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clever.py
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#!/usr/bin/env python3
# -*- coding: utf-8 -*-
"""
clever.py
Compute CLEVER score using collected Lipschitz constants
Copyright (C) 2017-2018, IBM Corp.
Copyright (C) 2017, Lily Weng <twweng@mit.edu>
and Huan Zhang <ecezhang@ucdavis.edu>
This program is licenced under the Apache 2.0 licence,
contained in the LICENCE file in this directory.
"""
import os
import sys
import glob
from functools import partial
from multiprocessing import Pool
import scipy
import scipy.io as sio
from scipy.stats import weibull_min
import scipy.optimize
import numpy as np
import argparse
import matplotlib
matplotlib.use('Agg')
import matplotlib.pyplot as plt
# We observe that the scipy.optimize.fmin optimizer (using Nelder–Mead method)
# sometimes diverges to very large parameters a, b and c. Thus, we add a very
# small regularization to the MLE optimization process to avoid this divergence
def fmin_with_reg(func, x0, args=(), xtol=1e-4, ftol=1e-4, maxiter=None, maxfun=None,
full_output=0, disp=1, retall=0, callback=None, initial_simplex=None, shape_reg = 0.01):
# print('my optimier with shape regularizer = {}'.format(shape_reg))
def func_with_reg(theta, x):
shape = theta[2]
log_likelyhood = func(theta, x)
reg = shape_reg * shape * shape
# penalize the shape parameter
return log_likelyhood + reg
return scipy.optimize.fmin(func_with_reg, x0, args, xtol, ftol, maxiter, maxfun,
full_output, disp, retall, callback, initial_simplex)
# fit using weibull_min.fit and run a K-S test
def fit_and_test(rescaled_sample, sample, loc_shift, shape_rescale, optimizer, c_i):
[c, loc, scale] = weibull_min.fit(-rescaled_sample, c_i, optimizer=optimizer)
loc = - loc_shift + loc * shape_rescale
scale *= shape_rescale
ks, pVal = scipy.stats.kstest(-sample, 'weibull_min', args = (c, loc, scale))
return c, loc, scale, ks, pVal
def plot_weibull(sample,c,loc,scale,ks,pVal,p,q,figname):
# compare the sample histogram and fitting result
fig, ax = plt.subplots(1,1)
x = np.linspace(-1.01*max(sample),-0.99*min(sample),100);
ax.plot(x,weibull_min.pdf(x,c,loc,scale),'r-',label='fitted pdf '+p+'-bnd')
ax.hist(-sample, density=True, bins=20, histtype='stepfilled')
ax.legend(loc='best', frameon=False)
plt.xlabel('-Lips_'+q)
plt.ylabel('pdf')
plt.title('c = {:.2f}, loc = {:.2f}, scale = {:.2f}, ks = {:.2f}, pVal = {:.2f}'.format(c,loc,scale,ks,pVal))
plt.savefig(figname)
plt.close()
#model = figname.split("_")[1]
#plt.savefig('./debug/'+model+'/'+figname)
