The pricing of interest-rate derivative securities relies on models that describe the underlying process. These interest rate models depend on one or more parameters that you must determine by matching the model predictions to the existing data available in the market. In the Hull-White model, there are two parameters related to the short rate process: mean reversion and volatility. Calibration is used to determine these parameters, such that the model can reproduce, as close as possible, the prices of caps or floors observed in the market. The calibration routines find the parameters that minimize the difference between the model price predictions and the market prices for caps and floors.
For a Hull-White model, the minimization is two dimensional, with respect to mean reversion (α) and volatility (σ). That is, calibrating the Hull-White model minimizes the difference between the model’s predicted prices and the observed market prices of the corresponding caplets or floorlets.
Use market data to identify the implied volatility (σ)
and mean reversion (α) coefficients needed to build a Hull-White
tree to price an instrument. The ideal case is to use the volatilities
of the caps or floors used to calculate Alpha (α)
and Sigma (σ). This will most likely not
be the case, so market data must be interpolated to obtain the required
values.
Consider a cap with these parameters:
Settle = ' Jan-21-2008'; Maturity = 'Mar-21-2011'; Strike = 0.0690; Reset = 4; Principal = 1000; Basis = 0;
The caplets for this example would fall in:
capletDates = cfdates(Settle, Maturity, Reset, Basis); datestr(capletDates')
ans = 21-Mar-2008 21-Jun-2008 21-Sep-2008 21-Dec-2008 21-Mar-2009 21-Jun-2009 21-Sep-2009 21-Dec-2009 21-Mar-2010 21-Jun-2010 21-Sep-2010 21-Dec-2010 21-Mar-2011
In the best case, look up the market volatilities for caplets
with a Strike = 0.0690, and
maturities in each reset date listed, but the likelihood of finding
these exact instruments is low. As a consequence, use data that is
available in the market and interpolate to find appropriate values
for the caplets.
Based on the market data, you have the cap information for different
dates and strikes. Assume that instead of having the data for Strike = 0.0690,
you have the data for Strike1 = 0.0590 and Strike2 =
0.0790.
| Maturity | Strike1 = 0.0590 | Strike2 = 0.0790 |
|---|---|---|
| 21-Mar-2008 | 0.1533 | 0. 1526 |
| 21-Jun-2008 | 0.1731 | 0. 1730 |
| 21-Sep-2008 | 0. 1727 | 0. 1726 |
| 21-Dec-2008 | 0. 1752 | 0. 1747 |
| 21-Mar-2009 | 0. 1809 | 0. 1808 |
| 21-Jun-2009 | 0. 1809 | 0. 1792 |
| 21-Sep-2009 | 0. 1805 | 0. 1797 |
| 21-Dec-2009 | 0. 1802 | 0. 1794 |
| 21-Mar-2010 | 0. 1802 | 0. 1733 |
| 21-Jun-2010 | 0. 1757 | 0. 1751 |
| 21-Sep-2010 | 0. 1755 | 0. 1750 |
| 21-Dec-2010 | 0. 1755 | 0. 1745 |
| 21-Mar-2011 | 0. 1726 | 0. 1719 |
The nature of this data lends itself to matrix nomenclature,
which is perfect for MATLAB®. hwcalbycap requires
that the dates, the strikes, and the actual volatility be separated
into three variables: MarketStrike, MarketMat,
and MarketVol.
MarketStrike = [0.0590; 0.0790];
MarketMat = {'21-Mar-2008';
'21-Jun-2008';
'21-Sep-2008';
'21-Dec-2008';
'21-Mar-2009';
'21-Jun-2009';
'21-Sep-2009';
'21-Dec-2009';
'21-Mar-2010';
'21-Jun-2010';
'21-Sep-2010';
'21-Dec-2010';
'21-Mar-2011'};
MarketVol = [0.1533 0.1731 0.1727 0.1752 0.1809 0.1800 0.1805 0.1802 0.1735 0.1757 ...
0.1755 0.1755 0.1726; % First row in table corresponding to Strike1
0.1526 0.1730 0.1726 0.1747 0.1808 0.1792 0.1797 0.1794 0.1733 0.1751 ...
