S30SBF (PDF version)
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NAG Library Manual

NAG Library Routine Document

S30SBF

Note:  before using this routine, please read the Users' Note for your implementation to check the interpretation of bold italicised terms and other implementation-dependent details.

+ Contents

    1  Purpose
    7  Accuracy

1  Purpose

S30SBF computes the Asian geometric continuous average-rate option price together with its sensitivities (Greeks).

2  Specification

SUBROUTINE S30SBF ( CALPUT, M, N, X, S, T, SIGMA, R, B, P, LDP, DELTA, GAMMA, VEGA, THETA, RHO, CRHO, VANNA, CHARM, SPEED, COLOUR, ZOMMA, VOMMA, IFAIL)
INTEGER  M, N, LDP, IFAIL
REAL (KIND=nag_wp)  X(M), S, T(N), SIGMA, R, B, P(LDP,N), DELTA(LDP,N), GAMMA(LDP,N), VEGA(LDP,N), THETA(LDP,N), RHO(LDP,N), CRHO(LDP,N), VANNA(LDP,N), CHARM(LDP,N), SPEED(LDP,N), COLOUR(LDP,N), ZOMMA(LDP,N), VOMMA(LDP,N)
CHARACTER(1)  CALPUT

3  Description

S30SBF computes the price of an Asian geometric continuous average-rate option, together with the Greeks or sensitivities, which are the partial derivatives of the option price with respect to certain of the other input parameters. The annual volatility, σ, risk-free rate, r, and cost of carry, b, are constants (see Kemna and Vorst (1990)). For a given strike price, X, the price of a call option with underlying price, S, and time to expiry, T, is
Pcall = S e b--r T Φ d- 1 - X e-rT Φ d- 2 ,
and the corresponding put option price is
Pput = X e-rT Φ -d-2 - S e b--r T Φ - d-1 ,
where
d-1 = lnS/X + b- + σ-2 / 2 T σ- T
and
d-2 = d-1 - σ- T ,
with
σ- = σ 3 ,  b- = 1 2 b- σ2 6 .
Φ is the cumulative Normal distribution function,
Φx = 1 2π - x exp -y2/2 dy .

4  References

Kemna A and Vorst A (1990) A pricing method for options based on average asset values Journal of Banking and Finance 14 113–129

