift in or did demand [inefficiency so to speak] increase?
Frontier results • 2008 and 2009 – are estimates (overall) significantly different? Seem to unstable to be so. • Frontier estimation does not include existing loans outstanding as a control.
Alternative approach • Quantile regression estimates?Give me some intuition about what this does. • The results are shown in figures – and I have no idea what the figures show.
Fig. 6 Usage of available credit limits WHAT AM I LOOKING AT? What is on each axis? 1 to 321 Households with loans? How ordered? Resutls from SFA or QR? How presented?
Probability of loan and supply • Some kind of probit estimates for S and D (same 0-1 variable for both) • Never see the specification • Or the estimates • Or any tests of the identifying variables (in footnote 14). Too big an issue for a footnote. And, existence of prior loan seems relevant to both S and D
Little puzzles • “Creditoworthiness….deteriorated” • Can we really treat 2008 and 2009 as different? • The one comparison does not answer original question – does S or D drive credit boom? • When is survey conducted? • Are othere waves available?
Conclusion • In crisis/recession, banks tightened selection of households to offer loans. • Banks offered selected households larger loans • Households took down less. • Important result – • Need to clarify methodology • And show how you got the results