Title: Measuring Financial Stability
1Measuring Financial Stability
- by Oriol Aspachs-Bracons (LSE), Charles A.E.
Goodhart (LSE), Miguel Segoviano (IMF), Dimitrios
Tsomocos (University of Oxford) and Lea Zicchino
(BoE)
Developing a Framework to Assess Financial
Stability Bank of France 20 February 2008
2Literature
- Searching for a Metric for Financial Stability
- LSE Financial Markets Group Special Paper
167 - by Oriol Aspachs-Bracons (LSE), Charles A.E.
Goodhart (LSE), Miguel Segoviano (IMF), Dimitrios
Tsomocos (University of Oxford) and Lea Zicchino
(BoE) - Towards a Measure of Financial Fragility
- Annals of Finance, 3(1), 37-74, 2007
- by Oriol Aspachs-Bracons (LSE), Charles A.E.
Goodhart (LSE), Dimitrios Tsomocos (University of
Oxford) and Lea Zicchino (BoE)
3Outline of the presentation
- Motivation
- The Model
- Definition of Financial Stability
- Financial stability and banking sectors capital
adequacy - Empirical analysis
- Concluding remarks
4A Framework for Financial Stability
Contrasts between Price and Financial Stability
5 Why a measure of Financial Stability?
- It is easier to define, measure, model, analyse
and control price stability than to do so for
financial stability - In several ways the problem of measurement should
have priority as we need to compare and analyse - But in order to measure financial stability, we
need a formal, model-based definition
6Alternative definitions of Financial Stability
- Andrew Crockett (1997) financial stability
requires that the key institutions and the key
markets are stable - Mishkin (1994) financial instability occurs when
shocks to the financial system interfere with
information flows so that the financial system
can no longer do its job of channelling funds to
those with productive investment opportunities - Haldane et al (2004) financial instability is
any deviation from the optimal saving-investment
plan of the econom that is due to imperfections
in the financial sector - Issing(2003) and Foot (2003) financial
instability linked to financial market bubbles,
or more generally, volatility in financial
markets
7Definition of Financial Stability
- Financial fragility is characterised by reduced
- bank profitability and increased aggregate
default - An increase in both banking sector vulnerability
and aggregate default (lower repayment rates) are
linked to welfare losses (agents utilities)
8Key features of the model
- General equilibrium model of an exchange economy
with money and banks - Incomplete markets (limited participation)
- Heterogeneous investors/consumers and banks
- Liquidity constraints
- Endogenous default
9Key implications
- Equilibrium is compatible with default (no need
to resort to multiple equilibria as in models of
the Diamond-Dybvig type) - Equilibrium is constrained Pareto inefficient
(policy matters!) - Nominal changes affect both prices and quantities
(money is non-neutral) - The Central Bank controls the overall liquidity
of the economy and such liquidity, as well as
endogenous default risk, determines the interest
rates
10Description of the model
- The model has consumers/investors and banks who
maximise utility (subject to a budget constraint
the first - and a capital adequacy constraints
the second) - It extends over two periods and all uncertainty
is resolved in the second period - Trade takes place in both periods in the goods
and equity markets - In the first period, agents also borrow from, or
deposit money with banks, to achieve a preferred
time path of consumption
11Description of the model (continued)
- Banks trade among themselves to smooth out their
individual portfolio positions - The central bank intervenes in the interbank
market to change the money supply and thereby
determines the official interest rate - Capital adequacy requirements (CARs) on banks are
set by a regulator - Penalties on violations of CARs (and on default
of any borrower) are in force in both periods
12The time structure of the model
13Description of the model (continued)
- The Banking Sector it is assumed to operate
under a perfectly competitive environment
14Description of the model (continued)
- The Banking Sector
- Since each bank is different (it has different
risk/return preferences and different initial
capital), there are more than one market for bank
loans and bank deposits - We introduce limited access to consumer credit
markets, with each household assigned to borrow
from a predetermined bank - Therefore, there are different interest rates
across the banking sector
15Simplified model for calibration
- The model has two periods and two possible states
in the second period - i is the good state, which occurs with
probability 0.95, and ii is the bad state (with
probability 0.05) - Agents
- three banks, d, g and t. Banks d is a net lender,
while g and t (aggregate of 5 banks) are net
borrowers in the interbank market - Households/investors a, b, q, f. Their behaviour
is modelled via reduced-form equations - Central bank/Regulator
- Markets commodity, loans, deposits, interbank
-
16Banks optimisation problem (1)
subject to
17Banks optimisation problem (2)
18Households sector
- Loan demand for each bank is a function of
expected GDP and the banks lending rate - Mr f supply of deposits is a function of expected
GDP and each banks deposit rate relative to all
other banks deposit rates, adjusted for their
expected default rates
19- Households loan repayment rates are a function
of expected GDP, and the total aggregate credit
supply - Finally, GDP is a function of total aggregate
credit supply
20Market clearing conditions
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22Financial Stability with reduced-form household
sector
- Financial fragility is characterised by reduced
- bank profitability and increased aggregate
default - An increase in both banking sector vulnerability
and aggregate default (lower repayment rates) are
linked to GDP
23Comparative statics analysis
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25Comparative statics analysis
26Transmission mechanism (table 1)
M implies inter-bank rate r
increases Bank d is willing to invest more in
the inter-bank market ds deposit and
lending rates increase Banks g and t
reduce inter-bank borrowing, increase deposit
demand and reduce household lending Less
credit availability induces more household
default To maintain profitability, banks adopt
riskier investment strategies
27Comparative statics analysis (no CARs)
28Do capital requirements affect the transmission
of a negative shock to a banks capital?
