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Integration convergence using Sobol' sequence: removing the first point
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"""Integration convergence using Sobol' sequence: removing the first point. | |
Compute the convergence rate for integrating functions using Sobol' low | |
discrepancy sequence [1]_. We are interested in measuring the effect of | |
removing the first point of the sequence ([0, ...]). | |
Two sets of functions are considered: | |
(i) The first set of functions are synthetic examples specifically designed | |
to verify the correctness of the implementation [3]_. | |
(ii) The second set is categorized into types A, B and C [2]_. These categories | |
state how the variables are important with respect to the function output: | |
- type A, Functions with a low number of important variables, | |
- type B, Functions with almost equally important variables but with | |
low interactions with each other, | |
- type C, Functions with almost equally important variables and with | |
high interactions with each other. | |
The theoretical integral for these functions in the unit hypercube is 1. | |
Quality of the integration is computed using the Root Mean Square Error (RMSE). | |
.. note:: This script relies on Scipy >= 1.7. Pull Request: | |
https://github.com/scipy/scipy/pull/10844 | |
References | |
---------- | |
.. [1] I. M. Sobol. The distribution of points in a cube and the accurate | |
evaluation of integrals. Zh. Vychisl. Mat. i Mat. Phys., 7:784-802, | |
1967. | |
.. [2] Sergei Kucherenko and Daniel Albrecht and Andrea Saltelli. Exploring | |
multi-dimensional spaces: a Comparison of Latin Hypercube and Quasi Monte | |
Carlo Sampling Techniques. arXiv 1505.02350, 2015. | |
.. [3] Art B. Owen. On dropping the first Sobol' point. arXiv 2008.08051, | |
2020. | |
--------------------------- | |
MIT License | |
Copyright (c) 2020 Pamphile Tupui ROY | |
Permission is hereby granted, free of charge, to any person obtaining a copy | |
of this software and associated documentation files (the "Software"), to deal | |
in the Software without restriction, including without limitation the rights | |
to use, copy, modify, merge, publish, distribute, sublicense, and/or sell | |
copies of the Software, and to permit persons to whom the Software is | |
furnished to do so, subject to the following conditions: | |
The above copyright notice and this permission notice shall be included in all | |
copies or substantial portions of the Software. | |
THE SOFTWARE IS PROVIDED "AS IS", WITHOUT WARRANTY OF ANY KIND, EXPRESS OR | |
IMPLIED, INCLUDING BUT NOT LIMITED TO THE WARRANTIES OF MERCHANTABILITY, | |
FITNESS FOR A PARTICULAR PURPOSE AND NONINFRINGEMENT. IN NO EVENT SHALL THE | |
AUTHORS OR COPYRIGHT HOLDERS BE LIABLE FOR ANY CLAIM, DAMAGES OR OTHER | |
LIABILITY, WHETHER IN AN ACTION OF CONTRACT, TORT OR OTHERWISE, ARISING FROM, | |
OUT OF OR IN CONNECTION WITH THE SOFTWARE OR THE USE OR OTHER DEALINGS IN THE | |
SOFTWARE. | |
""" | |
import os | |
from collections import namedtuple | |
import numpy as np | |
from scipy.stats import qmc | |
from scipy import stats | |
from scipy.spatial.distance import cdist | |
import matplotlib.pyplot as plt | |
from matplotlib.container import ErrorbarContainer | |
from matplotlib.legend_handler import HandlerErrorbar | |
path = 'sobol_convergence' | |
os.makedirs(path, exist_ok=True) | |
generate = True | |
n_conv = 999 | |
ns_gen = 2 ** np.arange(4, 13) # 13 | |