5  Parameters

1:     CALPUT – CHARACTER(1)Input
On entry: determines whether the option is a call or a put.
CALPUT='C'
A call. The holder has a right to buy.
CALPUT='P'
A put. The holder has a right to sell.
Constraint: CALPUT='C' or 'P'.
2:     M – INTEGERInput
On entry: the number of strike prices to be used.
Constraint: M1.
3:     N – INTEGERInput
On entry: the number of times to expiry to be used.
Constraint: N1.
4:     X(M) – REAL (KIND=nag_wp) arrayInput
On entry: Xi must contain Xi, the ith strike price, for i=1,2,,M.
Constraint: Xiz ​ and ​ Xi 1 / z , where z = X02AMF , the safe range parameter, for i=1,2,,M.
5:     S – REAL (KIND=nag_wp)Input
On entry: S, the price of the underlying asset.
Constraint: Sz ​ and ​S1.0/z, where z=X02AMF, the safe range parameter.
6:     T(N) – REAL (KIND=nag_wp) arrayInput
On entry: Ti must contain Ti, the ith time, in years, to expiry, for i=1,2,,N.
Constraint: Tiz, where z = X02AMF , the safe range parameter, for i=1,2,,N.
7:     SIGMA – REAL (KIND=nag_wp)Input
On entry: σ, the volatility of the underlying asset. Note that a rate of 15% should be entered as 0.15.
Constraint: SIGMA>0.0.
8:     R – REAL (KIND=nag_wp)Input
On entry: r, the annual risk-free interest rate, continuously compounded. Note that a rate of 5% should be entered as 0.05.
Constraint: R0.0.
9:     B – REAL (KIND=nag_wp)Input
On entry: b, the annual cost of carry rate. Note that a rate of 8% should be entered as 0.08.
10:   P(LDP,N) – REAL (KIND=nag_wp) arrayOutput
On exit: the leading M×N part of the array P contains the computed option prices.
11:   LDP – INTEGERInput
On entry: the first dimension of the arrays P, DELTA, GAMMA, VEGA, THETA, RHO, CRHO, VANNA, CHARM, SPEED, COLOUR, ZOMMA and VOMMA as declared in the (sub)program from which S30SBF is called.
Constraint: LDPM.
12:   DELTA(LDP,N) – REAL (KIND=nag_wp) arrayOutput
On exit: the leading M×N part of the array DELTA contains the sensitivity, PS, of the option price to change in the price of the underlying asset.
13:   GAMMA(LDP,N) – REAL (KIND=nag_wp) arrayOutput
On exit: the leading M×N part of the array GAMMA contains the sensitivity, 2PS2, of DELTA to change in the price of the underlying asset.
14:   VEGA(LDP,N) – REAL (KIND=nag_wp) arrayOutput
On exit: the leading M×N part of the array VEGA contains the sensitivity, Pσ, of the option price to change in the volatility of the underlying asset.
15:   THETA(LDP,N) – REAL (KIND=nag_wp) arrayOutput
On exit: the leading M×N part of the array THETA contains the sensitivity, -PT, of the option price to change in the time to expiry of the option.
16:   RHO(LDP,N) – REAL (KIND=nag_wp) arrayOutput
On exit: the leading M×N part of the array RHO contains the sensitivity, Pr, of the option price to change in the annual risk-free interest rate.
17:   CRHO(LDP,N) – REAL (KIND=nag_wp) arrayOutput
On exit: the m×n array CRHO containing the sensitivity, Pb, of the option price to change in the annual cost of carry rate, b.
18:   VANNA(LDP,N) – REAL (KIND=nag_wp) arrayOutput
On exit: the leading M×N part of the array VANNA contains the sensitivity, 2PSσ, of VEGA to change in the price of the underlying asset or, equivalently, the sensitivity of DELTA to change in the volatility of the asset price.
19:   CHARM(LDP,N) – REAL (KIND=nag_wp) arrayOutput
On exit: the leading M×N part of the array CHARM contains the sensitivity, -2PS T, of DELTA to change in the time to expiry of the option.
20:   SPEED(LDP,N) – REAL (KIND=nag_wp) arrayOutput
On exit: the leading M×N part of the array SPEED contains the sensitivity, 3PS3, of GAMMA to change in the price of the underlying asset.
21:   COLOUR(LDP,N) – REAL (KIND=nag_wp) arrayOutput
On exit: the leading M×N part of the array COLOUR contains the sensitivity, -3PS2 T, of GAMMA to change in the time to expiry of the option.
22:   ZOMMA(LDP,N) – REAL (KIND=nag_wp) arrayOutput
On exit: the leading M×N part of the array ZOMMA contains the sensitivity, 3PS2σ, of GAMMA to change in the volatility of the underlying asset.
23:   VOMMA(LDP,N) – REAL (KIND=nag_wp) arrayOutput
On exit: the leading M×N part of the array VOMMA contains the sensitivity, 2Pσ2, of VEGA to change in the volatility of the underlying asset.
24:   IFAIL – INTEGERInput/Output
On entry: IFAIL must be set to 0, -1​ or ​1. If you are unfamiliar with this parameter you should refer to Section 3.3 in the Essential Introduction for details.
For environments where it might be inappropriate to halt program execution when an error is detected, the value -1​ or ​1 is recommended. If the output of error messages is undesirable, then the value 1 is recommended. Otherwise, if you are not familiar with this parameter, the recommended value is 0. When the value -1​ or ​1 is used it is essential to test the value of IFAIL on exit.
On exit: IFAIL=0 unless the routine detects an error or a warning has been flagged (see Section 6).

6  Error Indicators and Warnings

If on entry IFAIL=0 or -1, explanatory error messages are output on the current error message unit (as defined by X04AAF).
Errors or warnings detected by the routine:
IFAIL=1
On entry, CALPUT'C' or 'P'.
IFAIL=2
On entry, M0.
IFAIL=3
On entry, N0.
IFAIL=4
On entry, Xi<z or Xi>1/z, where z=X02AMF, the safe range parameter.
IFAIL=5
On entry, S<z or S>1.0/z, where z=X02AMF, the safe range parameter.
IFAIL=6
On entry, Ti<z, where z=X02AMF, the safe range parameter.
IFAIL=7
On entry, SIGMA0.0.
IFAIL=8
On entry, R<0.0.
IFAIL=11
On entry, LDP<M.

7  Accuracy

The accuracy of the output is dependent on the accuracy of the cumulative Normal distribution function, Φ. This is evaluated using a rational Chebyshev expansion, chosen so that the maximum relative error in the expansion is of the order of the machine precision (see S15ABF and S15ADF). An accuracy close to machine precision can generally be expected.

8  Further Comments

None.

9  Example

This example computes the price of an Asian geometric continuous average-rate call with a time to expiry of 3 months, a stock price of 80 and a strike price of 97. The risk-free interest rate is 5% per year, the cost of carry is 8% and the volatility is 20% per year.

9.1  Program Text

Program Text (s30sbfe.f90)

9.2  Program Data

Program Data (s30sbfe.d)

9.3  Program Results

Program Results (s30sbfe.r)


S30SBF (PDF version)
S Chapter Contents
S Chapter Introduction
NAG Library Manual

© The Numerical Algorithms Group Ltd, Oxford, UK. 2012