Title: Risk Management in the Emerging Context Sunando Roy
1 Risk
Management in the Emerging ContextSunando Roy
2 Overview
- What is risk?
- What can we expect from a Risk Manager?
- The Key Ingredients of a Risk Manager.
- Knowledge of Macroeconomy
- Understanding of Financial Markets, Institutions
and Instruments - KRIs
- Regulatory Environment
- Techniques
3Risk
- Robert Frost Two roads diverged in a wood, and
I... I took the one less traveled by, and that
has made all the difference. - Vaclav Havel Vision is not enough, it must be
combined with venture. It is not enough to stare
up the steps, we must step up the stairs.
4Managing Risk
- "Risk comes from not knowing what you're
doing." -- Warren Buffett - "When you are in any contest, you should work as
if there were--to the very last minute--a chance
to lose it. This is battle, this is politics,
this is anything." -- Dwight D. Eisenhower - The process of identifying, assessing, and
controlling, risks arising from operational
factors and making decisions that balance risk
cost with mission benefits
5Role of A Risk Manager
- Identification
- Measurement
- Reporting
- Strategy
- Revisiting Risks are not time invariant
6What a Risk Manager Should Know
- Macro Economic Situation
- Financial Markets, Institutions and Instruments
- Key Risk indicators
- Regulatory Environment
- Technique
7The Risk Management Story so far
8 International Initiatives in Managing Risks
- Till the 1980s, a professional risk manager was
unheard of - Late 1980s, US Financial Firms started using VaR
- Basel I 1988
- 415 spreadsheet of JP Morgan
- Riskmetrics,1995
- BIS - a series of risk management guidelines for
Banks worldwide - Market Risk Guidelines of Basel, 1996
- Basel II process ( November 2005 Document)
- .
9 India Changing Financial landscape
- Easing of Financial Repression
- Move towards market determined system since
1992. - New Financial instruments (Floating Rate
Bonds,Bonds with Call and Put, STRIPS) - PD System ,1996
- With the development of G-Sec market, financial
institution participation increased in bond
markets, exposing them to risks - Liquidity Adjustment Facility, 2001
- Risk management becoming relevant in the present
context
10- Types of risk
- Market risk
- Credit risk
- Operational risk
- Liquidity Risk
- Settlement Risks
- Other Risks ( Legal Risk, Reputational Risk,
Political Risk, Catastrophic Risk))
11I. Macro Picture
12Risks in Indian Economy.Macro Risks.
- Macroeconomic risks in India
- Positive Factors
- Robust growth Performance
- Strong Balance of Payments
- Inflation under control
- Public Sector Performance shows marginal
improvement. - Negative Factors
- Oil Prices hardening a matter of concern
- Asset Prices
- Agricultural Performance Subdued, concerns on
wheat stocks - Poverty and unemployment, inclusive policies
13II. Financial Markets, Institutions, Instruments
14Financial Sector Risks
- Emanates from the activities in the financial
sector, such as trading, lending, other
operations, policies - Markets and Linkages
- Institutions
- Instruments
15III. KRIs
- To understand the financial sector risks, let us
look at the banking sector performance and its
key risk indicators,
16 17CRAR declined. Tier I capital rose, Tier II
capital fell, RWAs showed substantial increase
18CRAR- Bank Group s
19 Asset Quality
20NPA Ratios continued their declining trend
21Exposure to Capital Markets increased..
22Exposure to Commercial Real Estate increased..
23OBS Exposures.
24 25Marginal Decline in ROA
26Cost Income Ratio is stable
27IV. Regulatory Environment
28Risk Management Guidelines in India
- ALM Guidelines, February,1999
- Operating Guidelines on Risk Management , October
7, 1999 covering broad contours for management of
credit, liquidity, interest rate, foreign
exchange and operational risks. - December 2000 Capital Adequacy Guidelines for
Primary Dealers covering Credit and Market Risk - On September 20, 2001, two Working Groups were
constituted in Reserve Bank of India drawing
experts from select banks and FIs for preparing
detailed Guidance Notes on Credit Risk and Market
Risk management by banks. - identified further steps to be taken by banks for
Improving their existing risk management
framework, suiting to Indian conditions
29Risk Regulation in India
- 2005 Detailed capital adequacy guidelines for
Banks to move towards Basel II, 2007- final
guidelines - 2006 April 17, the ALM framework of 1999
updated. - 2007- Pillar II guidelines expected
30V. Technique
31Risk Measurement A primer
- Several methods of measuring Market risk
- Most popular Method VaR ( Value at Risk) A
dynamic Method - Alternatively, one may also adopt duration based
approaches static in nature - Well look at value at risk models
- To give a flavour of what risk managers do
32VaR
- VaR is defined as the maximum possible loss for a
given position or portfolio within a known
confidence interval over a specific time horizon,
in a normal everyday market
33VaR Inputs
- VAR Estimation Period - The time over which
P/L is estimated. - Confidence Level - The frequency which actual
losses VAR Inputs - Position Size - The size of the instruments
contained in the - portfolio.
