/usr/include/ql/experimental/mcbasket/mcpathbasketengine.hpp is in libquantlib0-dev 1.7.1-1.
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/*
Copyright (C) 2008 Andrea Odetti
This file is part of QuantLib, a free-software/open-source library
for financial quantitative analysts and developers - http://quantlib.org/
QuantLib is free software: you can redistribute it and/or modify it
under the terms of the QuantLib license. You should have received a
copy of the license along with this program; if not, please email
<quantlib-dev@lists.sf.net>. The license is also available online at
<http://quantlib.org/license.shtml>.
This program is distributed in the hope that it will be useful, but WITHOUT
ANY WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
FOR A PARTICULAR PURPOSE. See the license for more details.
*/
/*! \file mcpathbasketengine.hpp
\brief Path-dependent European basket MC engine
*/
#ifndef quantlib_mc_path_basket_engine_hpp
#define quantlib_mc_path_basket_engine_hpp
#include <ql/experimental/mcbasket/pathmultiassetoption.hpp>
#include <ql/experimental/mcbasket/pathpayoff.hpp>
#include <ql/pricingengines/mcsimulation.hpp>
#include <ql/processes/blackscholesprocess.hpp>
#include <ql/processes/stochasticprocessarray.hpp>
#include <ql/termstructures/yield/impliedtermstructure.hpp>
#include <ql/timegrid.hpp>
#include <boost/make_shared.hpp>
namespace QuantLib {
//! Pricing engine for path dependent basket options using
// Monte Carlo simulation
template <class RNG = PseudoRandom, class S = Statistics>
class MCPathBasketEngine : public PathMultiAssetOption::engine,
public McSimulation<MultiVariate,RNG,S> {
public:
typedef typename McSimulation<MultiVariate,RNG,S>::path_generator_type
path_generator_type;
typedef typename McSimulation<MultiVariate,RNG,S>::path_pricer_type
path_pricer_type;
typedef typename McSimulation<MultiVariate,RNG,S>::stats_type
stats_type;
// constructor
MCPathBasketEngine(const boost::shared_ptr<StochasticProcessArray>&,
Size timeSteps,
Size timeStepsPerYear,
bool brownianBridge,
bool antitheticVariate,
bool controlVariate,
Size requiredSamples,
Real requiredTolerance,
Size maxSamples,
BigNatural seed);
void calculate() const {
McSimulation<MultiVariate,RNG,S>::calculate(requiredTolerance_,
requiredSamples_,
maxSamples_);
results_.value = this->mcModel_->sampleAccumulator().mean();
if (RNG::allowsErrorEstimate)
results_.errorEstimate =
this->mcModel_->sampleAccumulator().errorEstimate();
}
protected:
// McSimulation implementation
TimeGrid timeGrid() const;
boost::shared_ptr<path_generator_type> pathGenerator() const;
boost::shared_ptr<path_pricer_type> pathPricer() const;
// data members
boost::shared_ptr<StochasticProcessArray> process_;
Size timeSteps_;
Size timeStepsPerYear_;
Size requiredSamples_;
Size maxSamples_;
Real requiredTolerance_;
bool brownianBridge_;
BigNatural seed_;
};
class EuropeanPathMultiPathPricer : public PathPricer<MultiPath> {
public:
EuropeanPathMultiPathPricer(boost::shared_ptr<PathPayoff> & payoff,
const std::vector<Size> & timePositions,
const std::vector<Handle<YieldTermStructure> > & forwardTermStructures,
const Array & discounts);
Real operator()(const MultiPath& multiPath) const;
private:
boost::shared_ptr<PathPayoff> payoff_;
std::vector<Size> timePositions_;
std::vector<Handle<YieldTermStructure> > forwardTermStructures_;
Array discounts_;
};
// template definitions
template<class RNG, class S>
inline MCPathBasketEngine<RNG,S>::MCPathBasketEngine(
const boost::shared_ptr<StochasticProcessArray>& process,
