import numpy as np from copy import deepcopy from numpy.linalg import norm from numpy.testing import (TestCase, assert_array_almost_equal, assert_array_equal, assert_array_less) from scipy.optimize import (BFGS, SR1) class Rosenbrock: """Rosenbrock function. The following optimization problem: minimize sum(100.0*(x[1:] - x[:-1]**2.0)**2.0 + (1 - x[:-1])**2.0) """ def __init__(self, n=2, random_state=0): rng = np.random.RandomState(random_state) self.x0 = rng.uniform(-1, 1, n) self.x_opt = np.ones(n) def fun(self, x): x = np.asarray(x) r = np.sum(100.0 * (x[1:] - x[:-1]**2.0)**2.0 + (1 - x[:-1])**2.0, axis=0) return r def grad(self, x): x = np.asarray(x) xm = x[1:-1] xm_m1 = x[:-2] xm_p1 = x[2:] der = np.zeros_like(x) der[1:-1] = (200 * (xm - xm_m1**2) - 400 * (xm_p1 - xm**2) * xm - 2 * (1 - xm)) der[0] = -400 * x[0] * (x[1] - x[0]**2) - 2 * (1 - x[0]) der[-1] = 200 * (x[-1] - x[-2]**2) return der def hess(self, x): x = np.atleast_1d(x) H = np.diag(-400 * x[:-1], 1) - np.diag(400 * x[:-1], -1) diagonal = np.zeros(len(x), dtype=x.dtype) diagonal[0] = 1200 * x[0]**2 - 400 * x[1] + 2 diagonal[-1] = 200 diagonal[1:-1] = 202 + 1200 * x[1:-1]**2 - 400 * x[2:] H = H + np.diag(diagonal) return H class TestHessianUpdateStrategy(TestCase): def test_hessian_initialization(self): quasi_newton = (BFGS(), SR1()) for qn in quasi_newton: qn.initialize(5, 'hess') B = qn.get_matrix() assert_array_equal(B, np.eye(5)) # For this list of points, it is known # that no exception occur during the # Hessian update. Hence no update is # skiped or damped. def test_rosenbrock_with_no_exception(self): # Define auxiliar problem prob = Rosenbrock(n=5) # Define iteration points x_list = [[0.0976270, 0.4303787, 0.2055267, 0.0897663, -0.15269040], [0.1847239, 0.0505757, 0.2123832, 0.0255081, 0.00083286], [0.2142498, -0.0188480, 0.0503822, 0.0347033, 0.03323606], [0.2071680, -0.0185071, 0.0341337, -0.0139298, 0.02881750], [0.1533055, -0.0322935, 0.0280418, -0.0083592, 0.01503699], [0.1382378, -0.0276671, 0.0266161, -0.0074060, 0.02801610], [0.1651957, -0.0049124, 0.0269665, -0.0040025, 0.02138184], [0.2354930, 0.0443711, 0.0173959, 0.0041872, 0.00794563], [0.4168118, 0.1433867, 0.0111714, 0.0126265, -0.00658537], [0.4681972, 0.2153273, 0.0225249, 0.0152704, -0.00463809], [0.6023068, 0.3346815, 0.0731108, 0.0186618, -0.00371541], [0.6415743, 0.3985468, 0.1324422, 0.0214160, -0.00062401], [0.7503690, 0.5447616, 0.2804541, 0.0539851, 0.00242230], [0.7452626, 0.5644594, 0.3324679, 0.0865153, 0.00454960], [0.8059782, 0.6586838, 0.4229577, 0.1452990, 0.00976702], [0.8549542, 0.7226562, 0.4991309, 0.2420093, 0.02772661], [0.8571332, 0.7285741, 0.5279076, 0.2824549, 0.06030276], [0.8835633, 0.7727077, 0.5957984, 0.3411303, 0.09652185], [0.9071558, 0.8299587, 0.6771400, 0.4402896, 0.17469338], [0.9190793, 0.8486480, 0.7163332, 0.5083780, 0.26107691], [0.9371223, 0.8762177, 0.7653702, 0.5773109, 0.32181041], [0.9554613, 0.9119893, 0.8282687, 0.6776178, 0.43162744], [0.9545744, 0.9099264, 0.8270244, 0.6822220, 0.45237623], [0.9688112, 0.9351710, 0.8730961, 0.7546601, 0.56622448], [0.9743227, 0.9491953, 0.9005150, 0.8086497, 0.64505437], [0.9807345, 0.9638853, 0.9283012, 0.8631675, 0.73812581], [0.9886746, 0.9777760, 0.9558950, 0.9123417, 0.82726553], [0.9899096, 0.9803828, 0.9615592, 0.9255600, 0.85822149], [0.9969510, 0.9935441, 0.9864657, 0.9726775, 0.94358663], [0.9979533, 0.9960274, 0.9921724, 0.9837415, 0.96626288], [0.9995981, 0.9989171, 0.9974178, 0.9949954, 0.99023356], [1.0002640, 1.0005088, 1.0010594, 1.0021161, 1.00386912], [0.9998903, 0.9998459, 0.9997795, 0.9995484, 0.99916305], [1.0000008, 0.9999905, 0.9999481, 0.9998903, 0.99978047], [1.0000004, 0.9999983, 1.0000001, 1.0000031, 1.00000297], [0.9999995, 1.0000003, 1.0000005, 1.0000001, 1.00000032], [0.9999999, 0.9999997, 0.9999994, 0.9999989, 0.99999786], [0.9999999, 0.9999999, 0.9999999, 0.9999999, 0.99999991]] # Get iteration