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RQuantLib (version 0.2.2)

AmericanOptionImpliedVolatility: Implied Volatility calculation for American Option

Description

The AmericanOptionImpliedVolatility function solves for the (unobservable) implied volatility, given an option price as well as the other required parameters to value an option.

Usage

AmericanOptionImpliedVolatility.default(type, value, underlying, strike,
		dividendYield, riskFreeRate, maturity, volatility,
                timeSteps=150, gridPoints=151)

## S3 method for class 'ImpliedVolatility': printundefined ## S3 method for class 'ImpliedVolatility': summaryundefined

Arguments

type
A string with one of the values call or put
value
Value of the option (used only for ImpliedVolatility calculation)
underlying
Current price of the underlying stock
strike
Strike price of the option
dividendYield
Continuous dividend yield (as a fraction) of the stock
riskFreeRate
Risk-free rate
maturity
Time to maturity (in fractional years)
volatility
Initial guess for the volatility of the underlying stock
timeSteps
Time steps for the Finite Differences method, default value is 150
gridPoints
Grid points for the Finite Differences method, default value is 151

Value

  • The AmericanOptionImpliedVolatility function returns an object of class ImpliedVolatility. It contains a list with the following elements:
  • impliedVolThe volatility implied by the given market prices
  • parametersList with the option parameters used

Details

The Finite Differences method is used to value the American Option. Implied volatilities are then calculated numerically.

Please see any decent Finance textbook for background reading, and the QuantLib documentation for details on the QuantLib implementation.

References

http://quantlib.org for details on QuantLib.

See Also

EuropeanOption,AmericanOption,BinaryOption

Examples

Run this code
AmericanOptionImpliedVolatility(type="call", value=11.10, underlying=100,
	strike=100, dividendYield=0.01, riskFreeRate=0.03,
	maturity=0.5, volatility=0.4)

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