Risk Management
Risk Management
Risk Management
Fichier Détails
Cartes-fiches | 87 |
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Langue | English |
Catégorie | Finances |
Niveau | Université |
Crée / Actualisé | 31.05.2022 / 06.06.2022 |
Lien de web |
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Credit Default Correlation
Default Correlation
A credit portfolio is nothing but a collection of m credit-risky assets
We assume to have two entities (individuals, companies, sovereigns) X and Y
p(x) and p(y) are the probabilities of default for x and y resp.
p(xy) is the joint probability of default
In a two-state model, every party has two future scenarios (condition at the end of a period):
Party defaults (p(x) = 1)
Party survives (p(x) = 0)
(for the time being we neglect the possibility of a rating change, i.e. neglect the migration risk)
In a two-state model a binomial correlation approach is most natural
Default correlation measures the likelihood that two or more assets will default together
Credit Value at Risk
Credit risk Value at Risk (credit VaR) is the credit risk loss over a certain time period that will not be exceeded with a certain confidence level
A one year credit VaR with a 99.9% confidence is the loss level that we are 99.9% confident will not be exceeded over one year
Banks determine both regulatory and economic capital using credit VaR
Some credit VaR models (credit risk models) consider only losses from default, others consider
losses from downgrades as well as from defaults.
A key aspect in any credit VaR model is credit correlation
The relationship between default rates and economic factors is a major reason for credit correlation.
Credit Metrics
CreditMetrics was proposed by J.P. Morgan in 1997, spun-off and acquired by MSCI in 2010
Model bases on the rating transition matrix
Ratings can be the internal ratings of the bank or public agency ratings
Other than Vasicek and CreditRisk+ that only assess losses arising from defaults, CreditMetrics takes downgrades and defaults into account
With a Monte Carlo Simulation the probability distribution of total credit losses (default and downgrade) is determined which allows a calculation of the credit VaR of the portfolio
If counterparty defaults before end-of-year the credit loss is EAD x LGD
If counterparty does not default before end-of-year the credit loss is calculated by valuing all
transactions with the counterparty at end-of-year point
CreditMetrics is a bottom up approach
Using credit ratings and the likelihood of a rating migration to calculate standard deviation of the value of a credit product (individual product)
Building a portfolio value taking into consideration
- correlation and
- exposure
Typical process to calculate the value of a credit product
One-year transition matrix
Specify the horizon
Specify forward-pricing model
Specify forward distribution of a bond change
Merton Model
Merton’s model regards the equity of a company as a call option on the assets of the firm
In a simple situation the equity value is max (A- DT, 0)
where A is the value of the firm (asset value) and DT is the debt repayment required.
At maturity of the debt, the owners of the company will
− pay back the debt (and acquire the assets) if the value of the assets is greater than the value of debt.
− leave the company to the lender and “walk away” if the value of the assets is less than the value of debt.
Moody's KMV
Merton and Black-Scholes research provided the basic concepts, to use the share price of a company to derive its default probability
When the market value of a firm’s assets drop below a certain level, it will default
KMV (now Moody’s Analytics) developed a user-friendly product called EDFTM– Expected
Default Frequency – which was dominant in the early 90s.
The main advantage is that the default probability is calculated regularly, monthly in the past, and now daily
Using Black-Sholes option pricing formula, Moody’s Analytics deducts the market value of assets and its volatility for a given time horizon
According to the Moody’s Analytics EDFTM model, a firm defaults when the market value of its assets falls below its liabilities
− The main advantage of Moody's Analytics EDFTM is that it creates a link between the equity and credit markets. It provides daily default probabilities, taking into account latest news.
− However:
Somewhat of a black box
Can lead to volatile results if equity price is volatile
The model uses the book value of liabilities, which is not updated regularly, especially in most
European and Asian countries
− EDFsTM became less relevant for the largest corporates with the development of CDS and price discoverability.