0.1750 0.1745 0.1719]; % Second row in table corresponding to Strike2Complete the input arguments using this data for RateSpec:
Rates = [0.0627; 0.0657; 0.0691; 0.0717; 0.0739; 0.0755; 0.0765; 0.0772; 0.0779; 0.0783; 0.0786; 0.0789; 0.0792; 0.0793]; ValuationDate = '21-Jan-2008'; EndDates = {'21-Mar-2008';'21-Jun-2008';'21-Sep-2008';'21-Dec-2008';... '21-Mar-2009';'21-Jun-2009';'21-Sep-2009';'21-Dec-2009';.... '21-Mar-2010';'21-Jun-2010';'21-Sep-2010';'21-Dec-2010';.... '21-Mar-2011';'21-Jun-2011'}; Compounding = 4; Basis = 0; RateSpec = intenvset('ValuationDate', ValuationDate, ... 'StartDates', ValuationDate, 'EndDates', EndDates, ... 'Rates', Rates, 'Compounding', Compounding, 'Basis', Basis)
RateSpec =
FinObj: 'RateSpec'
Compounding: 4
Disc: [14x1 double]
Rates: [14x1 double]
EndTimes: [14x1 double]
StartTimes: [14x1 double]
EndDates: [14x1 double]
StartDates: 733428
ValuationDate: 733428
Basis: 0
EndMonthRule: 1Use hwcalbycap to calculate the
values of Alpha and Sigma based on market
data. Internally, hwcalbycap calls the function
lsqnonlin. You can customize
lsqnonlin by passing an
optimization options structure created by optimoptions and then this can be
passed to hwcalbycap using the
name-value pair argument for OptimOptions. For example,
optimoptions defines the target
objective function tolerance as 100*eps and then calls
hwcalbycap:
o=optimoptions('lsqnonlin','TolFun',100*eps); [Alpha, Sigma] = hwcalbycap(RateSpec, MarketStrike, MarketMat, MarketVol,... Strike, Settle, Maturity, 'Reset', Reset, 'Principal', Principal, 'Basis',... Basis, 'OptimOptions', o)
Local minimum possible.
lsqnonlin stopped because the size of the current step is less than
the default value of the step size tolerance.
Warning: LSQNONLIN did not converge to an optimal solution. It exited with exitflag = 2.
> In hwcalbycapfloor at 93
In hwcalbycap at 75
Alpha =
1.0000e-06
Sigma =
0.0127 The previous warning indicates that the conversion was not
optimal. The search algorithm used by the Optimization Toolbox™
function lsqnonlin did not find
a solution that conforms to all the constraints. To discern whether
the solution is acceptable, look at the results of the optimization
by specifying a third output (OptimOut) for hwcalbycap:
[Alpha, Sigma, OptimOut] = hwcalbycap(RateSpec, MarketStrike, MarketMat,... MarketVol, Strike, Settle, Maturity, 'Reset', Reset, 'Principal', Principal,... 'Basis', Basis, 'OptimOptions', o);
The OptimOut.residual field of the OptimOut structure
is the optimization residual. This value contains the difference between
the Black caplets and those calculated during the optimization. You
can use the OptimOut.residual value to calculate
the percentual difference (error) compared to Black caplet prices
and then decide whether the residual is acceptable. There is almost
always some residual, so decide if it is acceptable to parameterize
the market with a single value of Alpha and Sigma.
To determine the effectiveness of the optimization, calculate reference caplet values using Black’s formula and the market data. Note, you must first interpolate the market data to obtain the caplets for calculation:
MarketMatNum = datenum(MarketMat);
[Mats, Strikes] = meshgrid(MarketMatNum, MarketStrike);
FlatVol = interp2(Mats, Strikes, MarketVol, datenum(Maturity), Strike, 'spline');Compute the price of the cap using the Black model:
[CapPrice, Caplets] = capbyblk(RateSpec, Strike, Settle, Maturity, FlatVol,... 'Reset', Reset, 'Basis', Basis, 'Principal', Principal); Caplets = Caplets(2:end)';
Caplets =
0.3210
1.6355
2.4863
3.1903
3.4110
3.2685
3.2385
3.4803
3.2419
3.1949
3.2991
3.3750After calculating the reference values for the caplets, compare
the values, analytically and graphically, to determine whether the
calculated single values of Alpha and Sigma provide
an adequate approximation:
