Risk Management - PowerPoint PPT Presentation

1 / 61
About This Presentation
Title:

Risk Management

Description:

Risk (in finance) is interpreted as the statistical (mathematical) possibility ... Kurtosis (describes the degree of flatness of a distribution) ... – PowerPoint PPT presentation

Number of Views:66
Avg rating:3.0/5.0
Slides: 62
Provided by: alansimon
Category:

less

Transcript and Presenter's Notes

Title: Risk Management


1
Risk Management
  • Andre Horovitz

2
What is Risk?
  • Risk (in finance) is interpreted as the
    statistical (mathematical) possibility of
    incurring unforeseen financial losses, above and
    beyond expected, as changes occur in the
    environment (economy, etc.) which affect the
    value of ones assets (also known as investment
    at risk)

3
Risk Management - Definition
  • Risk management is the profession (meanwhile an
    entire industry) which deals with the estimation
    (quantification) of risk and employs techniques
    to mitigate or limit excessive risks

4
Types of risks (example)...
  • Market Risk - risks attained from adverse changes
    in market parameters such as interest rates,
    foreign exchange rates, equity prices or indexes,
    commodities, etc.
  • Credit Risk - risks attained from the failure of
    counterparties to respect their contractual
    obligations (loan losses, settlements, issuer
    defaults, bankruptcies, etc.)

5
Types of risks (contd)
  • Business risks - risks attained from unforeseen
    environmental changes (ex. Competitive forces)
    causing an economic entitys drop in earnings
    beyond a forecasted trend
  • Operational risks - risks relating to unforeseen
    failures such as fraudulent activities, systems
    failures (IT, technology), natural phenomena
    (catastrophes) or unexpected changes in legal /
    regulatory environments

6
The Risk Management Industry / Profession
  • Risk management risk control units in banks,
    insurance/ re-insurance companies, other
    financial or non financial enterprises
  • IT departments in charge of providing
    (maintaining) IT systems geared to support risk
    professionals
  • Research departments or firms in charge of
    developing/ refining analytical tools to quantify
    risks
  • Software providers, business consultants

7
Lessons learned from recent financial disasters
  • Losses attributed to Derivatives (1993 through
    1999)

8
Case study 1 Barings
  • Nick Leeson (28) lost 1.3 bn in Index Futures
    trading on the Osaka Exchange
  • Ran front back office at the same time
  • Accumulated 20,000 contracts each worth 200,000
    - approx 20 of the volume
  • Big money attracts attention
  • YMIS (Young Male Imortality Syndrom)

9
Case Study 2 Metallgesellschaft
  • Idea long term oil delivery contracts (180mm
    barrels over 10 years) - equiv. To Kuwaits oil
    production over 85 days
  • Rolling hedge with oil futures (3 months
    maturity)
  • Basis risk
  • Mark to market (margin calls)- lifes a path
    dependent function

10
Case Study 3 Orange County
  • 7.5 bn portfolio of public money
  • Borrowed 12.5 bn through reverse repos
  • Invested in avg. Life 4 years agency bonds /
    notes - refinanced over short term (LIBOR)
  • Exposure to yield curve steepness
  • Default overmargin calls from short term
    financiers and collateral payments
  • No mark to market accounting since held to
    maturity

11
What to expect from this course?
  • Risk view from a practitioners perspective
  • Familiarity with the market jargon (instruments,
    conventions, methods, systems, players, etc.)
  • Merits and pitfalls of applying math in measuring
    risk
  • The story of the birth and evolution of the risk
    profession from an eyewitness

12
Fixed Income Fundamentals
Q Prof. Einstein what was in your opinion the
greatest discovery of mankind to date?
A Undoubtedely its been Compound Interest
13
Yield Compounding Conventions
  • Yield Internal rate of return
  • Typically not a very good measure of return
  • Assumes reinvestment prevailing at the same rate
    rarely if ever the case
  • finagled in finance by assuming reinvestments
    at the implied forward rates
  • Means that indeed, investors expectations of
    future interest rates are reflected in the IFR
    Curve
  • Constant refinancing spreads over the lifetime of
    the investment
  • Annualized Yield - termed effective annual
    rate (EAR)
  • m1 annual
  • m2 semiannual
  • m12 monthly
  • m365 daily

14
Compounding
  • n nr of periods
  • If n--gt8 - continuous compounding
  • Let (1/n) x and applying LHospital Rule
  • If n--gt8, F ePTR
  • When P1, FeRT
  • FP1(m/n)R simple interest compounding