#plt.show() # can be used to pause the program
# We observe than the MLE estimator in scipy sometimes can converge to a bad
# value if the inital shape parameter c is too far from the true value. Thus we
# test a few different initializations and choose the one with best p-value all
# the initializations are tested in parallel; remove some of them to speedup
# computation.
# c_init = [0.01,0.1,0.5,1,5,10,20,50,70,100,200]
c_init = [0.1,1,5,10,20,50,100]
def get_best_weibull_fit(sample, use_reg = False, shape_reg = 0.01):
# initialize dictionary to save the fitting results
fitted_paras = {"c":[], "loc":[], "scale": [], "ks": [], "pVal": []}
# reshape the data into a better range
# this helps the MLE solver find the solution easier
loc_shift = np.amax(sample)
dist_range = np.amax(sample) - np.amin(sample)
# if dist_range > 2.5:
shape_rescale = dist_range
# else:
# shape_rescale = 1.0
print("shape rescale = {}".format(shape_rescale))
rescaled_sample = np.copy(sample)
rescaled_sample -= loc_shift
rescaled_sample /= shape_rescale
print("loc_shift = {}".format(loc_shift))
##print("rescaled_sample = {}".format(rescaled_sample))
# fit weibull distn: sample follows reverse weibull dist, so -sample follows weibull distribution
if use_reg:
results = pool.map(partial(fit_and_test, rescaled_sample, sample, loc_shift, shape_rescale, partial(fmin_with_reg, shape_reg = shape_reg)), c_init)
else:
results = pool.map(partial(fit_and_test, rescaled_sample, sample, loc_shift, shape_rescale, scipy.optimize.fmin), c_init)
for res, c_i in zip(results, c_init):
c = res[0]
loc = res[1]
scale = res[2]
ks = res[3]
pVal = res[4]
print("[DEBUG][L2] c_init = {:5.5g}, fitted c = {:6.2f}, loc = {:7.2f}, scale = {:7.2f}, ks = {:4.2f}, pVal = {:4.2f}, max = {:7.2f}".format(c_i,c,loc,scale,ks,pVal,loc_shift))
## plot every fitted result
#plot_weibull(sample,c,loc,scale,ks,pVal,p)
fitted_paras['c'].append(c)
fitted_paras['loc'].append(loc)
fitted_paras['scale'].append(scale)
fitted_paras['ks'].append(ks)
fitted_paras['pVal'].append(pVal)
# get the paras of best pVal among c_init
max_pVal = np.nanmax(fitted_paras['pVal'])
if np.isnan(max_pVal) or max_pVal < 0.001:
print("ill-conditioned samples. Using maximum sample value.")
# handle the ill conditioned case
return -1, -1, -max(sample), -1, -1, -1
max_pVal_idx = fitted_paras['pVal'].index(max_pVal)
c_init_best = c_init[max_pVal_idx]
c_best = fitted_paras['c'][max_pVal_idx]
loc_best = fitted_paras['loc'][max_pVal_idx]
scale_best = fitted_paras['scale'][max_pVal_idx]
ks_best = fitted_paras['ks'][max_pVal_idx]
pVal_best = fitted_paras['pVal'][max_pVal_idx]
return c_init_best, c_best, loc_best, scale_best, ks_best, pVal_best
# G_max is the input array of max values
# Return the Weibull position parameter
def get_lipschitz_estimate(G_max, norm = "L2", figname = "", use_reg = False, shape_reg = 0.01):
global plot_res
c_init, c, loc, scale, ks, pVal = get_best_weibull_fit(G_max, use_reg, shape_reg)
# the norm here is Lipschitz constant norm, not the bound's norm
if norm == "L1":
p = "i"; q = "1"
elif norm == "L2":
p = "2"; q = "2"
elif norm == "Li":
p = "1"; q = "i"
else:
print("Lipschitz norm is not in 1, 2, i!")
if plot_res is not None:
plot_res.get()
# plot_weibull(G_max,c,loc,scale,ks,pVal,p,q,figname)
if figname:
figname = figname + '_'+ "L"+ p + ".png"
plot_res = pool.apply_async(plot_weibull, (G_max,c,loc,scale,ks,pVal,p,q,figname))
return {'Lips_est':-loc, 'shape':c, 'loc': loc, 'scale': scale, 'ks': ks, 'pVal': pVal}
#return np.max(G_max)
# file name contains some information, like true_id, true_label and target_label
def parse_filename(filename):
basename = os.path.basename(filename)
name, _ = os.path.splitext(basename)
name_arr = name.split('_')
Nsamp = int(name_arr[0])
Niters = int(name_arr[1])
true_id = int(name_arr[2])
