dynare/dynare++/integ/testing/tests.cc

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/* $Id: tests.cpp 431 2005-08-16 15:41:01Z kamenik $ */
/* Copyright 2005, Ondra Kamenik */
#include "GeneralMatrix.hh"
#include <dynlapack.h>
#include "SylvException.hh"
#include "rfs_tensor.hh"
#include "normal_moments.hh"
#include "vector_function.hh"
#include "quadrature.hh"
#include "smolyak.hh"
#include "product.hh"
#include "quasi_mcarlo.hh"
#include <iomanip>
#include <chrono>
#include <cmath>
#include <iostream>
#include <utility>
#include <array>
#include <memory>
#include <cstdlib>
// evaluates unfolded (Dx)^k power, where x is a vector, D is a
// Cholesky factor (lower triangular)
class MomentFunction : public VectorFunction
{
GeneralMatrix D;
int k;
public:
MomentFunction(const GeneralMatrix &inD, int kk)
: VectorFunction(inD.numRows(), UFSTensor::calcMaxOffset(inD.numRows(), kk)),
D(inD), k(kk)
{
}
MomentFunction(const MomentFunction &func) = default;
std::unique_ptr<VectorFunction>
clone() const override
{
return std::make_unique<MomentFunction>(*this);
}
void eval(const Vector &point, const ParameterSignal &sig, Vector &out) override;
};
void
MomentFunction::eval(const Vector &point, const ParameterSignal &sig, Vector &out)
{
if (point.length() != indim() || out.length() != outdim())
{
std::cerr << "Wrong length of vectors in MomentFunction::eval" << std::endl;
std::exit(EXIT_FAILURE);
}
Vector y(point);
y.zeros();
D.multaVec(y, point);
URSingleTensor ypow(y, k);
out.zeros();
out.add(1.0, ypow.getData());
}
class TensorPower : public VectorFunction
{
int k;
public:
TensorPower(int nvar, int kk)
: VectorFunction(nvar, UFSTensor::calcMaxOffset(nvar, kk)), k(kk)
{
}
TensorPower(const TensorPower &func) = default;
std::unique_ptr<VectorFunction>
clone() const override
{
return std::make_unique<TensorPower>(*this);
}
void eval(const Vector &point, const ParameterSignal &sig, Vector &out) override;
};
void
TensorPower::eval(const Vector &point, const ParameterSignal &sig, Vector &out)
{
if (point.length() != indim() || out.length() != outdim())
{
std::cerr << "Wrong length of vectors in TensorPower::eval" << std::endl;
std::exit(EXIT_FAILURE);
}
URSingleTensor ypow(point, k);
out.zeros();
out.add(1.0, ypow.getData());
}
// evaluates (1+1/d)^d*(x_1*...*x_d)^(1/d), its integral over <0,1>^d
// is 1.0, and its variation grows exponetially
// d = dim
class Function1 : public VectorFunction
{
int dim;
public:
Function1(int d)
: VectorFunction(d, 1), dim(d)
{
}
Function1(const Function1 &f)
: VectorFunction(f.indim(), f.outdim()), dim(f.dim)
{
}
std::unique_ptr<VectorFunction>
clone() const override
{
return std::make_unique<Function1>(*this);
}
void eval(const Vector &point, const ParameterSignal &sig, Vector &out) override;
};
void
Function1::eval(const Vector &point, const ParameterSignal &sig, Vector &out)
{
if (point.length() != dim || out.length() != 1)
{
std::cerr << "Wrong length of vectors in Function1::eval" << std::endl;
std::exit(EXIT_FAILURE);
}
double r = 1;
for (int i = 0; i < dim; i++)
r *= point[i];
r = pow(r, 1.0/dim);
r *= pow(1.0 + 1.0/dim, (double) dim);
out[0] = r;
}
// evaluates Function1 but with transformation x_i=0.5(y_i+1)
// this makes the new function integrate over <-1,1>^d to 1.0
class Function1Trans : public Function1
{
public:
Function1Trans(int d)
: Function1(d)
{
}
Function1Trans(const Function1Trans &func) = default;
std::unique_ptr<VectorFunction>
clone() const override