# Functions definitions | |
_exp1 = 1 - np.exp(1) | |
def art_1(sample): | |
# dim 5, true value 0 | |
return np.sum(np.exp(sample) + _exp1, axis=1) | |
def art_2(sample): | |
# dim 3, true value 5/3 + 5*(5 - 1)/4 | |
return np.sum(sample, axis=1) ** 2 | |
def art_3(sample): | |
# dim 3, true value 0 | |
return np.prod(np.exp(sample) + _exp1, axis=1) | |
def type_a(sample, dim=30): | |
# true value 1 | |
a = np.arange(1, dim + 1) | |
f = 1. | |
for i in range(dim): | |
f *= (abs(4. * sample[:, i] - 2) + a[i]) / (1. + a[i]) | |
return f | |
def type_b(sample, dim=30): | |
# true value 1 | |
f = 1. | |
for d in range(1, dim + 1): | |
f *= (d - sample[:, d - 1]) / (d - 0.5) | |
return f | |
def type_c(sample, dim=10): | |
# true value 1 | |
f = 2 ** dim * np.prod(sample, axis=1) | |
return f | |
functions = namedtuple('functions', ['name', 'func', 'dim', 'ref']) | |
benchmark = [ | |
functions('Art 1', art_1, 5, 0), | |
functions('Art 2', art_2, 5, 5 / 3 + 5 * (5 - 1) / 4), | |
functions('Art 3', art_3, 3, 0), | |
functions('Type A', type_a, 30, 1), | |
functions('Type B', type_b, 30, 1), | |
functions('Type C', type_c, 10, 1) | |
] | |
def conv_method(sampler, func, n_samples, n_conv, ref): | |
samples = [sampler(n_samples) for _ in range(n_conv)] | |
samples = np.array(samples) | |
evals = [np.sum(func(sample)) / n_samples for sample in samples] | |
squared_errors = (ref - np.array(evals)) ** 2 | |
rmse = (np.sum(squared_errors) / n_conv) ** 0.5 | |
if n_conv > 1: | |
ci = np.sqrt(stats.t.interval(0.95, len(squared_errors) - 1, | |
loc=squared_errors.mean(), | |
scale=stats.sem(squared_errors))) | |
ci = [rmse - ci[0], ci[1] - rmse] | |
else: | |
ci = [0, 0] | |
#c1, c2 = stats.chi2.ppf([0.025, 1 - 0.025], n_conv) | |
#ci = [rmse * (1 - np.sqrt(n_conv/c2)), rmse * (np.sqrt(n_conv/c1) - 1)] | |
return rmse, ci[0], ci[1] # 2 * np.std(evals) / np.sqrt(n_conv) | |
# Analysis | |
if generate: | |
sample_mc_rmse = [] | |
sample_sobol_0_rmse = [] | |
sample_sobol_no_0_rmse = [] | |
sample_sobol_scramble_0_rmse = [] | |
sample_sobol_scramble_no_0_rmse = [] | |
for ns in ns_gen: | |
print(f'-> ns={ns}') | |
_sample_mc_rmse = [] | |
_sample_sobol_0_rmse = [] | |
_sample_sobol_no_0_rmse = [] | |
_sample_sobol_scramble_0_rmse = [] | |
_sample_sobol_scramble_no_0_rmse = [] | |
for case in benchmark: | |
# Monte Carlo | |
sampler_mc = lambda x: np.random.random((x, case.dim)) | |
conv_res = conv_method(sampler_mc, case.func, ns, n_conv, case.ref) | |
_sample_mc_rmse.append(conv_res) | |
# Sobol' with zero | |
engine = qmc.Sobol(d=case.dim, scramble=False) | |
conv_res = conv_method(engine.random, case.func, ns, 1, case.ref) | |
_sample_sobol_0_rmse.append(conv_res) | |
# Sobol' without zero | |
def _sampler_sobol_no_0(ns): | |
engine = qmc.Sobol(d=case.dim, scramble=False) | |
return engine.random(ns + 1)[1:] | |
conv_res = conv_method(_sampler_sobol_no_0, case.func, ns - 1, 1, case.ref) | |
_sample_sobol_no_0_rmse.append(conv_res) | |
# Sobol' scrambled with zero | |
def _sampler_sobol_scrambled_0(ns): | |
engine = qmc.Sobol(d=case.dim, scramble=True) | |
return engine.random(ns) | |
conv_res = conv_method(_sampler_sobol_scrambled_0, case.func, ns, n_conv, case.ref) | |
_sample_sobol_scramble_0_rmse.append(conv_res) | |
# Sobol' scrambled without zero | |
def _sampler_sobol_scrambled_no_0(ns): | |
engine = qmc.Sobol(d=case.dim, scramble=True) | |
return engine.random(ns + 1)[1:] | |
conv_res = conv_method(_sampler_sobol_scrambled_no_0, case.func, ns - 1, n_conv, case.ref) | |