true_label = int(name_arr[3])
target_label = int(name_arr[4])
image_info = name_arr[5]
activation = name_arr[6]
order = name_arr[7][-1]
return Nsamp, Niters, true_id, true_label, target_label, image_info, activation, order
if __name__ == "__main__":
# parse command line parameters
parser = argparse.ArgumentParser(description='Compute CLEVER scores using collected gradient norm data.',
formatter_class=argparse.ArgumentDefaultsHelpFormatter)
parser.add_argument('data_folder', help='data folder path')
parser.add_argument('--min', dest='reduce_op', action='store_const',
default=lambda x: sum(x) / len(x) if len(x) > 0 else 0, const=min,
help='report min of all CLEVER scores instead of avg')
parser.add_argument('--user_type',
default="",
help='replace user type with string, used for ImageNet data processing')
parser.add_argument('--use_slope',
action="store_true",
help='report slope estimate. To use this option, collect_gradients.py needs to be run with --compute_slope')
parser.add_argument('--untargeted',
action="store_true",
help='process untargeted attack results (for MNIST and CIFAR)')
parser.add_argument('--num_samples',
type=int,
default=0,
help='the number of samples to use. Default 0 is to use all samples')
parser.add_argument('--num_images',
type=int,
default=0,
help='number of images to use, 0 to use all images')
parser.add_argument('--shape_reg',
default=0.01,
type=float,
help='to avoid the MLE solver in Scipy to diverge, we add a small regularization (default 0.01 is sufficient)')
parser.add_argument('--nthreads',
default=0,
type=int,
help='number of threads (default is len(c_init)+1)')
parser.add_argument('--plot_dir',
default='',
help='output path for weibull fit figures (empty to disable)')
parser.add_argument('--method',
default="mle_reg",
choices=['mle','mle_reg','maxsamp'],
help='Fitting algorithm. Please use mle_reg for best results')
args = vars(parser.parse_args())
reduce_op = args['reduce_op']
if args['plot_dir']:
os.system("mkdir -p " + args['plot_dir'])
print(args)
# create thread pool
if args['nthreads'] == 0:
args['nthreads'] = len(c_init) + 1
print("using {} threads".format(args['nthreads']))
pool = Pool(processes = args['nthreads'])
# pool = Pool(1)
# used for asynchronous plotting in background
plot_res = None
# get a list of all '.mat' files in folder
file_list = glob.glob(args['data_folder'] + '/**/*.mat', recursive = True)
# sort by image ID, then by information (least likely, random, top-2)
file_list = sorted(file_list, key = lambda x: (parse_filename(x)[2], parse_filename(x)[5]))
# get the first num_images files
if args['num_images']:
file_list = file_list[:args['num_images']]
if args['untargeted']:
bounds = {}
# bounds will be inserted per image
else:
# aggregate information for three different types: least, random and top2
# each has three bounds: L1, L2, and Linf
bounds = {"least" : [[], [], []],
"random": [[], [], []],
"top2" : [[], [], []]}
for fname in file_list:
nsamps, niters, true_id, true_label, target_label, img_info, activation, order = parse_filename(fname)
# keys in mat:
# ['Li_max', 'pred', 'G1_max', 'g_x0', 'path', 'info', 'G2_max', 'true_label', 'args', 'L1_max', 'Gi_max', 'L2_max', 'id', 'target_label']
mat = sio.loadmat(fname)
print('loading {}'.format(fname))
if order == "1" and args['use_slope']:
G1_max = np.squeeze(mat['L1_max'])
G2_max = np.squeeze(mat['L2_max'])
Gi_max = np.squeeze(mat['Li_max'])
elif order == "1":
G1_max = np.squeeze(mat['G1_max'])
G2_max = np.squeeze(mat['G2_max'])
Gi_max = np.squeeze(mat['Gi_max'])
elif order == "2":
""" For Jun 25 experiments: forgot to save g_x0_grad_2_norm, so rerun a 1 sample 1 iterations cases "1_1_*.mat" and load g_x0_grad_2_norm from it
fname_ref = os.path.dirname(fname)+'_1/'+"1_1_"+str(true_id)+"_"+str(true_label)+"_"+str(target_label)+"_"+img_info+"_"+activation+"_order2.mat"