{
return std::make_unique<Function1Trans>(*this);
}
void eval(const Vector &point, const ParameterSignal &sig, Vector &out) override;
};
void
Function1Trans::eval(const Vector &point, const ParameterSignal &sig, Vector &out)
{
Vector p(point.length());
for (int i = 0; i < p.length(); i++)
p[i] = 0.5*(point[i]+1);
Function1::eval(p, sig, out);
out.mult(pow(0.5, indim()));
}
// WallTimer class. Constructor saves the wall time, destructor
// cancels the current time from the saved, and prints the message
// with time information
class WallTimer
{
std::string mes;
std::chrono::time_point<std::chrono::high_resolution_clock> start;
bool new_line;
public:
WallTimer(std::string m, bool nl = true)
: mes{m}, start{std::chrono::high_resolution_clock::now()}, new_line{nl}
{
}
~WallTimer()
{
auto end = std::chrono::high_resolution_clock::now();
std::chrono::duration<double> duration = end - start;
std::cout << mes << std::setw(8) << std::setprecision(4) << duration.count();
if (new_line)
std::cout << std::endl;
}
};
/****************************************************/
/* declaration of TestRunnable class */
/****************************************************/
class TestRunnable
{
public:
const std::string name;
int dim; // dimension of the solved problem
int nvar; // number of variable of the solved problem
TestRunnable(std::string name_arg, int d, int nv)
: name{move(name_arg)}, dim(d), nvar(nv)
{
}
virtual ~TestRunnable() = default;
bool test() const;
virtual bool run() const = 0;
protected:
static bool smolyak_normal_moments(const GeneralMatrix &m, int imom, int level);
static bool product_normal_moments(const GeneralMatrix &m, int imom, int level);
static bool qmc_normal_moments(const GeneralMatrix &m, int imom, int level);
static bool smolyak_product_cube(const VectorFunction &func, const Vector &res,
double tol, int level);
static bool qmc_cube(const VectorFunction &func, double res, double tol, int level);
};
bool
TestRunnable::test() const
{
std::cout << "Running test <" << name << ">" << std::endl;
bool passed;
{
WallTimer tim("Wall clock time ", false);
passed = run();
}
if (passed)
{
std::cout << "............................ passed" << std::endl << std::endl;
return passed;
}
else
{
std::cout << "............................ FAILED" << std::endl << std::endl;
return passed;
}
}
/****************************************************/
/* definition of TestRunnable static methods */
/****************************************************/
bool
TestRunnable::smolyak_normal_moments(const GeneralMatrix &m, int imom, int level)
{
// first make m*m' and then Cholesky factor
GeneralMatrix msq(m * transpose(m));
// make vector function
int dim = m.numRows();
TensorPower tp(dim, imom);
GaussConverterFunction func(tp, msq);
// smolyak quadrature
Vector smol_out(UFSTensor::calcMaxOffset(dim, imom));
{
WallTimer tim("\tSmolyak quadrature time: ");
GaussHermite gs;
SmolyakQuadrature quad(dim, level, gs);
quad.integrate(func, level, sthread::detach_thread_group::max_parallel_threads, smol_out);
std::cout << "\tNumber of Smolyak evaluations: " << quad.numEvals(level) << std::endl;
}
// check against theoretical moments
UNormalMoments moments(imom, msq);
smol_out.add(-1.0, moments.get(Symmetry{imom}).getData());
std::cout << "\tError: " << std::setw(16) << std::setprecision(12) << smol_out.getMax() << std::endl;
return smol_out.getMax() < 1.e-7;
}
bool
TestRunnable::product_normal_moments(const GeneralMatrix &m, int imom, int level)