15
Valuation of a Perpetual Bond (Consol)
  • Used by the British Empire to finance the Spanish
    Wars
  • Used today (albeit in their callable / redeemable
    variants) for Hybrid Tier 1 Funding by Banks in
    Jeopardy of falling under the regulatory Minimum
    Tier 1 Thresholds
  • Please Derive the (FINITE) NPV
  • Hint CF/y

16
Bond Price Sensitivities first order
  • High School Memory (beyond the first kiss!)
  • Taylor Expansion around a (Class n) functions
    initial value
  • Modified Duration D-(dP/dy)/P0
  • P0 represents the Market Price of the Bond at
    time T0 plus accrued interest (dirty price)
  • Dollar (effective) Duration DD-(dP/dy)DP0
  • DVBP (DV01) DD ?y -(dP/dy) x 0.0001
  • MacCauley Duration DMacD(1y)

17
Bond Price Sensitivities second order
  • Dollar Convexity C(d2P/dy2)/P0
  • Calculate the first and second order
    sensitivities of a Zero Coupon Bond with Maturity
    T years

18
Bond Price Sensitivities finite differences
  • Back to Memories from the time of the first kiss
  • Delta Duration
  • Delta Convexity
  • Coupon (Curve) Duration
  • Coupon (Curve) Convexity

19
Economic Interpretation of Duration
Duration is the average time of waiting for each
payment, weighted by the present cash flow
wt is the ratio of the PV of each cash flow Ct
relative to the total and summed to unity
Mac Cauley Duration is the average of time to
wait for all cash flows in investment
bankerese average life of a bond
Back to the perpetuity (consol) Find the Mac
Cauley Duration of a Consol and prove that it is
finite and independent of the consols coupon!
20
Economic Interpretation of Convexity
wt a weightet average life of the square of time

As well see later, convexity can be negative for
bonds with uncertain cash flows (MBS or some
callable issues)
21
Duration as a Function of Coupon and Maturity
22
Duration as a Function of Coupon, Maturity,
Coupon Frequency, Yield
  • Increasing Maturities correspond to higher
    Durations
  • Increased Coupon Values, Yield and Coupon
    Frequencies correspond to lower Durations
  • With very high maturities, Durations converge to
    the Consols (finite) Duration
  • Duration is a Convex Function of Coupon Size
  • Prove!

23
Homework on Duration Curve Shapes
  • Obviously Duration of a Zero Bond increases
    linearly with Maturity
  • Prove analytically that
  • Low coupon bonds (coupon below yield or sub
    par) exhibit a maximum duration at a certain
    maturity
  • Determine that maximum duration maturity
  • And determine that maximum Duration while proving
    that it is above the consols duration
  • then converge to the consols duration (from
    above) while reaching a point of inflexion
  • Determine the Maturity corresponding to the
    inflexion point
  • Explain why this phenomenon is not true for high
    coupon bonds (coupon higher than yield)
  • Prove that the Duration curve is a concave
    function of maturity
  • And that it converges at infinity (from below) to
    the consols duration

24
Portfolio Sensitivities
  • Let
  • PP Portfolio Value
  • DPPortfolio Modified Duration
  • xi number of units of bond i in the portfolio
  • Portfolio Dollar Duration
  • If the weights are all the same (for all
    components) the equation also holds for the Mac
    Cauley Duration
  • Similar relationship for the portfolio Dollar
    Convexity
  • For PP?0, define portfolio weights wixiPi/ PP

25
Portfolio Sensitivities - Homework
  • A portfolio of bonds with very short AND very
    long maturities is called a barbell portfolio
  • A portfolio of bonds with similar maturities is
    called a bullet portfolio
  • Prove that for the same Prortfolio Duration,
    Barbell Portfolios have higher Convexities than
    Bullet Portfolios

26
Shortfalls of Duration and Convexity
  • Most Fixed Income Portfolio Managers gauge their
    Portfolio Risk on Duration Convexity
  • However, these measures - while simple to use in
    practice are not short of weaknesses
  • They represent only first and second order
    sensitivities may be insufficient for portfolios
    with embedded options or highly structured (like
    CDO tranches)
  • Do not reflect sensitivities to spreads or credit
    ratings /default probabilities
  • Represent changes in portfolio values when very
    small, parallel changes in the interest rate term
    structures occur
  • Reality is different most of the time
    especially in those instances when analysts worry
    about high risks

27
Most Common Applications of Parallel Shift
Sensitivities
  • Most BondPortfolio Risk is measured and Limited
    using a VAR measures
  • Duration is widely used for estimating hedge
    ratios for systematic risk hedging (e.g. via
    futures contracts more on this later)
  • Convexity is mainly used to select cheap from
    dear bonds (higher convexity is better, cet.
    par.) in secondary markets
  • Convexity (especially negative convexity) plays a
    pivotal role in MBS investments selection /
    pricing and their structured cousins (IOs POs
    more later)