##fname_ref = 'lipschitz_mat/mnist_normal/'+"1_1_"+str(true_id)+"_"+str(true_label)+"_"+str(target_label)+"_"+img_info+"_"+activation+"_order2.mat"
print("loading {}".format(fname_ref))
mat_ref = sio.loadmat(fname_ref)
g_x0_grad_2_norm = np.squeeze(mat_ref['g_x0_grad_2_norm'])
print("g_x0_grad_2_norm = {}".format(g_x0_grad_2_norm))
#import time
#time.sleep(30)
"""
G2_max = np.abs(np.squeeze(mat['H2_max'])) # forgot to add abs when save in mat file
G1_max = -1*np.empty_like(G2_max) # currently only implemented 2nd order bound for p = 2
Gi_max = -1*np.empty_like(G2_max)
g_x0_grad_2_norm = np.squeeze(mat['g_x0_grad_2_norm'])
else:
raise RuntimeError('!!! order is {}'.format(order))
if args['num_samples'] != 0:
prev_len = len(G1_max)
G1_max = G1_max[:args['num_samples']]
G2_max = G2_max[:args['num_samples']]
Gi_max = Gi_max[:args['num_samples']]
print('Using {} out of {} total samples'.format(len(G1_max), prev_len))
g_x0 = np.squeeze(mat['g_x0'])
target_label = np.squeeze(mat['target_label'])
true_id = np.squeeze(mat['id'])
true_label = np.squeeze(mat['true_label'])
img_info = mat['info'][0]
if args['user_type'] != "" and img_info == "user":
img_info = args['user_type']
# get the filename (.mat)
print('[Filename] {}'.format(fname))
# get the model name (inception, cifar_2-layer)
possible_names = ["mnist", "cifar", "mobilenet", "inception", "resnet"]
model = "unknown"
for path_seg in args["data_folder"].split("/"):
for n in possible_names:
if n in path_seg:
model = path_seg.replace('_', '-')
break
# model = args["data_folder"].split("/")[1]
if args['num_samples'] == 0: # default, use all G1_max
figname = 'Fig_'+model+'_'+img_info+'_'+str(true_id)+'_'+str(true_label)+'_'+str(target_label)+'_Nsamp_'+str(len(G1_max));
elif args['num_samples'] <= len(G1_max) and args['num_samples'] > 0:
figname = 'Fig_'+model+'_'+img_info+'_'+str(true_id)+'_'+str(true_label)+'_'+str(target_label)+'_Nsamp_'+str(args['num_samples']);
else:
print('Warning!! Input arg num_samp = {} exceed len(G1_max) in data_process.py'.format(args['num_samples']))
continue
if args['use_slope']:
figname = figname + '_slope'
if args['plot_dir']:
figname = os.path.join(args['plot_dir'], figname)
# figname
print('[Figname] {}'.format(figname))
else:
# disable debugging figure
figname = ""
if args['method'] == "maxsamp":
if order == "1":
Est_G1 = {'Lips_est': max(G1_max), 'shape': -1, 'loc': -1, 'scale': -1, 'ks': -1, 'pVal': -1}
Est_G2 = {'Lips_est': max(G2_max), 'shape': -1, 'loc': -1, 'scale': -1, 'ks': -1, 'pVal': -1}
Est_Gi = {'Lips_est': max(Gi_max), 'shape': -1, 'loc': -1, 'scale': -1, 'ks': -1, 'pVal': -1}
else: # currently only compare bounds in L2 for both order = 1 and order = 2
Est_G2 = {'Lips_est': max(G2_max), 'shape': -1, 'loc': -1, 'scale': -1, 'ks': -1, 'pVal': -1}
Est_G1 = Est_G2
Est_Gi = Est_G2
elif args['method'] == "mle":
# estimate Lipschitz constant: Est_G1 is a dictionary containing Lips_est and weibull paras
if order == "1":
Est_G1 = get_lipschitz_estimate(G1_max, "L1", figname)
Est_G2 = get_lipschitz_estimate(G2_max, "L2", figname)
Est_Gi = get_lipschitz_estimate(Gi_max, "Li", figname)
else: # currently only compare bounds in L2 for both order = 1 and order = 2
Est_G2 = get_lipschitz_estimate(G2_max, "L2", figname)
Est_G1 = Est_G2 # haven't implemented
Est_Gi = Est_G2 # haven't implemented
elif args['method'] == "mle_reg":
if order == "1":
print('estimating L1...')
Est_G1 = get_lipschitz_estimate(G1_max, "L1", figname, True, args['shape_reg'])
print('estimating L2...')
Est_G2 = get_lipschitz_estimate(G2_max, "L2", figname, True, args['shape_reg'])
print('estimating Li...')
Est_Gi = get_lipschitz_estimate(Gi_max, "Li", figname, True, args['shape_reg'])
else: # currently only compare bounds in L2 for both order = 1 and order = 2
print('estimating L2...')