{
// first make m*m' and then Cholesky factor
GeneralMatrix msq(m * transpose(m));
// make vector function
int dim = m.numRows();
TensorPower tp(dim, imom);
GaussConverterFunction func(tp, msq);
// product quadrature
Vector prod_out(UFSTensor::calcMaxOffset(dim, imom));
{
WallTimer tim("\tProduct quadrature time: ");
GaussHermite gs;
ProductQuadrature quad(dim, gs);
quad.integrate(func, level, sthread::detach_thread_group::max_parallel_threads, prod_out);
std::cout << "\tNumber of product evaluations: " << quad.numEvals(level) << std::endl;
}
// check against theoretical moments
UNormalMoments moments(imom, msq);
prod_out.add(-1.0, moments.get(Symmetry{imom}).getData());
std::cout << "\tError: " << std::setw(16) << std::setprecision(12) << prod_out.getMax() << std::endl;
return prod_out.getMax() < 1.e-7;
}
bool
TestRunnable::smolyak_product_cube(const VectorFunction &func, const Vector &res,
double tol, int level)
{
if (res.length() != func.outdim())
{
std::cerr << "Incompatible dimensions of check value and function." << std::endl;
std::exit(EXIT_FAILURE);
}
GaussLegendre glq;
Vector out(func.outdim());
double smol_error;
double prod_error;
{
WallTimer tim("\tSmolyak quadrature time: ");
SmolyakQuadrature quad(func.indim(), level, glq);
quad.integrate(func, level, sthread::detach_thread_group::max_parallel_threads, out);
out.add(-1.0, res);
smol_error = out.getMax();
std::cout << "\tNumber of Smolyak evaluations: " << quad.numEvals(level) << std::endl;
std::cout << "\tError: " << std::setw(16) << std::setprecision(12) << smol_error << std::endl;
}
{
WallTimer tim("\tProduct quadrature time: ");
ProductQuadrature quad(func.indim(), glq);
quad.integrate(func, level, sthread::detach_thread_group::max_parallel_threads, out);
out.add(-1.0, res);
prod_error = out.getMax();
std::cout << "\tNumber of product evaluations: " << quad.numEvals(level) << std::endl;
std::cout << "\tError: " << std::setw(16) << std::setprecision(12) << prod_error << std::endl;
}
return smol_error < tol && prod_error < tol;
}
bool
TestRunnable::qmc_cube(const VectorFunction &func, double res, double tol, int level)
{
Vector r(1);
double error1;
{
WallTimer tim("\tQuasi-Monte Carlo (Warnock scrambling) time: ");
WarnockPerScheme wps;
QMCarloCubeQuadrature qmc(func.indim(), level, wps);
// qmc.savePoints("warnock.txt", level);
qmc.integrate(func, level, sthread::detach_thread_group::max_parallel_threads, r);
error1 = std::max(res - r[0], r[0] - res);
std::cout << "\tQuasi-Monte Carlo (Warnock scrambling) error: " << std::setw(16) << std::setprecision(12) << error1 << std::endl;
}
double error2;
{
WallTimer tim("\tQuasi-Monte Carlo (reverse scrambling) time: ");
ReversePerScheme rps;
QMCarloCubeQuadrature qmc(func.indim(), level, rps);
// qmc.savePoints("reverse.txt", level);
qmc.integrate(func, level, sthread::detach_thread_group::max_parallel_threads, r);
error2 = std::max(res - r[0], r[0] - res);
std::cout << "\tQuasi-Monte Carlo (reverse scrambling) error: " << std::setw(16) << std::setprecision(12) << error2 << std::endl;
}
double error3;
{
WallTimer tim("\tQuasi-Monte Carlo (no scrambling) time: ");
IdentityPerScheme ips;
QMCarloCubeQuadrature qmc(func.indim(), level, ips);
// qmc.savePoints("identity.txt", level);
qmc.integrate(func, level, sthread::detach_thread_group::max_parallel_threads, r);
error3 = std::max(res - r[0], r[0] - res);
std::cout << "\tQuasi-Monte Carlo (no scrambling) error: " << std::setw(16) << std::setprecision(12) << error3 << std::endl;