points grad_list = [prob.grad(x) for x in x_list] delta_x = [np.array(x_list[i+1])-np.array(x_list[i]) for i in range(len(x_list)-1)] delta_grad = [grad_list[i+1]-grad_list[i] for i in range(len(grad_list)-1)] # Check curvature condition for i in range(len(delta_x)): s = delta_x[i] y = delta_grad[i] if np.dot(s, y) <= 0: raise ArithmeticError() # Define QuasiNewton update for quasi_newton in (BFGS(init_scale=1, min_curvature=1e-4), SR1(init_scale=1)): hess = deepcopy(quasi_newton) inv_hess = deepcopy(quasi_newton) hess.initialize(len(x_list[0]), 'hess') inv_hess.initialize(len(x_list[0]), 'inv_hess') # Compare the hessian and its inverse for i in range(len(delta_x)): s = delta_x[i] y = delta_grad[i] hess.update(s, y) inv_hess.update(s, y) B = hess.get_matrix() H = inv_hess.get_matrix() assert_array_almost_equal(np.linalg.inv(B), H, decimal=10) B_true = prob.hess(x_list[i+1]) assert_array_less(norm(B - B_true)/norm(B_true), 0.1) def test_SR1_skip_update(self): # Define auxiliary problem prob = Rosenbrock(n=5) # Define iteration points x_list = [[0.0976270, 0.4303787, 0.2055267, 0.0897663, -0.15269040], [0.1847239, 0.0505757, 0.2123832, 0.0255081, 0.00083286], [0.2142498, -0.0188480, 0.0503822, 0.0347033, 0.03323606], [0.2071680, -0.0185071, 0.0341337, -0.0139298, 0.02881750], [0.1533055, -0.0322935, 0.0280418, -0.0083592, 0.01503699], [0.1382378, -0.0276671, 0.0266161, -0.0074060, 0.02801610], [0.1651957, -0.0049124, 0.0269665, -0.0040025, 0.02138184], [0.2354930, 0.0443711, 0.0173959, 0.0041872, 0.00794563], [0.4168118, 0.1433867, 0.0111714, 0.0126265, -0.00658537], [0.4681972, 0.2153273, 0.0225249, 0.0152704, -0.00463809], [0.6023068, 0.3346815, 0.0731108, 0.0186618, -0.00371541], [0.6415743, 0.3985468, 0.1324422, 0.0214160, -0.00062401], [0.7503690, 0.5447616, 0.2804541, 0.0539851, 0.00242230], [0.7452626, 0.5644594, 0.3324679, 0.0865153, 0.00454960], [0.8059782, 0.6586838, 0.4229577, 0.1452990, 0.00976702], [0.8549542, 0.7226562, 0.4991309, 0.2420093, 0.02772661], [0.8571332, 0.7285741, 0.5279076, 0.2824549, 0.06030276], [0.8835633, 0.7727077, 0.5957984, 0.3411303, 0.09652185], [0.9071558, 0.8299587, 0.6771400, 0.4402896, 0.17469338]] # Get iteration points grad_list = [prob.grad(x) for x in x_list] delta_x = [np.array(x_list[i+1])-np.array(x_list[i]) for i in range(len(x_list)-1)] delta_grad = [grad_list[i+1]-grad_list[i] for i in range(len(grad_list)-1)] hess = SR1(init_scale=1, min_denominator=1e-2) hess.initialize(len(x_list[0]), 'hess') # Compare the Hessian and its inverse for i in range(len(delta_x)-1): s = delta_x[i] y = delta_grad[i] hess.update(s, y) # Test skip update B = np.copy(hess.get_matrix()) s = delta_x[17] y = delta_grad[17] hess.update(s, y) B_updated = np.copy(hess.get_matrix()) assert_array_equal(B, B_updated) def test_BFGS_skip_update(self): # Define auxiliar problem prob = Rosenbrock(n=5) # Define iteration points x_list = [[0.0976270, 0.4303787, 0.2055267, 0.0897663, -0.15269040], [0.1847239, 0.0505757, 0.2123832, 0.0255081, 0.00083286], [0.2142498, -0.0188480, 0.0503822, 0.0347033, 0.03323606], [0.2071680, -0.0185071, 0.0341337, -0.0139298, 0.02881750], [0.1533055, -0.0322935, 0.0280418, -0.0083592, 0.01503699], [0.1382378, -0.0276671, 0.0266161, -0.0074060, 0.02801610], [0.1651957, -0.0049124, 0.0269665, -0.0040025, 0.02138184]] # Get iteration points grad_list = [prob.grad(x) for x in x_list] delta_x = [np.array(x_list[i+1])-np.array(x_list[i]) for i in range(len(x_list)-1)] delta_grad = [grad_list[i+1]-grad_list[i] for i in range(len(grad_list)-1)] hess = BFGS(init_scale=1, min_curvature=10) hess.initialize(len(x_list[0]), 'hess') # Compare the Hessian and its inverse for i in range(len(delta_x)-1): s = delta_x[i] y = delta_grad[i] hess.update(s, y) # Test skip update B = np.copy(hess.get_matrix()) s = delta_x[5] y = delta_grad[5] hess.update(s, y) B_updated = np.copy(hess.get_matrix()) assert_array_equal(B, B_updated)