- Risk Factors
- Volatility - The magnitude of the underlying risk
factor changes. - Correlation - Degree to which changes in
different risk factors move together.
34Volatility Measures
- Volatility information is a measure of how much
prices and interest rates can be expected to
change over time. - Standard Deviation
- Simple Moving Average
- Exponential weighted moving average
- GARCH
35VaR methodologies
- Parametric or Variance Covariance
- Historical Simulation
- Monte Carlo Simulation
- Other Models
36Historical Simulation
- The Historic Simulation Full Revaluation approach
calculates PL by revaluing the portfolio given
historic movements in prices/yields. - Have the price levels on each of the days for
the past one year for all the risk factors. - Calculate the daily percentage changes these
many scenarios - Calculate the portfolio value as of today
- Apply each of the percentage changes to get the
expected value of the portfolio as of tomorrow. - Sort the absolute value changes and determine
the cutoff value at the lowest 1 percentile.
37Historical Simulation
38Monte Carlo Simulation
Monte Carlo Simulation generates numerous random
market scenarios using predetermined parameters
for price volatility and correlation and
calculates the PL for each scenario.
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40Limitations
- Statistical orientation and assumptions
- Quality of data is of primary importance
- Doesnt capture event risk
- Thats why the need to supplement with Stress
Tests
41Stress Tests
Stress tests are designed to estimate potential
economic losses in abnormal markets.
42Stress Tests
Stress tests can be framed around two central
questions 1. How much could I lose if a stress
scenario occurs, for example the Equity market
crashes? 2. What event could cause me to lose
more than a pre-defined threshold amount, for
example Rs. 10 crore? Good stress tests
should be relevant to current positions,
consider changes in all relevant market rates,
examine potential regime shifts, consider
market illiquidity.
43VI. Risk Management in Emerging Markets
44The First ConcernStructural Breaks in
Data
45Chow Breakpoint Test March 2001
46The Second Concern Fat Tails
47 Tail Behaviour in Indian Debt Market
48 Skewness Kurtosis
49Tests of Tail Behaviour
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51Variance-Covariance Model Standard Form
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54GARCH (1,1)
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57Volatility Clustering and Higher Order GARCH
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60Comparison of Alternative Models through
Backtesting
- Kupiecs POF-Test (Proportion of Failures)
- The Kupiec- test is also known as the
Likelihood-Ratio-Test. The null hypothesis for
these tests is, that the empirically determined
probability matches the given probability.to
check for this assumption. The corresponding
LR-statistic is defined as - LRuc -2ln(1-p)T-N pN 2 ln 1-(N/T)T-N
(N/T)N - It is asymptotically ?2 distributed with one
degree of freedom. If the value of the - LR-statistic exceeds the critical value of 3.84
at the 95-quantile of the c2-distribution,the
model performs well.
61Table Model Comparison through Backtesting
2001-2004
62Be careful about..
- Existence of fat tails in all segments (time
buckets) of the Indian debt market. Can lead to
misspecification of risks in Value at Risk
models. - The presence of significant structural break in
the Indian debt market volatility since 2001.
Reason LAF, Higher Turnover, Improved
Settlement Practices. - It is observed that both the unconditional
parametric VaR model and the GARCH ( 1,1) model
may lead to serious errors in estimation of risk
in the Indian context. A higher order model of
GARCH ( 6,1) led to much improved assessment of
risk in Indian Government securities market. -
63- The Third Concern
- Liquidity Risk
64 The Problem
- Debt market in India is characterised by pockets
of illiquidity, even though depth has increased
and secondary market transactions have gone up. - In the face of sudden and persisting off-market
prices of some of the securities in their
portfolio, the Indian financial organizations
often found it difficult to offload these
securities without booking significant trading
losses. - Market illiquidity have not been effectively
incorporated into the Value-at-Risk (VaR) models. - Measures of market risk fail to capture the costs
of carrying illiquid assets in their portfolio.
