%% Homework 3 - Optimization Methods % Author: Claudio Maggioni % % Note: exercises are not in the right order due to matlab constraints of % functions inside of scripts. clc clear close all % Set to non-zero to generate LaTeX for graphs enable_m2tikz = 0; if enable_m2tikz addpath /home/claudio/git/matlab2tikz/src else matlab2tikz = @(a,b,c) 0; end syms x y; f = (1 - x)^2 + 100 * (y - x^2)^2; global fl fl = matlabFunction(f); %% 1.2 - Minimizing the Rosenbrock function [x1, xs1, gs1] = Newton(f, [0;0], 50000, 1e-6, true); [x2, xs2, gs2] = Newton(f, [0;0], 50000, 1e-6, false); [x3, xs3, gs3] = GD(f, [0;0], 50000, 1e-6, true); [x4, xs4, gs4] = GD(f, [0;0], 50000, 1e-6, false); %% 1.3 - Newton and GD solutions and energy plot plot(xs1(1, :), xs1(2, :), 'Marker', '.'); fprintf("Newton backtracking: it=%d\n", size(xs1, 2)-1); xlim([-0.01 1.01]) ylim([-0.01 1.01]) hold on; plot(xs2(1, :), xs2(2, :), 'Marker', '.'); fprintf("Newton: it=%d\n", size(xs2, 2)-1); plot(xs3(1, :), xs3(2, :), 'Marker', '.'); fprintf("GD backtracking: it=%d\n", size(xs3, 2)-1); plot(xs4(1, :), xs4(2, :), 'Marker', '.'); fprintf("GD: it=%d\n", size(xs4, 2)-1); hold off; legend('Newton + backtracking', 'Newton', 'GD + backtracking', 'GD (alpha=1)') sgtitle("Iterations of Newton and Gradient descent methods over 2D energy landscape"); matlab2tikz('showInfo', false, './ex1-3.tex'); figure; plot(xs4(1, :), xs4(2, :), 'Marker', '.'); legend('GD (alpha=1)') sgtitle("Iterations of Newton and Gradient descent methods over 2D energy landscape"); matlab2tikz('showInfo', false, './ex1-3-large.tex'); %% 2.3 - BGFS solution and energy plot figure; [x5, xs5, gs5] = BGFS(f, [0;0], eye(2), 50000, 1e-6); xlim([-0.01 1.01]) ylim([-0.01 1.01]) plot(xs5(1, :), xs5(2, :), 'Marker', '.'); fprintf("BGFS backtracking: it=%d\n", size(xs5, 2)-1); sgtitle("Iterations of BGFS method over 2D energy landscape"); matlab2tikz('showInfo', false, './ex2-3.tex'); %% 1.4 - Newton and GD gradient norm log figure; semilogy(0:size(xs1, 2)-1, gs1, 'Marker', '.'); ylim([5e-10, 1e12]); xlim([-1, 30]); hold on semilogy(0:size(xs2, 2)-1, gs2, 'Marker', '.'); semilogy(0:size(xs3, 2)-1, gs3, 'Marker', '.'); semilogy(0:size(xs4, 2)-1, gs4, 'Marker', '.'); hold off legend('Newton + backtracking', 'Newton', 'GD + backtracking', 'GD (alpha=1)') sgtitle("Gradient norm w.r.t. iteration number for Newton and GD methods"); matlab2tikz('showInfo', false, './ex1-4-grad.tex'); figure; plot(0:size(xs1, 2)-1, gs1, 'Marker', '.'); ylim([5e-10, 401]); xlim([-1, 30]); hold on plot(0:size(xs2, 2)-1, gs2, 'Marker', '.'); plot(0:size(xs3, 2)-1, gs3, 'Marker', '.'); plot(0:size(xs4, 2)-1, gs4, 'Marker', '.'); hold off legend('Newton + backtracking', 'Newton', 'GD + backtracking', 'GD (alpha=1)') sgtitle("Gradient norm w.r.t. iteration number for Newton and GD methods"); matlab2tikz('showInfo', false, './ex1-4-grad.tex'); figure; semilogy(0:size(xs3, 2)-1, gs3, 'Marker', '.'); ylim([1e-7, 1e10]); hold on semilogy(0:size(xs4, 2)-1, gs4, 'Marker', '.'); hold off legend('GD + backtracking', 'GD (alpha=1)') sgtitle("Gradient norm w.r.t. iteration number for Newton and GD methods"); matlab2tikz('showInfo', false, './ex1-4-grad-large.tex'); figure; ys1 = funvalues(xs1); ys2 = funvalues(xs2); ys3 = funvalues(xs3); ys4 = funvalues(xs4); ys5 = funvalues(xs5); semilogy(0:size(xs1, 2)-1, ys1, 'Marker', '.'); ylim([0, 1e12]); xlim([-1, 30]); hold on semilogy(0:size(xs2, 2)-1, ys2, 'Marker', '.'); semilogy(0:size(xs3, 2)-1, ys3, 'Marker', '.'); semilogy(0:size(xs4, 2)-1, ys4, 'Marker', '.'); hold off legend('Newton + backtracking', 'Newton', 'GD + backtracking', 'GD (alpha=1)') sgtitle("Objective function value w.r.t. iteration number for Newton and GD methods"); matlab2tikz('showInfo', false, './ex1-4-ys.tex'); plot(0:size(xs1, 2)-1, ys1, 'Marker', '.'); ylim([0, 101]); xlim([-1, 30]); hold on plot(0:size(xs2, 2)-1, ys2, 'Marker', '.'); plot(0:size(xs3, 2)-1, ys3, 'Marker', '.'); plot(0:size(xs4, 2)-1, ys4, 'Marker', '.'); hold off legend('Newton + backtracking', 'Newton', 'GD + backtracking', 'GD (alpha=1)') sgtitle("Objective function value w.r.t. iteration number for Newton and GD methods"); matlab2tikz('showInfo', false, './ex1-4-ys.tex'); figure; semilogy(0:size(xs3, 2)-1, ys3, 'Marker', '.'); hold on semilogy(0:size(xs4, 2)-1, ys4, 'Marker', '.'); hold off legend('GD + backtracking', 'GD (alpha=1)') sgtitle("Objective function value w.r.t. iteration number for Newton and GD methods"); matlab2tikz('showInfo', false, './ex1-4-ys-large.tex'); %% 2.4 - BGFS gradient norms plot figure; semilogy(0:size(xs5, 2)-1, gs5, 'Marker', '.'); sgtitle("Gradient norm w.r.t. iteration number for BGFS method"); matlab2tikz('showInfo', false, './ex2-4-grad.tex'); %% 2.4 - BGFS objective values plot figure; semilogy(0:size(xs5, 2)-1, ys5, 'Marker', '.'); sgtitle("Objective function value w.r.t. iteration number for BGFS methods"); matlab2tikz('showInfo', false, './ex2-4-ys.tex'); function ys = funvalues(xs) ys = zeros(1, size(xs, 2)); global fl for i = 1:size(xs, 2) ys(i) = fl(xs(1,i), xs(2,i)); end end