28
A War Story Salomon Brothers Discovered that
Duration can Mislead August 1985
29
Investor holds Bond B and hedges by shorting
bond D
  • Not apparently a bad choice
  • The two bonds have similar maturities (so low
    yield curve reshaping risk)
  • Similar Durations 8,06 vs 8,45
  • Investor assumes that closeness of durations
    imply similar price volatilities and choses a
    hedge ratio of 1.0
  • Interim Question
  • Suppose the investor wants to hedge bond B with
    bond A (a lower duration bond)
  • Must she use a higher hedge ratio than 1.0 to
    counter the low volatility of bond A as indicated
    by its duration?
  • No because the hedger is interested in Dollar
    Volatility, Not in Percentage Volatility (hedge
    ratio is 0.977)
  • Using the PVBP table we can derive the hedge
    ratio to be
  • (0.062988 / 0.079345) 0.79 (far from 1.0!)
  • Similarly hedging B with A (0.062988/0.064482)0.
    977

30
Hedging as a Function of Absolute Price Volatility
Hedge Ratio depends on Absolute PVBP NOT
NECESSARILLY DURATION!!!
If target security has higher PVBP, then hedge
ratio gt 1, if hedge security, then hedge ratio lt1
31
Break
32
Fundamentals of Probability Theory
  • Univariate Distribution Functions
  • A Distribution Function F(x)P(Xx) (cumulative
    distribution)
  • If R.V. takes DISCRETE values,
  • f(x) is the frequency distribution or
    probability density function
  • If R.V is CONTINUOUS,
  • Whereby the probability density function is

33
An Illustration the Logarithm of Equity Returns
(in theory!)
Cumulative Probability Distribution
Cumulative Probability
34
Moments of a Probability Distribution
  • Expected Value (Mean)
    (central tendency)
  • Quantile (cutoff)
  • There exists a unique probability p1-c / Xx
  • The 50 Quantile is called Median of the
    Distribution
  • In non symmetrical distribution, Median ? Mean
  • The Level of a distribution corresponding with
    the Maximum Density is called Mode
  • Distributions can be multi modal
  • Some Payoffs occurring in complex structured
    credit products exhibit multi modal behavior

35
A First Encounter of Value at Risk
  • VARa the Cutoff / Loss Not To be Exceeded with a
    probability of p a
  • If f(u) is the density function of the Loss
    (function),
  • Then p being the tail end probability
  • VAR can be defined as a quantile, or
  • VAR can be defined as the Deviation between the
    Quantile and the Expected Value
    VAR(c)E(x)-Q(x,c)
  • Note in market risk we often ignore the expected
    value as we assume that for short holding
    periods, the log distribution of returns is
    typically centered at zero mean not so for
    skewed distributions like in default risk or
    operational risk models

36
VAR A Graphical Representation
VARa
Cumulative Probability
37
Higher Moments of Univariate Distributions
  • Variance (Squared dispertion around the Mean)
  • Skewness (describes departure from symmetry)
  • If ?lt0, the distribution has a long left tail
    (suggesting high probability of negative values)
    if ?gt0, long right tail.
  • If we define probable credit losses as positive
    then a typically credit loss distribution would
    be skewed to the right
  • Kurtosis (describes the degree of flatness of a
    distribution)
  • When dgt3, leptokurtotical distribution (fat
    tails)
  • Normal Distribution d3

38
Multivariate Probability Distributions
  • If Financial Assets are functions of several
    variables their performance profile is mostly
    described by use of multivariate distributions
  • The Joint Bi-Variate Distribution
  • The World gets much simpler if the Variables are
    Jointly Independent. This means f(u1,u2)f(u1)
    x f(u2) and F(x1,x2)F(x1) x F(x2)
  • It is often useful to characterize the
    distribution of one variable, abstracting from
    the other
  • Marginal Density Functions
  • Conditional Density Functions (Bayes Rule)
  • Note Division by f1( ) resp f2 ( ) keeps
    integration to 1 of f12 ( )