- Banks have no incentive to raise their capital
holdings and therefore to raise their
profitability - As a result, banks repayment rates are higher
(equivalently, default rates are lower) - Less credit by the distressed bank to households
- Lower GDP
29Financial fragility with and without CARs
30Financial fragility with and without CARs
- When an effective CAR is introduced, a bank
chooses higher profitability, which it can only
achieve by taking on more risk and/or raising
interest rate spreads -
- In turn, such higher interest rates, charged to
borrowers, will cause them to borrow less, which
reduces GDP in our model, and to take on riskier
investment (i.e. to plan to default more often)
31Financial fragility with and without CARs
- The benefit to financial stability of safer
banks will be offset, to some extent, by both
banks and bank borrowers selecting riskier
portfolios, higher interest rates and lower
output - However, CARs might still be a net benefit,
depending on the likelihood of bank contagion,
the probability of future shocks, etc. - In practice, this adverse side-effect can be
mitigated by relating CARs more closely to the
relative riskiness of assets (as in Basel II) or
by limiting the allowable rise in interest rates
(Hellman et al.)
32Empirical analysis
- We analyse the relationship between a small
number of macroeconomic variables and the
probability of default and the banking sector
equity index of seven industrialised countries
(reduced-form country-level VARs and panel-VAR) - Initially tried data from bank accounts, e.g.
profits, NPLs, write-off, etc but did not work
well - - accounting inconsistencies, both between
countries and over time - - manipulation and smoothing
- - long lags in reporting, especially write-offs
33Empirical analysis
- So we turned to market variables equity values
(as a proxy for profits) and PDs, with the latter
taken from the IMF - Note that estimates of PDs incorporate equity
valuation. So why is it not a sufficient
statistic in itself? - Correlation between the change in equity values
and estimated PD is only -0.32 on a quarterly
basis
34Empirical analysis
- Our procedure was to examine relationships
between GDP, our measure of social welfare,
inflation, PD of banking sector and equity values
of banking sector - Initial exercises indicated that both PD and
percentage changes in equity values were
threshold variables they only adversely affected
GDP if worse than some level - Threshold level chosen to maximise fit
35Empirical analysis
- Our procedure was to examine relationships
between GDP, our measure of social welfare,
inflation, PD of banking sector and equity values
of banking sector - Initial exercises indicated that both PD and
percentage changes in equity values were
threshold variables they only adversely affected
GDP if worse than some level - Threshold level chosen to maximise fit
36Data
- Data set includes Finland, Germany, Japan,
Korea, Norway, Sweden and UK over period 1990Q4
2004Q4 - PD transformation of the distance to default
indicator used by the IMF to gauge banking sector
soundness (confidential data) - Macroeconomic variables from IFS and OECD
database - Residential property prices from the BIS
- Equity data from Bloomberg
37Results
- Surprisingly good for Panel
- Supportive, but not totally so, for individual
countries - PDs have mcuh stronger influence on GDP than
equity values - When property prices are included, the effect of
equity values becomes less important
38Impulse response functions (PD, GDP, Equity,
Inflation)
39Impulse response functions (PD, GDP, Equity,
Inflation, Property Prices)
40Variance decomposition
41Variance decomposition
42 Can we get a single metric, comparable over time
and across countries for financial
stability? Yes, conditional on- (i) methods
(transformation, etc.) used to estimate
PD (ii) estimation of relative weights of PD and
Eq from empirical exercises What does it look
like in our case? Note that PD much stronger
influence on GDP than Eq, (as might have been
expected), so what determines PD? Further,
separate work by Goodhart, Hofmann and Segoviano,
Default, Credit Growth and Asset Prices, IMF
(2005/6).
43Welfare effects of POD and Bank equity I. Sweden
44II. Korea
45III. UK
46Welfare indexes of financial fragility
47Concluding remarks
- We have proposed a model-based definition of
financial fragility - We have run comparative statics exercises to
identify shocks that induce financial fragility
(with and without CARs for banks) - We have investigated whether data support our
claim that banking sector distress (lower
profitability and higher default) induces welfare
losses (proxied by GDP) - Next steps
48Concluding remarks
- We have proposed a model-based definition of
financial fragility - We have run comparative statics exercises to
identify shocks that induce financial fragility
(with and without CARs for banks) - We have investigated whether data support our
claim that banking sector distress (lower
profitability and higher default) induces welfare
losses (proxied by GDP) - Next steps