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-rw-r--r--test/eigen2/eigen2_regression.cpp136
1 files changed, 0 insertions, 136 deletions
diff --git a/test/eigen2/eigen2_regression.cpp b/test/eigen2/eigen2_regression.cpp
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index c68b58da8..000000000
--- a/test/eigen2/eigen2_regression.cpp
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@@ -1,136 +0,0 @@
-// This file is part of Eigen, a lightweight C++ template library
-// for linear algebra. Eigen itself is part of the KDE project.
-//
-// Copyright (C) 2008 Benoit Jacob <jacob.benoit.1@gmail.com>
-//
-// This Source Code Form is subject to the terms of the Mozilla
-// Public License v. 2.0. If a copy of the MPL was not distributed
-// with this file, You can obtain one at http://mozilla.org/MPL/2.0/.
-
-#include "main.h"
-#include <Eigen/LeastSquares>
-
-template<typename VectorType,
- typename HyperplaneType>
-void makeNoisyCohyperplanarPoints(int numPoints,
- VectorType **points,
- HyperplaneType *hyperplane,
- typename VectorType::Scalar noiseAmplitude)
-{
- typedef typename VectorType::Scalar Scalar;
- const int size = points[0]->size();
- // pick a random hyperplane, store the coefficients of its equation
- hyperplane->coeffs().resize(size + 1);
- for(int j = 0; j < size + 1; j++)
- {
- do {
- hyperplane->coeffs().coeffRef(j) = ei_random<Scalar>();
- } while(ei_abs(hyperplane->coeffs().coeff(j)) < 0.5);
- }
-
- // now pick numPoints random points on this hyperplane
- for(int i = 0; i < numPoints; i++)
- {
- VectorType& cur_point = *(points[i]);
- do
- {
- cur_point = VectorType::Random(size)/*.normalized()*/;
- // project cur_point onto the hyperplane
- Scalar x = - (hyperplane->coeffs().start(size).cwise()*cur_point).sum();
- cur_point *= hyperplane->coeffs().coeff(size) / x;
- } while( cur_point.norm() < 0.5
- || cur_point.norm() > 2.0 );
- }
-
- // add some noise to these points
- for(int i = 0; i < numPoints; i++ )
- *(points[i]) += noiseAmplitude * VectorType::Random(size);
-}
-
-template<typename VectorType>
-void check_linearRegression(int numPoints,
- VectorType **points,
- const VectorType& original,
- typename VectorType::Scalar tolerance)
-{
- int size = points[0]->size();
- assert(size==2);
- VectorType result(size);
- linearRegression(numPoints, points, &result, 1);
- typename VectorType::Scalar error = (result - original).norm() / original.norm();
- VERIFY(ei_abs(error) < ei_abs(tolerance));
-}
-
-template<typename VectorType,
- typename HyperplaneType>
-void check_fitHyperplane(int numPoints,
- VectorType **points,
- const HyperplaneType& original,
- typename VectorType::Scalar tolerance)
-{
- int size = points[0]->size();
- HyperplaneType result(size);
- fitHyperplane(numPoints, points, &result);
- result.coeffs() *= original.coeffs().coeff(size)/result.coeffs().coeff(size);
- typename VectorType::Scalar error = (result.coeffs() - original.coeffs()).norm() / original.coeffs().norm();
- std::cout << ei_abs(error) << " xxx " << ei_abs(tolerance) << std::endl;
- VERIFY(ei_abs(error) < ei_abs(tolerance));
-}
-
-void test_eigen2_regression()
-{
- for(int i = 0; i < g_repeat; i++)
- {
-#ifdef EIGEN_TEST_PART_1
- {
- Vector2f points2f [1000];
- Vector2f *points2f_ptrs [1000];
- for(int i = 0; i < 1000; i++) points2f_ptrs[i] = &(points2f[i]);
- Vector2f coeffs2f;
- Hyperplane<float,2> coeffs3f;
- makeNoisyCohyperplanarPoints(1000, points2f_ptrs, &coeffs3f, 0.01f);
- coeffs2f[0] = -coeffs3f.coeffs()[0]/coeffs3f.coeffs()[1];
- coeffs2f[1] = -coeffs3f.coeffs()[2]/coeffs3f.coeffs()[1];
- CALL_SUBTEST(check_linearRegression(10, points2f_ptrs, coeffs2f, 0.05f));
- CALL_SUBTEST(check_linearRegression(100, points2f_ptrs, coeffs2f, 0.01f));
- CALL_SUBTEST(check_linearRegression(1000, points2f_ptrs, coeffs2f, 0.002f));
- }
-#endif
-#ifdef EIGEN_TEST_PART_2
- {
- Vector2f points2f [1000];
- Vector2f *points2f_ptrs [1000];
- for(int i = 0; i < 1000; i++) points2f_ptrs[i] = &(points2f[i]);
- Hyperplane<float,2> coeffs3f;
- makeNoisyCohyperplanarPoints(1000, points2f_ptrs, &coeffs3f, 0.01f);
- CALL_SUBTEST(check_fitHyperplane(10, points2f_ptrs, coeffs3f, 0.05f));
- CALL_SUBTEST(check_fitHyperplane(100, points2f_ptrs, coeffs3f, 0.01f));
- CALL_SUBTEST(check_fitHyperplane(1000, points2f_ptrs, coeffs3f, 0.002f));
- }
-#endif
-#ifdef EIGEN_TEST_PART_3
- {
- Vector4d points4d [1000];
- Vector4d *points4d_ptrs [1000];
- for(int i = 0; i < 1000; i++) points4d_ptrs[i] = &(points4d[i]);
- Hyperplane<double,4> coeffs5d;
- makeNoisyCohyperplanarPoints(1000, points4d_ptrs, &coeffs5d, 0.01);
- CALL_SUBTEST(check_fitHyperplane(10, points4d_ptrs, coeffs5d, 0.05));
- CALL_SUBTEST(check_fitHyperplane(100, points4d_ptrs, coeffs5d, 0.01));
- CALL_SUBTEST(check_fitHyperplane(1000, points4d_ptrs, coeffs5d, 0.002));
- }
-#endif
-#ifdef EIGEN_TEST_PART_4
- {
- VectorXcd *points11cd_ptrs[1000];
- for(int i = 0; i < 1000; i++) points11cd_ptrs[i] = new VectorXcd(11);
- Hyperplane<std::complex<double>,Dynamic> *coeffs12cd = new Hyperplane<std::complex<double>,Dynamic>(11);
- makeNoisyCohyperplanarPoints(1000, points11cd_ptrs, coeffs12cd, 0.01);
- CALL_SUBTEST(check_fitHyperplane(100, points11cd_ptrs, *coeffs12cd, 0.025));
- CALL_SUBTEST(check_fitHyperplane(1000, points11cd_ptrs, *coeffs12cd, 0.006));
- delete coeffs12cd;
- for(int i = 0; i < 1000; i++) delete points11cd_ptrs[i];
- }
-#endif
- }
-}