OptimCaplets = Caplets+OptimOut.residual; disp(' '); disp(' Black76 Calibrated Caplets'); disp([Caplets OptimCaplets]) plot(MarketMatNum(2:end), Caplets, 'or', MarketMatNum(2:end), OptimCaplets, '*b'); datetick('x', 2) xlabel('Caplet Maturity'); ylabel('Caplet Price'); title('Black and Calibrated Caplets'); h = legend('Black Caplets', 'Calibrated Caplets'); set(h, 'color', [0.9 0.9 0.9]); set(h, 'Location', 'SouthEast'); set(gcf, 'NumberTitle', 'off') grid on
Black76 Calibrated Caplets
0.3210 0.3636
1.6355 1.6603
2.4863 2.4974
3.1903 3.1874
3.4110 3.4040
3.2685 3.2639
3.2385 3.2364
3.4803 3.4683
3.2419 3.2408
3.1949 3.1957
3.2991 3.2960
3.3750 3.3663
Using the calculated caplet values, compare the prices of the
corresponding cap using the Black model, Hull-White analytical, and
Hull-White tree models. To calculate a Hull-White tree based on Alpha and Sigma,
use these calibration routines:
Black model:
CapPriceBLK = CapPrice;
HW analytical model:
CapPriceHWAnalytical = sum(OptimCaplets);
HW tree model to price the cap derived from the calibration process:
Create VolSpec from the calibration
parameters Alpha and Sigma:
VolDates = EndDates; VolCurve = Sigma*ones(14,1); AlphaDates = EndDates; AlphaCurve = Alpha*ones(14,1); HWVolSpec = hwvolspec(ValuationDate, VolDates, VolCurve,AlphaDates, AlphaCurve);
Create the TimeSpec:
HWTimeSpec = hwtimespec(ValuationDate, EndDates, Compounding);
Build the HW tree using the HW2000 method:
HWTree = hwtree(HWVolSpec, RateSpec, HWTimeSpec, 'Method', 'HW2000');
Price the cap:
Price = capbyhw(HWTree, Strike, Settle, Maturity, Reset, Basis, Principal); disp(' '); disp([' CapPrice Black76 ..................: ', num2str(CapPriceBLK,'%15.5f')]); disp([' CapPrice HW analytical..........: ', num2str(CapPriceHWAnalytical,'%15.5f')]); disp([' CapPrice HW from capbyhw ..: ', num2str(Price,'%15.5f')]); disp(' ');
CapPrice Black76 ..........: 34.14220 CapPrice HW analytical.....: 34.18008 CapPrice HW from capbyhw ..: 34.14192
After building a Hull-White tree, based on parameters calibrated
from market data, use HWTree to price a portfolio
of these instruments:
Two bonds
CouponRate = [0.07; 0.09]; Settle = ' Jan-21-2008'; Maturity = {'Mar-21-2010';'Mar-21-2011'}; Period = 1; Face = 1000; Basis = 0;
Bond with an embedded American call option
CouponRateOEB = 0.08; SettleOEB = ' Jan-21-2008'; MaturityOEB = 'Mar-21-2011'; OptSpec = 'call'; StrikeOEB = 950; ExerciseDatesOEB = 'Mar-21-2011'; AmericanOpt = 1; Period = 1; Face = 1000; Basis = 0;
To price this portfolio of instruments using the calibrated HWTree:
Use instadd to
create the portfolio InstSet:
InstSet = instadd('Bond', CouponRate, Settle, Maturity, Period, Basis, [], [], [], [], [], Face); InstSet = instadd(InstSet,'OptEmBond', CouponRateOEB, SettleOEB, MaturityOEB, OptSpec,... StrikeOEB, ExerciseDatesOEB, 'AmericanOpt', AmericanOpt, 'Period', Period,... 'Face',Face, 'Basis', Basis);
Add the cap instrument used in the calibration:
SettleCap = ' Jan-21-2008'; MaturityCap = 'Mar-21-2011'; StrikeCap = 0.0690; Reset = 4; Principal = 1000; InstSet = instadd(InstSet,'Cap', StrikeCap, SettleCap, MaturityCap, Reset, Basis, Principal);
Assign names to the portfolio instruments:
Names = {'7% Bond'; '8% Bond'; 'BondEmbCall'; '6.9% Cap'};
InstSet = instsetfield(InstSet, 'Index',1:4, 'FieldName', {'Name'}, 'Data', Names );Examine the set of instruments contained in InstSet:
instdisp(InstSet)
IdxType CoupRate Settle Mature Period Basis EOMRule IssueDate 1stCoupDate LastCoupDate StartDate Face Name 1 Bond 0.07 21-Jan-2008 21-Mar-2010 1 0 NaN NaN NaN NaN NaN 1000 7% Bond 2 Bond 0.09 21-Jan-2008 21-Mar-2011 1 0 NaN NaN NaN NaN NaN 1000 8% Bond IdxType CoupRate Settle Mature OptSpec Stke ExDate Per Basis EOMRule IssDate 1stCoupDate LstCoupDate StrtDate Face AmerOpt Name 3 OptEmBond 0.08 21-Jan-2008 21-Mar-2011 call 950 21-Jan-2008 21-Mar-2011 1 0 1 NaN NaN NaN NaN 1000 1 BondEmbCall Index Type Strike Settle Maturity CapReset Basis Principal Name 4 Cap 0.069 21-Jan-2008 21-Mar-2011 4 0 1000 6.9% Cap
Use hwprice to
price the portfolio using the calibrated HWTree:
format bank
PricePortfolio = hwprice(HWTree, InstSet)PricePortfolio =
980.45
1023.05
945.73
34.14
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