65How to Capture?
- In this context, the paper looks examines the
models of capturing liquidity risk. - Using data on Indian Government securities
market, the paper tries to provide an L-VAR model
that incorporates liquidity risk in Value at Risk
models. - The paper tests the performance of L-VAR model
vis-à-vis existing VAR models. - The paper observes that in the Indian context,
the liquidity risk is an important component of
the aggregate risks borne by the financial
institutions.
66Theoretical Backdrop
- Ad-hoc Approach (Lengthening Time Horizon)
- VaR turns out to be insufficient because the
period used for its calculation does not allow
for an orderly liquidation. - Lengthening of the holding period ensures an
orderly liquidation. The increase of the VaR
number following the extension of the holding
period can therefore be directly linked to the
risk of liquidity. - Optimal Liquidation Approach/ Transaction Cost
Approach - Lawrence and Robinson (1995), Bertsimas and Lo
(1998), Almgren and Chriss (1998) - They consider the trade-off of incurring a
transaction cost by selling quickly vis-à-vis the
exposure cost of holding on to the asset over a
longer period.
67Theoretical Backdrop
- Liquidation Discount Approach
- Within the VaR framework, Jarrow and Subramanian
1997 provide a market impact model of
liquidity. - The model of Jarrow and Subramanian is
intuitively appealing but difficult to implement
in practice as model derivation requires
additional parameters for estimating Execution
Lag Function. - Exogenous Liquidity Approach
- Bangia, Diebold, Schuermann and Stroughair
1999 provide a model of VaR adjusted for what
they call exogenous liquidity defined as common
to all market players and unaffected by the
actions of any one participant. - Bangia, Diebold, Schuermann and Stroughair (1999)
argue that the deviation of this liquidation
price from the mid-price are important components
to model in order to capture the overall risk and
derive an additive correction to a Gaussian
single-asset VaR by computing the exogenous cost
of liquidity.
68Methodology of the Study
- The return equation can be written as
- Rt ln(Pt)- ln (Pt-1)
..(1) - Standard Parametric Value at Risk ( VaR) can be
estimated as - VaR Pt 1-e (-2.33 st)
..(2) - The Conditional Volatility equation is based on
the Generalized Autoregressive Conditional
Heteroscedasticity model ( GARCH (1,1)
represented by equations (3) and (4) below - Yt Xt/ ? ?t
..(3) - s t 2 ? a ?t-1 2 ß s t-1 2
..(4) - where ? is the constant term, ?t-1 2 captures
the news of volatility from previous period with
the help of lagged squared residual of mean
equation and s t-1 2 is the last periods
forecast variance.
69Liquidity Risk in VAR models
- The liquidity Risk equation takes the following
form - COL ½ Pt (S ass) .(5)
- Where
- Pt mid-price of the asset
- S average relative spread, where relative spread
is defined as (ask-bid)/mid. Relative spread
acts as a normalizing devise among spreads. - a is a scale factor to get 99 percent coverage.
- The Liquidity Adjusted Value at Risk Measure thus
is - LVAR Pt 1-e (-2.33 ? st) ½ Pt (S ass)
..(6)
70Table 2 Share in Outright Transactions of
Selected Securities 2003-04
71Table 7 Liquidity Risk in Indian Debt Market
end March 2004
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73The Fourth Concern
- Interpreting Macro Data in the event of Shocks
- Ability to differentiate between short term and
long term trends - Episodic Evidence and scenario analysis may help
risk managers in Indian Financial market. (
Example below)
74Challenges to Risk modeling
- There are several risk models to tackle various
kinds of risks - There has been huge advances in the risk modeling
literature - Indian financial sector is trying to adopt best
practices in risk modeling - Commitment to Basel II
75Need to bridge the Gap
- There is a lot of academic research
- Only a fragment used by practitioners
- There is a clear need to enhance risk management
knowledge in the country - More interaction among risk managers a must
- Seminars, Workshops
76Role of PRMIA
- Seminars Basel II Masterclass
- Conferences India Risk Summit
- Networking, Discussions
- Online Search Engine Rose
- Free One day Workshops on Risk Management
- Collaborations with Institutions Worldwide
- More than 42,000 members.
77 Thank You