CreditRisk+
CreditRisk+ was proposed by Credit Suisse Financial Products in 1997 as a methodology for calculating VaR
Actuarian Model, using analytical approximation well established in the insurance industry – roots in mortality models
CreditRisk+ makes tWo important assumptions
The probability of default for a loan in a given period is the same in any other period
For a large number of obligors, the PD by any particular obligor is small, and the number of
defaults in a given period is independent of the number of defaults in another period
=> Under these assumptions the probability distribution for the number of defaults is well
represented by a Poisson distribution
Obligors are divided into bands (sub-portfolios) whereas all obligors in a band have approx. the same exposure
The distribution of defaults over all bands is consolidated from the distribution of defaults of the different bands
Advantages
Relatively easy to implement
An explicit function can be derived for the probability of portfolio bond or loan losses
Marginal risk contribution by an obligor can be computed
Focusing on defaults means it only needs relatively few estimates and inputs (PD and LGD statistics for every instrument are sufficient)
Disadvantages
Not sensitive to potential future changes of the credit quality (main difference to CreditMetrics)
Credit exposure in the portfolio are taken to be constant and independent of any other factors (ref linkage of credit exposure to default probabilities)
Kamakura Risk Information Services
Kamakura Risk Information Services (KRIS) is based on a reduced-form model
Reduced-form models produce explicit formulas for the value of risky debt and credit
derivative products
Depend principally on credit market spreads
Other used input factors can be equity prices or balance sheet information
KRIS can be applied to the construction of default models for all types of borrowers: retail, small businesses, large unlisted, municipal, sovereign
Logistical regression formula that predicts the default hazard rate – i.e., the probability of default for a given time, provided the firm has survived until then
The reduced-form approach has been better able to predict U.S. corporate defaults than other approaches
Credit Default Swap (CDS)
Creditdefaultswapsarethemostcommonformofcreditderivatives
It is a legal contract which transfers the credit risk of a reference entity from one party
(protection buyer) to another party (protection seller)
The reference entity can be a corporate, a country, sovereign, or an asset-backed security
The market has exploded since its creation in the mid 90’s
Valuation of CDS
− Life time of CDS: 5 years
− Hazard Rate of reference entity: 2% (unchanged throughout life of CDS)
(probability to survive to time t: e^(-Hazard Rate)*t)− Recovery Rate: 40%
− Risk Free Rate:5%
− Notional amount: 1'000
− CDS premium is paid at year end, defaults are expected to happen in the middle of a year
Credit Linked Notes (CLN)
A Credit Linked Note (CLN) is a structured security combining a regular bond and a credit derivative
A CLN is also called a synthetic corporate bond
In a CLN the protection buyer transfers credit risk to an investor via an intermediary
bond-issuing entity
This issuer can be the protection buyer itself or an SPV
Other than with a CDS the notional amount is already paid in at issuance of the CLN and invested in risk free securities
The CLN is paid back to the investor at maturity in case of no credit event
In case of a credit event the CLN is exercised: Investor receives the notional amount
after subtraction of compensation payment
Definition Market Risk
Definition Market Risk (Basel Committee for Banking Supervision, 2006) „Market risk can be defined as the risk of losses in on and off- balance sheet positions arising from adverse movements in market prices.“¨
From a regulatory perspective, market risk stems from all the positions included in banks' trading book as well as from commodity and foreign exchange risk positions in the whole balance sheet.
Market Risk can be regarded as systematic risk or non-diversifiable risk as opposed to specific risk, i.e. the idiosyncratic risk of a single asset (see also: CAPM)
Challenges in Market Risk Management
Decision on the desired risk profile
Allocation (delegation) of responsibilites
Complete, timely and precise identification of positions (!)
Correct Valuation and Profit/Loss Determination (P+L) (!)
Speed and number of Transactions
Complexity of Positions (!)
Netting (!)
Leverage (!)
Risk vs. Uncertainty
Method vs. «common sense»; Science or Art?
Cultural Challenge («Trader Culture»?)
Reaction to Risk Signals: Corrective action
Practicability of intended action: Market Liquidity
Market Risk Apoproaches to Value at Risk
Estimation of that value (Value at risk) with
a) Historical Simulation („non-parametric procedures“)
b) Monte-Carlo Simulation ((semi-)parametric procedure)
c) Parametric Procedures (simplestcase:Delta-Normal-Method)
Note: The VaR is a widely used risk measure, but neither the only one nor the one best rooted in theory.
Expected shortfall definition
The expected shortfall (ES) measures the loss one has to expect (> risk capital) in case losses exceed the loss level defined by the confidence level. ES is a „Coherent Risk Measure“.
The Expected Shortfall (ES) is equal to the expected value of the losses > risk capital. Technically speaking, the residual distribution is assumed to represent 100% of such losses (i.e. the area below the curve (starting from risk capital) = 1).
Expected shortfall (ES) measures the “average” loss of all the losses exceeding the risk capital threshold (determined by the confidence level).
Risk capital definition
Risk capital is equal to the potential loss during a defined time period that is not exceeded with a defined probability.*