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MGT 821/ECON 873 Volatility Smiles

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Title: MGT 821/ECON 873 Volatility Smiles


1
MGT 821/ECON 873Volatility Smiles
Extension of Models
2
What is a Volatility Smile?
  • It is the relationship between implied volatility
    and strike price for options with a certain
    maturity
  • The volatility smile for European call options
    should be exactly the same as that for European
    put options
  • The same is at least approximately true for
    American options

3
Why the Volatility Smile is the Same for Calls
and Put
  • Put-call parity p S0e-qT c Ker T holds for
    market prices (pmkt and cmkt) and for
    Black-Scholes prices (pbs and cbs)
  • It follows that pmkt-pbscmkt-cbs
  • When pbspmkt, it must be true that cbscmkt
  • It follows that the implied volatility calculated
    from a European call option should be the same as
    that calculated from a European put option when
    both have the same strike price and maturity

4
The Volatility Smile for Foreign Currency Options
5
Implied Distribution for Foreign Currency Options
  • Both tails are heavier than the lognormal
    distribution
  • It is also more peaked than the lognormal
    distribution

6
The Volatility Smile for Equity Options
Implied
Volatility
Strike
Price
7
Implied Distribution for Equity Options
  • The left tail is heavier and the right tail is
    less heavy than the lognormal distribution

8
Other Volatility Smiles?
  • What is the volatility smile if
  • True distribution has a less heavy left tail and
    heavier right tail
  • True distribution has both a less heavy left tail
    and a less heavy right tail

9
Ways of Characterizing the Volatility Smiles
  • Plot implied volatility against K/S0 (The
    volatility smile is then more stable)
  • Plot implied volatility against K/F0 (Traders
    usually define an option as at-the-money when K
    equals the forward price, F0, not when it equals
    the spot price S0)
  • Plot implied volatility against delta of the
    option (This approach allows the volatility smile
    to be applied to some non-standard options.
    At-the money is defined as a call with a delta of
    0.5 or a put with a delta of -0.5. These are
    referred to as 50-delta options)

10
Possible Causes of Volatility Smile
  • Asset price exhibits jumps rather than continuous
    changes
  • Volatility for asset price is stochastic
  • In the case of an exchange rate volatility is not
    heavily correlated with the exchange rate. The
    effect of a stochastic volatility is to create a
    symmetrical smile
  • In the case of equities volatility is negatively
    related to stock prices because of the impact of
    leverage. This is consistent with the skew that
    is observed in practice

11
Volatility Term Structure
  • In addition to calculating a volatility smile,
    traders also calculate a volatility term
    structure
  • This shows the variation of implied volatility
    with the time to maturity of the option

12
Volatility Term Structure
  • The volatility term structure tends to be
    downward sloping when volatility is high and
    upward sloping when it is low

13
Example of a Volatility Surface
14
Greek Letters
  • If the Black-Scholes price, cBS is expressed as a
    function of the stock price, S, and the implied
    volatility, simp, the delta of a call is
  • Is the delta higher or lower than

15
Three Alternatives to Geometric Brownian Motion
  • Constant elasticity of variance (CEV)
  • Mixed Jump diffusion
  • Variance Gamma

16
CEV Model
  • When a 1 the model is Black-Scholes
  • When a gt 1 volatility rises as stock price rises
  • When a lt 1 volatility falls as stock price rises
  • European option can be value analytically in
    terms of the cumulative non-central chi square
    distribution

17
CEV Models Implied Volatilities
K
18
Mixed Jump Diffusion
  • Merton produced a pricing formula when the asset
    price follows a diffusion process overlaid with
    random jumps
  • dp is the random jump
  • k is the expected size of the jump
  • l dt is the probability that a jump occurs in the
    next interval of length dt


19
Jumps and the Smile
  • Jumps have a big effect on the implied volatility
    of short term options
  • They have a much smaller effect on the implied
    volatility of long term options

20
The Variance-Gamma Model
  • Define g as change over time T in a variable that
    follows a gamma process. This is a process where
    small jumps occur frequently and there are
    occasional large jumps
  • Conditional on g, ln ST is normal. Its variance
    proportional to g
  • There are 3 parameters
  • v, the variance rate of the gamma process
  • s2, the average variance rate of ln S per unit
    time
  • q, a parameter defining skewness

21
Understanding the Variance-Gamma Model
  • g defines the rate at which information arrives
    during time T (g is sometimes referred to as
    measuring economic time)
  • If g is large the change in ln S has a relatively
    large mean and variance
  • If g is small relatively little information
    arrives and the change in ln S has a relatively
    small mean and variance

22
Time Varying Volatility
  • Suppose the volatility is s1 for the first year
    and s2 for the second and third
  • Total accumulated variance at the end of three
    years is s12 2s22
  • The 3-year average volatility is

23
Stochastic Volatility Models
  • When V and S are uncorrelated a European option
    price is the Black-Scholes price integrated over
    the distribution of the average variance

24
Stochastic Volatility Models continued
  • When V and S are negatively correlated we obtain
    a downward sloping volatility skew similar to
    that observed in the market for equities
  • When V and S are positively correlated the skew
    is upward sloping. (This pattern is sometimes
    observed for commodities)

25
The IVF Model
26
The Volatility Function
  • The volatility function that leads to the
    model matching all European option prices is

27
Strengths and Weaknesses of the IVF Model
  • The model matches the probability distribution of
    asset prices assumed by the market at each future
    time
  • The models does not necessarily get the joint
    probability distribution of asset prices at two
    or more times correct
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