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Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and Statistics, U of C Colloquium Thursday, March 31, 2005

Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

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Page 1: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

Mean-Reverting Models in

Financial and Energy Markets

Anatoliy SwishchukMathematical and

Computational Finance Laboratory,

Department of Mathematics and Statistics, U of C

ColloquiumThursday, March 31, 2005

Page 2: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

Outline

• Mean-Reverting Models (MRM): Deterministic vs. Stochastic

• MRM in Finance: Variances (Not Asset Prices)• MRM in Energy Markets: Asset Prices• Some Results: Swaps, Swaps with Delay,

Option Pricing Formula (one-factor models)• Drawback of One-Factor Models• Future Work

Page 3: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

Mean-Reversion Effect• Violin (or Guitar) String Analogy: if we pluck the

violin (or guitar) string, the string will revert to its place of equilibrium

• To measure how quickly this reversion back to the equilibrium location would happen we had to pluck the string

• Similarly, the only way to measure mean reversion is when the variances of asset prices in financial markets and asset prices in energy markets get plucked away from their non-event levels and we observe them go back to more or less the levels they started from

Page 4: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

The Mean-Reversion Deterministic Process

Page 5: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

Mean-Reverting Plot (a=4.6,L=2.5)

Page 6: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

Meaning of Mean-Reverting Parameter

• The greater the mean-reverting parameter value, a, the greater is the pull back to the equilibrium level

• For a daily variable change, the change in time, dt, in annualized terms is given by 1/365

• If a=365, the mean reversion would act so quickly as to bring the variable back to its equilibrium within a single day

• The value of 365/a gives us an idea of how quickly the variable takes to get back to the equilibrium-in days

Page 7: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

Mean-Reversion Stochastic Process

Page 8: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

Mean-Reverting Models in Financial Markets

• Stock (asset) Prices follow geometric Brownian motion

• The Variance of Stock Price follows Mean-Reverting Models

Page 9: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

Mean-Reverting Models in Energy Markets

• Asset Prices follow Mean-Reverting Stochastic Processes

Page 10: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

Heston Model for Stock Price and Variance

Model for Stock Price (geometric Brownian motion):

or

follows Cox-Ingersoll-Ross (CIR) process

deterministic interest rate,

Page 11: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

Standard Brownian Motion andGeometric Brownian Motion

Standard Brownian motion

Geometric Brownian motion

Page 12: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

Heston Model: Variance follows mean-reverting (CIR) process

or

Page 13: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

Cox-Ingersoll-Ross (CIR) Model for Stochastic Variance (Volatility)

The model is a mean-reverting process, which pushes away from zero to keep it positive.

The drift term is a restoring force which always pointstowards the current mean value .

Page 14: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

Swaps

• Stock (a security representing partial ownership of a company)

• Bonds (bank

accounts)

• Option (right but not obligation to

do something in the future)• Forward contract (an agreement

to buy or sell something in a future date for a set price: obligation)

• Swaps-agreements between two counterparts to exchange cash flows in the future to a prearrange formula: obligation

Basic Securities Derivative Securities

Security-a piece of paper representing a promise

Page 15: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

Variance and Volatility Swaps

• Volatility swaps are forward contracts on future realized stock volatility

• Variance swaps are forward contract on future realized stock variance

Forward contract-an agreement to buy or sell something at a future date for a set price (forward price)

Variance is a measure of the uncertainty of a stock price.

Volatility (standard deviation) is the square root of the variance (the amount of “noise”, risk or variability in stock price)

Variance=(Volatility)^2

Page 16: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

Realized Continuous Variance and Volatility

Realized (or Observed) Continuous Variance:

Realized Continuous Volatility:

where is a stock volatility, is expiration date or maturity.

Page 17: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

Variance Swaps

A Variance Swap is a forward contract on realized variance.

Its payoff at expiration is equal to (Kvar is the delivery price for variance and N is the notional amount in $ per annualized variance point)

Page 18: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

Volatility Swaps

A Volatility Swap is a forward contract on realized volatility.

Its payoff at expiration is equal to:

Page 19: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

How does the Volatility Swap Work?

Page 20: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

Example: Payoff for Volatility and Variance Swaps

Kvar = (18%)^2; N = $50,000/(one volatility point)^2.

Strike price Kvol =18% ; Realized Volatility=21%;

N =$50,000/(volatility point).

Payment(HF to D)=$50,000(21%-18%)=$150,000.

For Volatility Swap:

For Variance Swap:

Payment(D to HF)=$50,000(18%-12%)=$300,000.

b) volatility decreased to 12%:

a) volatility increased to 21%:

Page 21: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

Valuing of Variance Swap forStochastic Volatility

Value of Variance Swap (present value):

where E is an expectation (or mean value), r is interest rate.

To calculate variance swap we need only E{V},

where and

Page 22: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

Calculation E[V]

Page 23: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

Valuing of Volatility Swap for Stochastic Volatility

Value of volatility swap:

To calculate volatility swap we need not only E{V} (as in the case of variance swap), but also Var{V}.

We use second order Taylor expansion for square root function.

Page 24: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

Calculation of Var[V] (continuation)

After calculations:

Finally we obtain:

Page 25: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

Numerical Example:S&P60 Canada Index

Page 26: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

Numerical Example: S&P60 Canada Index

• We apply the obtained analytical solutions to price a swap on the volatility of the S&P60 Canada Index for five years (January 1997-February 2002)

• These data were kindly presented to author by Raymond Theoret (University of Quebec,

Montreal, Quebec,Canada) and Pierre Rostan (Bank of Montreal, Montreal, Quebec,Canada)

Page 27: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

Logarithmic Returns

Logarithmic Returns:

Logarithmic returns are used in practice to define discrete sampled variance and volatility

where

Page 28: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

Statistics on Log-Returns of S&P60 Canada Index for 5 years

(1997-2002)

Page 29: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

Histograms of Log. Returns for S&P60 Canada Index

Page 30: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

S&P60 Canada Index Volatility Swap

Page 31: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

Realized Continuous Variance for

Stochastic Volatility with Delay

Initial Data

deterministic function

Stock Price

Page 32: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

Equation for Stochastic Variance with Delay (Continuous-Time GARCH Model)

Our (Kazmerchuk, Swishchuk, Wu (2002) “The Option Pricing Formula for Security Markets with Delayed Response”) first attempt was:

This is a continuous-time analogue of its discrete-time GARCH(1,1) model

J.-C. Duan remarked that it is important to incorporate the expectation of log-return into the model

Page 33: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

Stochastic Volatility with Delay

Main Features of this Model

• Continuous-time analogue of GARCH(1,1)• Mean-reversion• Does not contain another Wiener process• Complete market

• Incorporates the expectation of log-return

Page 34: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

Valuing of Variance Swap forStochastic Volatility with Delay

Value of Variance Swap (present value):

To calculate variance swap we need only E{V},

where and

where E is an expectation (or mean value), r is interest rate.

Page 35: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

Continuous-Time GARCH Model

Page 36: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

Deterministic Equation for Expectation of Variance with Delay

There is no explicit solution for this equation besides stationary solution.

Page 37: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

Valuing of Variance Swap with Delay in General Case

We need to find EP*[Var(S)]:

Page 38: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

Numerical Example 1: S&P60 Canada Index (1997-2002)

Page 39: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

Dependence of Variance Swap with Delay

on Maturity (S&P60 Canada Index)

Page 40: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

Variance Swap with Delay (S&P60 Canada Index)

Page 41: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

Numerical Example 2: S&P500 (1990-1993)

Page 42: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

Dependence of Variance Swap with Delay on Maturity (S&P500)

Page 43: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

Variance Swap with Delay (S&P500 Index)

Page 44: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

Mean-Reverting Models in Energy Markets

Page 45: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

Explicit Solution for MRAM

Page 46: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

Explicit Option Pricing Formula for European Call Option under Physical Measure

Page 47: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

Parameters:

Page 48: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

Mean-Reverting Risk-Neutral Asset Model (MRRNAM)

Page 49: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

Transformations:

Page 50: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

Explicit Solution for MRRNAM

Page 51: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

Explicit Option Pricing Formula for European Call Option under Risk-Neutral Measure

Page 52: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

Numerical Example: AECO Natural Gas Index (1 May 1998-30 April 1999)

(Bos, Ware, Pavlov: Quantitative Finance, 2002)

Page 53: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

Variance for New Gaussian Process

Page 54: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

Mean-Value for MRRNAM

Page 55: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

Mean-Value for MRRNAM

Page 56: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

Volatility for MRRNAM

Page 57: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

Price C(T) of European Call Option (S=1)(Sonny Kushwaha, Haskayne School of Business, U of

C, (my student, AMAT371))

0 0.1 0.2 0.3 0.4 0.5 0.6 0.7 0.8 0.9 10

0.1

0.2

0.3

0.4

0.5

0.6

0.7

0.8

0.9

1

T

C(T

)

Page 58: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

European Call Option Price for MRM (Sonny Kushwaha, Haskayne School of Business, U of

C, (my student, AMAT371))

Page 59: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

L. Bos, T. Ware and Pavlov (Put Option)(Quantitative Finance, V. 2 (2002), 337-345)

Page 60: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

Comparison (Put vs. Call)

Page 61: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

Drawback of One-Factor Mean-Reverting Models

• The long-term mean L remains fixed over time: needs to be recalibrated on a continuous basis in order to ensure that the resulting curves are marked to market

• The biggest drawback is in option pricing: results in a model-implied volatility term structure that has the volatilities going to zero as expiration time increases (spot volatilities have to be increased to non-intuitive levels so that the long term options do not lose all the volatility value-as in the marketplace they certainly do not)

Page 62: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

Conclusions

• Variances of Asset Prices in Financial Markets follow Mean-Reverting Models

• Asset Prices in Energy Markets follow Mean-Reverting Models

• We can price variance and volatility swaps for an asset in financial markets

• We can price options for an asset in energy markets

• Drawback: one-factor models (L is a constant)

• Future work: consider two-factor models: S (t) and L (t) (L->L (t)) (possibly with jumps)

Page 63: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

Future work I.(Joint Working Paper with T. Ware: Analytical Approach (Integro - PDE),

Whittaker functions)

Page 64: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

Future Work II

(Probabilistic Approach: Change of Time Method).

Page 65: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

Acknowledgement

• I’d like to thank very much to Robert Elliott, Gordon Sick, Tony Ware and Graham Weir for valuable suggestions and comments, and to all the participants of the “Lunch at the Lab” (weekly seminar, usually Each Thursday, at the Mathematical and Computational Finance Laboratory) for discussion and remarks during all my talks in the Lab.

Page 66: Mean-Reverting Models in Financial and Energy Markets Anatoliy Swishchuk Mathematical and Computational Finance Laboratory, Department of Mathematics and

Thank you for your attention!