_sample_sobol_scramble_no_0_rmse.append(conv_res) | |
sample_mc_rmse.append(_sample_mc_rmse) | |
sample_sobol_0_rmse.append(_sample_sobol_0_rmse) | |
sample_sobol_no_0_rmse.append(_sample_sobol_no_0_rmse) | |
sample_sobol_scramble_0_rmse.append(_sample_sobol_scramble_0_rmse) | |
sample_sobol_scramble_no_0_rmse.append(_sample_sobol_scramble_no_0_rmse) | |
np.save(os.path.join(path, 'mc.npy'), sample_mc_rmse) | |
np.save(os.path.join(path, 'sobol_0.npy'), sample_sobol_0_rmse) | |
np.save(os.path.join(path, 'sobol_no_0.npy'), sample_sobol_no_0_rmse) | |
np.save(os.path.join(path, 'sobol_scramble_0.npy'), sample_sobol_scramble_0_rmse) | |
np.save(os.path.join(path, 'sobol_scramble_no_0.npy'), sample_sobol_scramble_no_0_rmse) | |
else: | |
sample_mc_rmse = np.load(os.path.join(path, 'mc.npy')) | |
sample_sobol_0_rmse = np.load(os.path.join(path, 'sobol_0.npy')) | |
sample_sobol_no_0_rmse = np.load(os.path.join(path, 'sobol_no_0.npy')) | |
sample_sobol_scramble_0_rmse = np.load(os.path.join(path, 'sobol_scramble_0.npy')) | |
sample_sobol_scramble_no_0_rmse = np.load(os.path.join(path, 'sobol_scramble_no_0.npy')) | |
sample_mc_rmse = np.array(sample_mc_rmse) | |
sample_sobol_0_rmse = np.array(sample_sobol_0_rmse) | |
sample_sobol_no_0_rmse = np.array(sample_sobol_no_0_rmse) | |
sample_sobol_scramble_0_rmse = np.array(sample_sobol_scramble_0_rmse) | |
sample_sobol_scramble_no_0_rmse = np.array(sample_sobol_scramble_no_0_rmse) | |
# Plot | |
for i, case in enumerate(benchmark): | |
func = case.name | |
fig, ax = plt.subplots() | |
ratio_1 = sample_sobol_0_rmse[:, i, 0][0] / ns_gen[0] ** (-2/2) | |
# ratio_1 = sample_sobol_scramble_rmse[:, i, 0][0] / ns_gen[0] ** (-2 / 2) | |
# ratio_2 = sample_sobol_scramble_0_rmse[:, i, 0][0] / (np.log2(ns_gen[0]) * ns_gen[0] ** (-3 / 2)) | |
ratio_3 = sample_sobol_scramble_0_rmse[:, i, 0][0] / (ns_gen[0] ** (-3 / 2)) | |
# ax.plot(ns_gen, ns_gen ** (-1 / 2), ls='-', c='k') | |
ax.plot(ns_gen, ns_gen ** (-2/2) * ratio_1, ls='-', c='k') | |
# ax.plot(ns_gen, np.log2(ns_gen) * ns_gen ** (-3 / 2) * ratio_2, ls='-.') | |
ax.plot(ns_gen, ns_gen ** (-3 / 2) * ratio_3, ls='-', c='k') | |
#ax.errorbar(ns_gen, sample_mc_rmse[:, i, 0], sample_mc_rmse[:, i, 1], | |
# ls='None', marker='x', label="MC", c='k') | |
ax.plot(ns_gen, sample_sobol_no_0_rmse[:, i, 0], | |
ls='None', marker='s', label="Sobol' no 0", c='k') | |
ax.plot(ns_gen, sample_sobol_0_rmse[:, i, 0], | |
ls='None', marker='o', label="Sobol' with 0", c='k') | |
ax.errorbar(ns_gen, sample_sobol_scramble_no_0_rmse[:, i, 0], | |
yerr=sample_sobol_scramble_no_0_rmse[:, i, 1:3].T.reshape(2, -1), | |
ls='None', marker='+', label="Sobol' scrambled no 0", c='k') | |
ax.errorbar(ns_gen, sample_sobol_scramble_0_rmse[:, i, 0], | |
yerr=sample_sobol_scramble_0_rmse[:, i, 1:3].T.reshape(2, -1), | |
ls='None', marker='^', label="Sobol' scrambled with 0", c='k') | |
ax.set_xlabel(r'$N_s$') | |
ax.set_xscale('log') | |
ax.set_yscale('log') | |
ax.set_xticks(ns_gen) | |
ax.set_xticklabels([fr'$2^{{{ns}}}$' for ns in np.arange(4, 20)]) | |
ax.set_ylabel(r'$\epsilon$') | |
fig.legend(labelspacing=0.7, bbox_to_anchor=(0.5, 0.43), | |
handler_map={ErrorbarContainer: HandlerErrorbar(xerr_size=0.7)}) | |
fig.tight_layout() | |
#plt.show() | |
fig.savefig(os.path.join(path, f'sobol_conv_integration_{func}.pdf'), | |
transparent=True, bbox_inches='tight') | |
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Type A:

Type B:

Type C:
