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-rw-r--r--Homework/math4610/src/eigen.c116
1 files changed, 116 insertions, 0 deletions
diff --git a/Homework/math4610/src/eigen.c b/Homework/math4610/src/eigen.c
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+++ b/Homework/math4610/src/eigen.c
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+#include "lizfcm.h"
+#include <assert.h>
+#include <math.h>
+#include <stdio.h>
+#include <string.h>
+
+double least_dominant_eigenvalue(Matrix_double *m, Array_double *v,
+ double tolerance, size_t max_iterations) {
+ return shift_inverse_power_eigenvalue(m, v, 0.0, tolerance, max_iterations);
+}
+
+double dominant_eigenvalue(Matrix_double *m, Array_double *v, double tolerance,
+ size_t max_iterations) {
+ assert(m->rows == m->cols);
+ assert(m->rows == v->size);
+
+ double error = tolerance;
+ size_t iter = max_iterations;
+ double lambda = 0.0;
+ Array_double *eigenvector_1 = copy_vector(v);
+
+ while (error >= tolerance && (--iter) > 0) {
+ Array_double *eigenvector_2 = m_dot_v(m, eigenvector_1);
+ Array_double *normalized_eigenvector_2 =
+ scale_v(eigenvector_2, 1.0 / linf_norm(eigenvector_2));
+ free_vector(eigenvector_2);
+ eigenvector_2 = normalized_eigenvector_2;
+
+ Array_double *mx = m_dot_v(m, eigenvector_2);
+ double new_lambda =
+ v_dot_v(mx, eigenvector_2) / v_dot_v(eigenvector_2, eigenvector_2);
+
+ error = fabs(new_lambda - lambda);
+ lambda = new_lambda;
+ free_vector(eigenvector_1);
+ eigenvector_1 = eigenvector_2;
+ }
+
+ return lambda;
+}
+
+double shift_inverse_power_eigenvalue(Matrix_double *m, Array_double *v,
+ double shift, double tolerance,
+ size_t max_iterations) {
+ assert(m->rows == m->cols);
+ assert(m->rows == v->size);
+
+ Matrix_double *m_c = copy_matrix(m);
+ for (size_t y = 0; y < m_c->rows; ++y)
+ m_c->data[y]->data[y] = m_c->data[y]->data[y] - shift;
+
+ double error = tolerance;
+ size_t iter = max_iterations;
+ double lambda = shift;
+ Array_double *eigenvector_1 = copy_vector(v);
+
+ while (error >= tolerance && (--iter) > 0) {
+ Array_double *eigenvector_2 = solve_matrix_lu_bsubst(m_c, eigenvector_1);
+ Array_double *normalized_eigenvector_2 =
+ scale_v(eigenvector_2, 1.0 / linf_norm(eigenvector_2));
+ free_vector(eigenvector_2);
+
+ Array_double *mx = m_dot_v(m, normalized_eigenvector_2);
+ double new_lambda =
+ v_dot_v(mx, normalized_eigenvector_2) /
+ v_dot_v(normalized_eigenvector_2, normalized_eigenvector_2);
+
+ error = fabs(new_lambda - lambda);
+ lambda = new_lambda;
+ free_vector(eigenvector_1);
+ eigenvector_1 = normalized_eigenvector_2;
+ }
+
+ return lambda;
+}
+
+Array_double *partition_find_eigenvalues(Matrix_double *m,
+ Matrix_double *guesses,
+ double tolerance,
+ size_t max_iterations) {
+ assert(guesses->rows >=
+ 2); // we need at least, the most and least dominant eigenvalues
+
+ double end = dominant_eigenvalue(m, guesses->data[guesses->rows - 1],
+ tolerance, max_iterations);
+ double begin =
+ least_dominant_eigenvalue(m, guesses->data[0], tolerance, max_iterations);
+
+ double delta = (end - begin) / guesses->rows;
+ Array_double *eigenvalues = InitArrayWithSize(double, guesses->rows, 0.0);
+ for (size_t i = 0; i < guesses->rows; i++) {
+ double box_midpoint = ((delta * i) + (delta * (i + 1))) / 2;
+
+ double nearest_eigenvalue = shift_inverse_power_eigenvalue(
+ m, guesses->data[i], box_midpoint, tolerance, max_iterations);
+
+ eigenvalues->data[i] = nearest_eigenvalue;
+ }
+
+ return eigenvalues;
+}
+
+Matrix_double *leslie_matrix(Array_double *age_class_surivor_ratio,
+ Array_double *age_class_offspring) {
+ assert(age_class_surivor_ratio->size + 1 == age_class_offspring->size);
+
+ Matrix_double *leslie = InitMatrixWithSize(double, age_class_offspring->size,
+ age_class_offspring->size, 0.0);
+
+ free_vector(leslie->data[0]);
+ leslie->data[0] = copy_vector(age_class_offspring);
+
+ for (size_t i = 0; i < age_class_surivor_ratio->size; i++)
+ leslie->data[i + 1]->data[i] = age_class_surivor_ratio->data[i];
+ return leslie;
+}