// (C) Copyright Eric Niebler, Olivier Gygi 2006. // Use, modification and distribution are subject to the // Boost Software License, Version 1.0. (See accompanying file // LICENSE_1_0.txt or copy at http://www.boost.org/LICENSE_1_0.txt) // Test case for weighted_p_square_cumul_dist.hpp #include #include #include #include #include #include #include #include #include #include using namespace boost; using namespace unit_test; using namespace boost::accumulators; /////////////////////////////////////////////////////////////////////////////// // erf() not known by VC++ compiler! // my_erf() computes error function by numerically integrating with trapezoidal rule // double my_erf(double const& x, int const& n = 1000) { double sum = 0.; double delta = x/n; for (int i = 1; i < n; ++i) sum += std::exp(-i*i*delta*delta) * delta; sum += 0.5 * delta * (1. + std::exp(-x*x)); return sum * 2. / std::sqrt(3.141592653); } /////////////////////////////////////////////////////////////////////////////// // test_stat // void test_stat() { // tolerance in % double epsilon = 4; typedef accumulator_set, double > accumulator_t; accumulator_t acc_upper(p_square_cumulative_distribution_num_cells = 100); accumulator_t acc_lower(p_square_cumulative_distribution_num_cells = 100); // two random number generators double mu_upper = 1.0; double mu_lower = -1.0; boost::lagged_fibonacci607 rng; boost::normal_distribution<> mean_sigma_upper(mu_upper,1); boost::normal_distribution<> mean_sigma_lower(mu_lower,1); boost::variate_generator > normal_upper(rng, mean_sigma_upper); boost::variate_generator > normal_lower(rng, mean_sigma_lower); for (std::size_t i=0; i<100000; ++i) { double sample = normal_upper(); acc_upper(sample, weight = std::exp(-mu_upper * (sample - 0.5 * mu_upper))); } for (std::size_t i=0; i<100000; ++i) { double sample = normal_lower(); acc_lower(sample, weight = std::exp(-mu_lower * (sample - 0.5 * mu_lower))); } typedef iterator_range >::iterator > histogram_type; histogram_type histogram_upper = weighted_p_square_cumulative_distribution(acc_upper); histogram_type histogram_lower = weighted_p_square_cumulative_distribution(acc_lower); // Note that applying importance sampling results in a region of the distribution // to be estimated more accurately and another region to be estimated less accurately // than without importance sampling, i.e., with unweighted samples for (std::size_t i = 0; i < histogram_upper.size(); ++i) { // problem with small results: epsilon is relative (in percent), not absolute! // check upper region of distribution if ( histogram_upper[i].second > 0.1 ) BOOST_CHECK_CLOSE( 0.5 * (1.0 + my_erf( histogram_upper[i].first / std::sqrt(2.0) )), histogram_upper[i].second, epsilon ); // check lower region of distribution if ( histogram_lower[i].second < -0.1 ) BOOST_CHECK_CLOSE( 0.5 * (1.0 + my_erf( histogram_lower[i].first / std::sqrt(2.0) )), histogram_lower[i].second, epsilon ); } } /////////////////////////////////////////////////////////////////////////////// // init_unit_test_suite // test_suite* init_unit_test_suite( int argc, char* argv[] ) { test_suite *test = BOOST_TEST_SUITE("weighted_p_square_cumulative_distribution test"); test->add(BOOST_TEST_CASE(&test_stat)); return test; }