39
A First Encounter of Copulas
  • If u1 and u2 are independent, the joint density
    is the product of the marginal densities (we have
    seen that earlier)
  • Copulas are functions used to model variable
    dependencies they link marginal distributions to
    joint distributions
  • Formally, a Copula is a function of the marginal
    distribution F(x) some parameter ? (specific
    to the copula function)
  • In the simple, bi-variate case,
    C12C12F1(x1),F2(x2),?
  • Sklars Theorem For Any Joint Density Function,
    there Exists at least One Copula linking it to
    the respective Marginal Distributions
  • F12(x1,x2)F (x1) x F(x2) x C12F1(x1),F2(x2),?
  • Note If x1, x2 are independent, then C12 is
    identical to 1
  • Copulas contain Information on the nature of
    random variable dependencies but NOT on their
    marginal distributions
  • Copulas are used extensively in modeling CDOs

40
Covariance as a Copula Measuring Linear Dependency
Define Cov (x1,x2) s12 for x1, x2 being
normally distributed
Further, define the correlation coefficient
In the normal distribution case,?(x1,x2) fully
describes the dependence structure
The two dimentional Gaussian Copula
Note if x1,x2 are independent ( x1 and x2 are
uncorrelated), then
Cov
fS is the conditional Density Function for a
bivariate Normal Distribution with Mean zero and
Covariance Matrix S, or
For ?0, the Gaussian Copula equals the
independence Copula
41
Functions of Random Variables
  • Linear Transformations
  • E(aXb)aE(X)b
  • V(aXb) a2V(X)
  • SD(aXb)aSD(X)
  • E(X1X2)E(X1)E(X2)
  • V(X1X2)V(X1)V(X2)2Cov(X1,X2)
  • Portfolio of RandomVariables
  • YSwiXiwX

42
Functions of Random Variables (contd)
  • E(X1,X2)E(X1)E(X2)Cov(X1,X2)
  • If Cov(X1,X2)0 (x1 and x2 are independent), then
  • V(X1,X2)E(X1)2V(X2)E (X2)2V(X1)V(X1)V(X2)

43
Distributions of Random Variables
  • PYyPg(X) yPX g-1(y)Fx(g-1(y))
  • F() is the cumulative distribution function of X
  • Lets put some meet around the bone!
  • Consider a Zero Coupon Bond
  • R6
  • T30 Years
  • V17.41
  • Annual Volatility of Yield Changes 0.80
  • Estimate the Probability of the Bonds Value
    falling below 15
  • V100 x (1r)-T r(100/V)1/T-1
  • Associated Yield Level g-1(y)(100/15)1/30-16.5
    28
  • P(V 15)P(r6.528)
  • If we assume that yield changes are normally
    distributed, with a volatility of 0.8 - then
    P25.5

44
The Uniform Distribution
f(x)
1/(b-a)
x
a
b
f(x)1/(b-a), axb E(X)(ab)/2 V(X)(b-a)2/2
45
The Normal Distribution
f(x)
68
-2
-1
0
2
1
x
Fully Specified by 2 Parameters µ and s E(X)µ
V(X)s2
For µ0 and s1 Standard Normal
Skewness0 Kurtosis3
46
The Normal Distribution (contd)
  • Any Normal Distribution (µ?0s?1) can be
    recovered from the Standard Normal (e)
  • By defining X µe s
  • E(X) µE(e) sµ0 s µ
  • V(X)V(e) s21s2s2
  • To find the quantile of X at a given confidence
    level c, replace e by a
  • Q(X,c) µ- a s
  • VAR aE(X)-Q(X,c) µ- (µ-a s) a s
  • Important Property Any Additions or Subtractions
    of Random Variables distributed normally result
    in a normally distributed random variable

47
The Normal Distribution (contd)
  • Weve already encountered the normal distribution
    for two correlated random variables (when we
    illustrated the Gaussian Copula)
  • For N random variables
  • Back to Copulas we can separate into N distinct
    marginal normal distributions a joint Copula
  • For the case of only 2 variables X1 and X2
  • f12(X1,X 2)f1(X1) x f2(X2) x c12F1(X1),F2(X2),?
  • f1,f2 are normal marginal distribution and c12 is
    a normal (gaussian) copula (the one we
    encountered earlier, remember?)
  • The only parameter is the correlation coefficient
    ?12 determining S
  • ?12 defines the strength of the dependency
    between the two variables

48
The Lognormal Distribution
  • The (natural or neperian) logarithm of the
    random variable is distributed normally
  • Used ad nauseam in modeling equity prices since
    due to the limited liability of the company
    structure, equities cant go negative but can
    raise to technically infinity
  • The instantaneous rate of return of equities
    can become negative, but tends to be skewed in
    distribution
  • By taking the natural log (of the instantaneous
    returns) finance professionals came up with a
    more sensible description of markets behavior
    (albeit minding higher experienced kurtotic
    effects, predominantly at the negative tail ends)