Est_G2 = get_lipschitz_estimate(G2_max, "L2", figname, True, args['shape_reg'])
Est_G1 = Est_G2
Est_Gi = Est_G1
else:
raise RuntimeError("method not supported")
# the estimated Lipschitz constant
Lip_G1 = Est_G1['Lips_est']
Lip_G2 = Est_G2['Lips_est']
Lip_Gi = Est_Gi['Lips_est']
# the estimated shape parameter (c) in Weibull distn
shape_G1 = Est_G1['shape']
shape_G2 = Est_G2['shape']
shape_Gi = Est_Gi['shape']
# the estimated loc parameters in Weibull distn
loc_G1 = Est_G1['loc']
loc_G2 = Est_G2['loc']
loc_Gi = Est_Gi['loc']
# the estimated scale parameters in Weibull distn
scale_G1 = Est_G1['scale']
scale_G2 = Est_G2['scale']
scale_Gi = Est_Gi['scale']
# the computed ks score
ks_G1 = Est_G1['ks']
ks_G2 = Est_G2['ks']
ks_Gi = Est_Gi['ks']
# the computed pVal
pVal_G1 = Est_G1['pVal']
pVal_G2 = Est_G2['pVal']
pVal_Gi = Est_Gi['pVal']
# compute robustness bound
if order == "1":
bnd_L1 = g_x0 / Lip_Gi
bnd_L2 = g_x0 / Lip_G2
bnd_Li = g_x0 / Lip_G1
else:
bnd_L2 = (-g_x0_grad_2_norm + np.sqrt(g_x0_grad_2_norm**2+2*g_x0*Lip_G2))/Lip_G2
bnd_L1 = bnd_L2 # haven't implemented
bnd_Li = bnd_L2 # haven't implemented
# save bound of each image
if args['untargeted']:
true_id = int(true_id)
if true_id not in bounds:
bounds[true_id] = [[], [], []]
bounds[true_id][0].append(bnd_L1)
bounds[true_id][1].append(bnd_L2)
bounds[true_id][2].append(bnd_Li)
else:
bounds[img_info][0].append(bnd_L1)
bounds[img_info][1].append(bnd_L2)
bounds[img_info][2].append(bnd_Li)
# original data_process mode
#print('[STATS][L1] id = {}, true_label = {}, target_label = {}, info = {}, bnd_L1 = {:.5g}, bnd_L2 = {:.5g}, bnd_Li = {:.5g}'.format(true_id, true_label, target_label, img_info, bnd_L1, bnd_L2, bnd_Li))
bndnorm_L1 = "1";
bndnorm_L2 = "2";
bndnorm_Li = "i";
# if use g_x0 = {:.5g}.format(g_x0), then it will have type error. Not sure why yet.
#print('g_x0 = '+str(g_x0))
if args['method'] == "maxsamp":
if order == "1":
print('[DEBUG][L1] id = {}, true_label = {}, target_label = {}, info = {}, nsamps = {}, niters = {}, bnd_norm = {}, bnd = {:.5g}'.format(true_id, true_label, target_label, img_info, nsamps, niters, bndnorm_L1, bnd_L1))
print('[DEBUG][L1] id = {}, true_label = {}, target_label = {}, info = {}, nsamps = {}, niters = {}, bnd_norm = {}, bnd = {:.5g}'.format(true_id, true_label, target_label, img_info, nsamps, niters, bndnorm_L2, bnd_L2))
print('[DEBUG][L1] id = {}, true_label = {}, target_label = {}, info = {}, nsamps = {}, niters = {}, bnd_norm = {}, bnd = {:.5g}'.format(true_id, true_label, target_label, img_info, nsamps, niters, bndnorm_Li, bnd_Li))
else: # currently only compare L2 bound
print('[DEBUG][L1] id = {}, true_label = {}, target_label = {}, info = {}, nsamps = {}, niters = {}, bnd_norm = {}, bnd = {:.5g}'.format(true_id, true_label, target_label, img_info, nsamps, niters, bndnorm_L2, bnd_L2))
elif args['method'] == "mle" or args['method'] == "mle_reg":
if order == "1":