Size timeSteps,
Size timeStepsPerYear,
bool brownianBridge,
bool antitheticVariate,
bool controlVariate,
Size requiredSamples,
Real requiredTolerance,
Size maxSamples,
BigNatural seed)
: McSimulation<MultiVariate,RNG,S>(antitheticVariate, controlVariate),
process_(process), timeSteps_(timeSteps), timeStepsPerYear_(timeStepsPerYear),
requiredSamples_(requiredSamples), maxSamples_(maxSamples),
requiredTolerance_(requiredTolerance),
brownianBridge_(brownianBridge), seed_(seed) {
QL_REQUIRE(timeSteps != Null<Size>() ||
timeStepsPerYear != Null<Size>(),
"no time steps provided");
QL_REQUIRE(timeSteps == Null<Size>() ||
timeStepsPerYear == Null<Size>(),
"both time steps and time steps per year were provided");
QL_REQUIRE(timeSteps != 0,
"timeSteps must be positive, " << timeSteps <<
" not allowed");
QL_REQUIRE(timeStepsPerYear != 0,
"timeStepsPerYear must be positive, "
<< timeStepsPerYear << " not allowed");
this->registerWith(process_);
}
template<class RNG, class S>
inline
boost::shared_ptr<typename MCPathBasketEngine<RNG,S>::path_generator_type>
MCPathBasketEngine<RNG,S>::pathGenerator() const {
boost::shared_ptr<PathPayoff> payoff = arguments_.payoff;
QL_REQUIRE(payoff, "non-basket payoff given");
Size numAssets = process_->size();
TimeGrid grid = timeGrid();
typename RNG::rsg_type gen =
RNG::make_sequence_generator(numAssets * (grid.size() - 1), seed_);
return boost::shared_ptr<path_generator_type>(
new path_generator_type(process_,
grid, gen, brownianBridge_));
}
template <class RNG, class S>
inline TimeGrid MCPathBasketEngine<RNG,S>::timeGrid() const {
const std::vector<Date> & fixings = this->arguments_.fixingDates;
const Size numberOfFixings = fixings.size();
std::vector<Time> fixingTimes(numberOfFixings);
for (Size i = 0; i < numberOfFixings; ++i) {
fixingTimes[i] =
this->process_->time(fixings[i]);
}
const Size numberOfTimeSteps = timeSteps_ != Null<Size>() ? timeSteps_ : timeStepsPerYear_ * fixingTimes.back();
return TimeGrid(fixingTimes.begin(), fixingTimes.end(), numberOfTimeSteps);
}
template <class RNG, class S>
inline
boost::shared_ptr<typename MCPathBasketEngine<RNG,S>::path_pricer_type>
MCPathBasketEngine<RNG,S>::pathPricer() const {
boost::shared_ptr<PathPayoff> payoff = arguments_.payoff;
QL_REQUIRE(payoff, "non-basket payoff given");
boost::shared_ptr<GeneralizedBlackScholesProcess> process =
boost::dynamic_pointer_cast<GeneralizedBlackScholesProcess>(
process_->process(0));
QL_REQUIRE(process, "Black-Scholes process required");
const TimeGrid theTimeGrid = timeGrid();
const std::vector<Time> & times = theTimeGrid.mandatoryTimes();
const Size numberOfTimes = times.size();
const std::vector<Date> & fixings = this->arguments_.fixingDates;
QL_REQUIRE(fixings.size() == numberOfTimes, "Invalid dates/times");
std::vector<Size> timePositions(numberOfTimes);
Array discountFactors(numberOfTimes);
std::vector<Handle<YieldTermStructure> > forwardTermStructures(numberOfTimes);
const Handle<YieldTermStructure> & riskFreeRate = process->riskFreeRate();
for (Size i = 0; i < numberOfTimes; ++i) {
timePositions[i] = theTimeGrid.index(times[i]);
discountFactors[i] = riskFreeRate->discount(times[i]);
forwardTermStructures[i] = Handle<YieldTermStructure>(
boost::make_shared<ImpliedTermStructure>(riskFreeRate,
fixings[i]));
}
return boost::shared_ptr<
typename MCPathBasketEngine<RNG,S>::path_pricer_type>(
new EuropeanPathMultiPathPricer(payoff, timePositions,
forwardTermStructures,
discountFactors));
}
//! Monte Carlo Path Basket engine factory
