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How Well Do Aggregate Bank Ratios Identify Banking Problems?

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Title: How Well Do Aggregate Bank Ratios Identify Banking Problems?


1
How Well Do Aggregate Bank Ratios Identify
Banking Problems?
  • by
  • Martin Cihák and
  • Klaus Schaeck
  • Comments
  • Kenneth D. Jones
  • Federal Deposit Insurance Corporation
  • Identifying and Resolving Financial
    CrisesFederal Reserve Bank of Cleveland andFDIC
    Center for Financial Research
  • Cleveland, OH
  • April 17, 2008

2
These deep thoughts are my own and not those of
the FDIC or the U.S. Government
3
The paper in perspective
  • The authors use a proprietary data set containing
    financial soundness indicators (FSIs) to
    investigate whether aggregated banking data are
    useful in predicting the occurrence and timing of
    banking crises.

4
Literary Perspective
  • The development of predictors to financial crises
    has been a particularly active area for research
    in the 1990s and 2000s.
  • Bussierre and Fratzscher (2002) characterize two
    broad empirical approaches
  • Leading Indicator Approach
  • The Discrete-Dependent-Variable Approach

5
Literary Perspective
  • Leading Indicator Approach
  • Considers vulnerability indicators (from single
    variables or combinations of variables) and
    transforms them into binary signals if a given
    indicator crosses a critical threshold, or lies
    within a set interval, or is an outlier, then a
    red flag is raised or a signal is sent. The
    number and strength of the signals are predictors
    of an impending crisis.
  • Discrete-Dependent-Variable Approach
  • Emphasis is on identification of variables that
    are statistically correlated with financial and
    banking crises. A logit or probit regression is
    used to estimate the probability of a crisis
    occurring in the near term.
  • The empirical performance of crisis predictors is
    rather poor.
  • Rather high Type I and Type II errors
  • Generally fail to perform when tested
    out-of-sample

6
Main Findings of Cihák and Schaeck
  • Find evidence using a binomial logit regression
    model that suggests that at least some aggregate
    bank ratios are indicative of oncoming systemic
    banking crises.
  • Indicators
  • Return on equity
  • M2 / international reserves
  • Degree of corporate leverage
  • Offer results of a duration model to show that
    some aggregate banking system ratios provide
    signals about the timing of systemic banking
    crises.
  • Indicators
  • Return on equity
  • GDP per capita
  • GDP Growth

7
General Comments
  • Methodology
  • The approach used falls somewhere between the
    discrete-dependent-variable and the leading
    indicator approach.
  • Fairly good job of exploratory data analysis
  • Doesnt go quite so far toward developing
    variables for an early warning system based on
    leading indicators
  • Need to investigate threshold values, or trip
    wires, test combinations of indicators, and
    report noise-to-signal ratios

8
General Comments
  • Contrary to the papers conclusion, I thought
    that the findings suggested the opposite that
    aggregate banking ratios were not useful
    indicators of future systemic banking crises (at
    least when used in isolation).
  • The findings actually highlighted the
    difficulties in finding predictors that could
    presage banking crises across a wide
    cross-section of countries with an acceptable
    proportion of missed crises and false alarms.
  • Good support for this conclusion exists in the
    literature
  • Even the caveats discussed by the authors seem to
    support this conclusion
  • Limitations of the data set
  • Backward-looking nature of bank accounting data
  • Aggregation problems

9
General Comments
  • Duration Analysis
  • The short time period studied and the arbitrary
    nature of the start date cast some doubt on the
    robustness of these results.
  • add additional years (2005-06)
  • Limit sample to those countries with similarly
    strong/weak economies at the beginning of the
    period
  • With first differences, all bank variables become
    insignificant but GDP growth emerges as an
    indicator why?
  • Other
  • The insignificance of some variables that other
    studies have found to be important needs to be
    explained
  • Credit and loan growth to GDP
  • Short-term capital flows to GDP
  • Measures of nonperforming loans

10
Some Suggestions
  • Test the bank ratios with macroeconomic controls
    and controls for the regulatory and institutional
    environments of each country
  • The authors suggest this as an area for further
    research (I concur)
  • Kaminsky (2000) I have only considered the
    macroeconomic data in the list of univariate
    indicators, but data from the balance sheets of
    financial institutions would be an important
    complement to the macro data.
  • The idiosyncratic nature of banking crises makes
    it difficult to find predictors
  • One size does not fit all
  • Possible solution Conduct analysis on split
    samples
  • Different types of banking crises
  • Depositor runs / Liquidity crises / Macroeconomic
    shocks
  • Macroeconomic cycles
  • Different types of economies and banking systems
  • Developed economies vs. emerging economies

11
Some Suggestions
  • Expand prediction horizon
  • Allow two or three year lags to possibly increase
    predictive ability this also allows sufficient
    time for corrective actions by markets or
    regulators
  • Control for the effect of currency or financial
    crises that precede a banking crisis
  • Further explore the trade-offs between Type I
    (missed crisis) and Type II errors (false
    signals) by determining the optimal cut-off or
    critical level for important variables.
  • For example, in figures 10 and 11, there are
    potential trade-offs that would reduce one type
    of error while increasing the other type only
    slightly. This could be explored over a range of
    policy weighting schemes (Bussiere and
    Fratzscher, 2002).

12
Where to from here?Perhaps someday the authors
will have something akin to the DHS Threat
Advisory System
13
Or perhaps
  • the holy grail of crisis prediction is
    intrinsically unattainable (Sharma, 1999)
  • In which case
  • the intellectual capital of the economics
    profession could be more productively expended
    devising appropriate changes in the overall
    regime in which investors operate (such as
    measures that compel changes in financial
    strategies) rather than searching for the correct
    set of crisis predictors (Grabel, 2003).
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