# estimate Lipschitz constant: Est_G1 is a dictionary containing Lips_est and weibull paras
# current debug mode: bound_L1 corresponds to Gi, bound_L2 corresponds to G2, bound_Li corresponds to G1
print('[DEBUG][L1] id = {}, true_label = {}, target_label = {}, info = {}, nsamps = {}, niters = {}, bnd_norm = {}, bnd = {:.5g}, ks = {:.5g}, pVal = {:.5g}, shape = {:.5g}, loc = {:.5g}, scale = {:.5g}, g_x0 = {}'.format(true_id, true_label, target_label, img_info, nsamps, niters, bndnorm_L1, bnd_L1, ks_Gi, pVal_Gi, shape_Gi, loc_Gi, scale_Gi, g_x0))
print('[DEBUG][L1] id = {}, true_label = {}, target_label = {}, info = {}, nsamps = {}, niters = {}, bnd_norm = {}, bnd = {:.5g}, ks = {:.5g}, pVal = {:.5g}, shape = {:.5g}, loc = {:.5g}, scale = {:.5g}, g_x0 = {}'.format(true_id, true_label, target_label, img_info, nsamps, niters, bndnorm_L2, bnd_L2, ks_G2, pVal_G2, shape_G2, loc_G2, scale_G2, g_x0))
print('[DEBUG][L1] id = {}, true_label = {}, target_label = {}, info = {}, nsamps = {}, niters = {}, bnd_norm = {}, bnd = {:.5g}, ks = {:.5g}, pVal = {:.5g}, shape = {:.5g}, loc = {:.5g}, scale = {:.5g}, g_x0 = {}'.format(true_id, true_label, target_label, img_info, nsamps, niters, bndnorm_Li, bnd_Li, ks_G1, pVal_G1, shape_G1, loc_G1, scale_G1, g_x0))
else: # currently only compare L2 bound
print('[DEBUG][L1] id = {}, true_label = {}, target_label = {}, info = {}, nsamps = {}, niters = {}, bnd_norm = {}, bnd = {:.5g}, ks = {:.5g}, pVal = {:.5g}, shape = {:.5g}, loc = {:.5g}, scale = {:.5g}, g_x0 = {}'.format(true_id, true_label, target_label, img_info, nsamps, niters, bndnorm_L2, bnd_L2, ks_G2, pVal_G2, shape_G2, loc_G2, scale_G2, g_x0))
else:
raise RuntimeError("method not supported")
sys.stdout.flush()
if args['untargeted']:
clever_L1s = []
clever_L2s = []
clever_Lis = []
for true_id, true_id_bounds in bounds.items():
img_clever_L1 = min(true_id_bounds[0])
img_clever_L2 = min(true_id_bounds[1])
img_clever_Li = min(true_id_bounds[2])
n_classes = len(true_id_bounds[0]) + 1
assert len(true_id_bounds[0]) == len(true_id_bounds[2])
assert len(true_id_bounds[1]) == len(true_id_bounds[2])
print('[STATS][L1] image = {:3d}, n_classes = {:3d}, clever_L1 = {:.5g}, clever_L2 = {:.5g}, clever_Li = {:.5g}'.format(true_id, n_classes, img_clever_L1, img_clever_L2, img_clever_Li))
clever_L1s.append(img_clever_L1)
clever_L2s.append(img_clever_L2)
clever_Lis.append(img_clever_Li)
info = "untargeted"
clever_L1 = reduce_op(clever_L1s)
clever_L2 = reduce_op(clever_L2s)
clever_Li = reduce_op(clever_Lis)
print('[STATS][L0] info = {}, {}_clever_L1 = {:.5g}, {}_clever_L2 = {:.5g}, {}_clever_Li = {:.5g}'.format(info, info, clever_L1, info, clever_L2, info, clever_Li))
else:
# print min/average bound
for info, info_bounds in bounds.items():
# reduce each array to a single number (min or avg)
clever_L1 = reduce_op(info_bounds[0])
clever_L2 = reduce_op(info_bounds[1])
clever_Li = reduce_op(info_bounds[2])
if order == "1":
print('[STATS][L0] info = {}, {}_clever_L1 = {:.5g}, {}_clever_L2 = {:.5g}, {}_clever_Li = {:.5g}'.format(info, info, clever_L1, info, clever_L2, info, clever_Li))
else: # currently only compare L2 bound for both order = 1 and order = 2
print('[STATS][L0] info = {}, {}_clever_L2 = {:.5g}'.format(info, info, clever_L2))
sys.stdout.flush()
# shutdown thread pool
pool.close()
pool.join()