template <class RNG = PseudoRandom, class S = Statistics>
class MakeMCPathBasketEngine {
public:
MakeMCPathBasketEngine(const boost::shared_ptr<StochasticProcessArray>&);
// named parameters
MakeMCPathBasketEngine& withSteps(Size steps);
MakeMCPathBasketEngine& withStepsPerYear(Size steps);
MakeMCPathBasketEngine& withBrownianBridge(bool b = true);
MakeMCPathBasketEngine& withSamples(Size samples);
MakeMCPathBasketEngine& withAbsoluteTolerance(Real tolerance);
MakeMCPathBasketEngine& withMaxSamples(Size samples);
MakeMCPathBasketEngine& withSeed(BigNatural seed);
MakeMCPathBasketEngine& withAntitheticVariate(bool b = true);
MakeMCPathBasketEngine& withControlVariate(bool b = true);
// conversion to pricing engine
operator boost::shared_ptr<PricingEngine>() const;
private:
boost::shared_ptr<StochasticProcessArray> process_;
bool antithetic_, controlVariate_;
Size steps_, stepsPerYear_, samples_, maxSamples_;
Real tolerance_;
bool brownianBridge_;
BigNatural seed_;
};
template <class RNG, class S>
inline MakeMCPathBasketEngine<RNG,S>::MakeMCPathBasketEngine(
const boost::shared_ptr<StochasticProcessArray>& process)
: process_(process),
antithetic_(false), controlVariate_(false),
steps_(Null<Size>()), stepsPerYear_(Null<Size>()),
samples_(Null<Size>()), maxSamples_(Null<Size>()),
tolerance_(Null<Real>()), brownianBridge_(false), seed_(0) {}
template <class RNG, class S>
inline MakeMCPathBasketEngine<RNG,S>&
MakeMCPathBasketEngine<RNG,S>::withSteps(Size steps) {
steps_ = steps;
return *this;
}
template <class RNG, class S>
inline MakeMCPathBasketEngine<RNG,S>&
MakeMCPathBasketEngine<RNG,S>::withStepsPerYear(Size steps) {
stepsPerYear_ = steps;
return *this;
}
template <class RNG, class S>
inline MakeMCPathBasketEngine<RNG,S>&
MakeMCPathBasketEngine<RNG,S>::withSamples(Size samples) {
QL_REQUIRE(tolerance_ == Null<Real>(),
"tolerance already set");
samples_ = samples;
return *this;
}
template <class RNG, class S>
inline MakeMCPathBasketEngine<RNG,S>&
MakeMCPathBasketEngine<RNG,S>::withAbsoluteTolerance(Real tolerance) {
QL_REQUIRE(samples_ == Null<Size>(),
"number of samples already set");
QL_REQUIRE(RNG::allowsErrorEstimate,
"chosen random generator policy "
"does not allow an error estimate");
tolerance_ = tolerance;
return *this;
}
template <class RNG, class S>
inline MakeMCPathBasketEngine<RNG,S>&
MakeMCPathBasketEngine<RNG,S>::withMaxSamples(Size samples) {
maxSamples_ = samples;
return *this;
}
template <class RNG, class S>
inline MakeMCPathBasketEngine<RNG,S>&
MakeMCPathBasketEngine<RNG,S>::withSeed(BigNatural seed) {
seed_ = seed;
return *this;
}
template <class RNG, class S>
inline MakeMCPathBasketEngine<RNG,S>&
MakeMCPathBasketEngine<RNG,S>::withBrownianBridge(bool brownianBridge) {
brownianBridge_ = brownianBridge;
return *this;
}
template <class RNG, class S>
inline MakeMCPathBasketEngine<RNG,S>&
MakeMCPathBasketEngine<RNG,S>::withAntitheticVariate(bool b) {
antithetic_ = b;
return *this;
}
template <class RNG, class S>
inline MakeMCPathBasketEngine<RNG,S>&
MakeMCPathBasketEngine<RNG,S>::withControlVariate(bool b) {
controlVariate_ = b;
return *this;
}
template <class RNG, class S>
inline
MakeMCPathBasketEngine<RNG,S>::operator boost::shared_ptr<PricingEngine>()
const {
return boost::shared_ptr<PricingEngine>(new
MCPathBasketEngine<RNG,S>(process_,
steps_,
stepsPerYear_,
brownianBridge_,
antithetic_,
controlVariate_,
samples_,
tolerance_,
maxSamples_,
seed_));
}
}
#endif
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