49
The Lognormal Distribution (contd)
EYElnXµ VYVlnXs2 If we set
EXexp(r), the mean of the associated normal
variable is EYElnXr- s2/2
s1.2
s0.8
s0.5
50
The Student t Distribution
  • It is widely used in hypotheses testing as it
    describes the distribution of the ratio of the
    estimated coefficient(s) to its standard error(s)
  • Also increasingly used in models where tail end
    probabilities are higher than the ones under
    gaussian distributions has fatter tails than
    the normal distribution (as a marginal
    distribution)
  • The Student t Copula allows for stronger
    dependencies in the tails used to model CDO
    mezzanine tranches where default levels once
    exceeding a certain threshold tend to strengthen
    the correlation assumptions (more on it when we
    describe CDOs)

51
The Student t Distribution (contd)
The Density Function
When k converges to infinity, f(x) converges to
the normal density function Mean0 VXk/(k-2)
kgt2 The kurtosis parameter d 36/(k-4)
kgt4 For equity returns, k is btw 4 and 6
52
The ?2 Distribution
EXk VX2k When k is large, the distribution
converges to the normal distribution N(k,2k)
The F
Distribution
F(a,b)?2(a)/a/ ?2(b)/b ratio of independent
chi squared variables divided by their degrees of
freedom Used extensively in hypotheses testing
and regression analyses
53
The Binomial Distribution
  • Binomial Variable is the result of independent
    Bernoulli Trials
  • Outcome 0 or Outcome1
  • EYp VYp(1-p)
  • Density Function
  • EXpn VXp(1-p)n

54
The Poisson Distribution
  • Used to describe the number of events occurring
    over a fixed period of time, assuming events are
    independent of each other
  • Used in the CreditRisk Model for quantifying
    credit risk capital (a lot on it later)
  • Density Function
  • ?gt0 is the average arrival rate during the period
    (success rate)
  • EX ? VX ?
  • Used for intensity models in credit risk
    (intensity of default)
  • Important Properties
  • when n is very large, the binomial distribution
    converges to a Poisson distribution
  • When the success rate is very small (converges to
    0), the expected value of the binomial
    distribution converges to ? (fixed)
  • For very high values of ?, the Poisson
    Distribution converges to a Normal Distribution
    N(?, ?)
  • Also known as the central limit theorem used in
    Monte Carlo Simulations

55
Limit Distributions - Averages
  • From previous Slide CLT
  • The mean of n IID (independent and identical
    distributed) Variables converges to a normal
    distribution, when n increases
  • True for Any underlying distribution, as long as
    the realizations are INDEPENDENT
  • Same as saying that the Normal Distribution is
    the limiting distribution of the averages
  • Since weve seen (previous slide) that binomial
    variableas are made of sums of independent
    Bernoulli trials,
  • When n?8, by using CLT we can approximate the
    binomial with a normal by setting

56
Limit Distribution -Tails EVT
  • CLT deals with the distributions of means
    (averages)
  • Key EVT (extreme value theory) theorem
  • Limit distributions for the values of a R.V. x,
    beyond a cutoff point ? belongs to the following
    family (GPD)
  • F(y)1-(1-?y) -1/ ? , ??0
  • F(y)1-e-y, ?0
  • Where y(x- ?)/ß, ßgt0
  • Loss defined as positive, such that ygt0
  • ß scale parameter
  • ? shape parameter determines speed at which
    the tail disappears

57
Limit Distribution -Tails EVT (contd)
  • GPT (Generalized Pareto Distribution) because
    it subsumes other distributions as special cases
  • ?0, normal distribution tails disappear at an
    exponential speed
  • ?gt0, fat tails typical for financial data
  • ??0, Gumbel Distribution
  • ?gt0, Fréchet Distribution
  • ?lt0, Weibull Distribution

58
Case Study Multivariate Distributions
  • FX Desk long 70 and 30 reference currency is
    1 Mil.
  • / spot 1,2678
  • / spot 0,8866
  • Joint Density Function of Returns
  • Calculate
  • The Marginal Density Functions
  • The Risk of the Portfolio at a 99 confidence
    level

1,33119
50
1,204411
50
0,97526
45
0,79794
55
59
Case Study The Binomial Distribution
  • Your Bank has written a 4th to default CDS over
    one year on a basket containing 50 names
  • Assume that all default probabilities (over one
    year) are 0,55 and are uncorrelated with each
    other
  • What is the Probability of the Option (assume
    European Feature) being Exercised at the end of
    the year?

60
Solution Case 1
61
Answer Binomial Distribution Case
Write a Comment
User Comments (0)
About PowerShow.com