}
return error1 < tol && error2 < tol && error3 < tol;
}
/****************************************************/
/* definition of TestRunnable subclasses */
/****************************************************/
class SmolyakNormalMom1 : public TestRunnable
{
public:
SmolyakNormalMom1()
: TestRunnable("Smolyak normal moments (dim=2, level=4, order=4)", 4, 2)
{
}
bool
run() const override
{
GeneralMatrix m(2, 2);
m.zeros(); m.get(0, 0) = 1; m.get(1, 1) = 1;
return smolyak_normal_moments(m, 4, 4);
}
};
class SmolyakNormalMom2 : public TestRunnable
{
public:
SmolyakNormalMom2()
: TestRunnable("Smolyak normal moments (dim=3, level=8, order=8)", 8, 3)
{
}
bool
run() const override
{
GeneralMatrix m(3, 3);
m.zeros();
m.get(0, 0) = 1; m.get(0, 2) = 0.5; m.get(1, 1) = 1;
m.get(1, 0) = 0.5; m.get(2, 2) = 2; m.get(2, 1) = 4;
return smolyak_normal_moments(m, 8, 8);
}
};
class ProductNormalMom1 : public TestRunnable
{
public:
ProductNormalMom1()
: TestRunnable("Product normal moments (dim=2, level=4, order=4)", 4, 2)
{
}
bool
run() const override
{
GeneralMatrix m(2, 2);
m.zeros(); m.get(0, 0) = 1; m.get(1, 1) = 1;
return product_normal_moments(m, 4, 4);
}
};
class ProductNormalMom2 : public TestRunnable
{
public:
ProductNormalMom2()
: TestRunnable("Product normal moments (dim=3, level=8, order=8)", 8, 3)
{
}
bool
run() const override
{
GeneralMatrix m(3, 3);
m.zeros();
m.get(0, 0) = 1; m.get(0, 2) = 0.5; m.get(1, 1) = 1;
m.get(1, 0) = 0.5; m.get(2, 2) = 2; m.get(2, 1) = 4;
return product_normal_moments(m, 8, 8);
}
};
// note that here we pass 1,1 to tls since smolyak has its own PascalTriangle
class F1GaussLegendre : public TestRunnable
{
public:
F1GaussLegendre()
: TestRunnable("Function1 Gauss-Legendre (dim=6, level=13", 1, 1)
{
}
bool
run() const override
{
Function1Trans f1(6);
Vector res(1); res[0] = 1.0;
return smolyak_product_cube(f1, res, 1e-2, 13);
}
};
class F1QuasiMCarlo : public TestRunnable
{
public:
F1QuasiMCarlo()
: TestRunnable("Function1 Quasi-Monte Carlo (dim=6, level=1000000)", 1, 1)
{
}
bool
run() const override
{
Function1 f1(6);
return qmc_cube(f1, 1.0, 1.e-4, 1000000);
}
};
int
main()
{
std::vector<std::unique_ptr<TestRunnable>> all_tests;
// fill in vector of all tests
all_tests.push_back(std::make_unique<SmolyakNormalMom1>());
all_tests.push_back(std::make_unique<SmolyakNormalMom2>());
all_tests.push_back(std::make_unique<ProductNormalMom1>());
all_tests.push_back(std::make_unique<ProductNormalMom2>());
all_tests.push_back(std::make_unique<F1GaussLegendre>());
all_tests.push_back(std::make_unique<F1QuasiMCarlo>());
// find maximum dimension and maximum nvar
int dmax = 0;
int nvmax = 0;
for (const auto &test : all_tests)
{
if (dmax < test->dim)
dmax = test->dim;
if (nvmax < test->nvar)
nvmax = test->nvar;
}
TLStatic::init(dmax, nvmax); // initialize library
// launch the tests
int success = 0;
for (const auto &test : all_tests)
{
try
{
if (test->test())
success++;
}
catch (const TLException &e)
{
std::cout << "Caught TL exception in <" << test->name << ">:" << std::endl;
e.print();
}
catch (SylvException &e)
{
std::cout << "Caught Sylv exception in <" << test->name << ">:" << std::endl;
e.printMessage();
}
}
int nfailed = all_tests.size() - success;
std::cout << "There were " << nfailed << " tests that failed out of "
<< all_tests.size() << " tests run." << std::endl;
if (nfailed)
return EXIT_FAILURE;
else
return EXIT_SUCCESS;
}