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code/expt/copenhagen-sel.py
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code/expt/copenhagen-sel.py
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#!/usr/bin/env python3
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import sys
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sys.path.insert(1, '../lib')
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import argparse
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import ast
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from datetime import datetime
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from geopy.distance import distance
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import lmdk_bgt
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import lmdk_lib
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import math
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import numpy as np
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from matplotlib import pyplot as plt
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import time
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def main(args):
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res_file = '/home/manos/Cloud/Data/Copenhagen/Results.zip'
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# Contacts for all users
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cont_data = lmdk_lib.load_data(args, 'cont')
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# Contacts for landmark's percentages for all users
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lmdk_data = lmdk_lib.load_data(args, 'usrs_data')
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# The name of the dataset
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d = 'Copenhagen'
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# The user's id
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uid = '449'
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# The landmarks percentages
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lmdks_pct = [0, 20, 40, 60, 80, 100]
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# The privacy budget
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epsilon = 1.0
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# Number of methods
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n = 3
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# Width of bars
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bar_width = 1/(n + 1)
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# The x axis
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x_i = np.arange(len(lmdks_pct))
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x_margin = bar_width*(n/2 + 1)
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print('\n##############################', d, '\n')
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# Get user's contacts sequence
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seq = cont_data[cont_data[:, 1] == float(uid)][:1000]
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# Initialize plot
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lmdk_lib.plot_init()
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# The x axis
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plt.xticks(x_i, np.array(lmdks_pct, int))
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plt.xlabel('Landmarks (%)') # Set x axis label.
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plt.xlim(x_i.min() - x_margin, x_i.max() + x_margin)
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# The y axis
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plt.ylabel('Mean absolute error (%)') # Set y axis label.
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# plt.yscale('log')
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plt.ylim(0, 100)
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# Bar offset
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x_offset = -(bar_width/2)*(n - 1)
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mae_u = np.zeros(len(lmdks_pct))
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mae_s = np.zeros(len(lmdks_pct))
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mae_a = np.zeros(len(lmdks_pct))
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mae_evt = 0
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mae_usr = 0
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for i, pct in enumerate(lmdks_pct):
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# Find landmarks
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lmdks = lmdk_lib.find_lmdks_cont(lmdk_data, seq, uid, pct)
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for _ in range(args.iter):
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eps_sel = 0
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if pct != 0 and pct != 100:
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# Get landmarks timestamps in sequence
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lmdks_seq = lmdk_lib.find_lmdks_seq(seq, lmdks)
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# Turn landmarks to histogram
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hist, h = lmdk_lib.get_hist(lmdk_lib.get_seq(1, len(seq)), lmdks_seq)
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# Find all possible options
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opts = lmdk_sel.get_opts_from_top_h(lmdk_lib.get_seq(1, len(seq)), lmdks_seq)
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# Landmarks selection budget
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eps_sel = epsilon/(len(lmdks_seq) + 1)
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# Get private landmarks timestamps
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lmdks_seq, _ = exp_mech.exponential_pareto(hist, opts, exp_mech.score, 1.0, eps_sel)
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# Get actual landmarks values
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lmdks = seq[lmdks_seq]
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# Skip
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rls_data_s, bgts_s = lmdk_bgt.skip_cont(seq, lmdks, epsilon - eps_sel)
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# lmdk_bgt.validate_bgts(seq, lmdks, epsilon, bgts_s)
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mae_s[i] += lmdk_bgt.mae_cont(rls_data_s)/args.iter
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# Uniform
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rls_data_u, bgts_u = lmdk_bgt.uniform_cont(seq, lmdks, epsilon - eps_sel)
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# lmdk_bgt.validate_bgts(seq, lmdks, epsilon, bgts_u)
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mae_u[i] += lmdk_bgt.mae_cont(rls_data_u)/args.iter
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# Adaptive
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rls_data_a, _, _ = lmdk_bgt.adaptive_cont(seq, lmdks, epsilon - eps_sel, .5, .5)
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mae_a[i] += lmdk_bgt.mae_cont(rls_data_a)/args.iter
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# Calculate once
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if i == 0:
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# Event
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rls_data_evt, _ = lmdk_bgt.uniform_cont(seq, lmdk_lib.find_lmdks_cont(lmdk_data, seq, uid, 0), epsilon)
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mae_evt += lmdk_bgt.mae_cont(rls_data_evt)/args.iter
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# User
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rls_data_usr, _ = lmdk_bgt.uniform_cont(seq, lmdk_lib.find_lmdks_cont(lmdk_data, seq, uid, 100), epsilon)
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mae_usr += lmdk_bgt.mae_cont(rls_data_usr)/args.iter
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mae_u *= 100
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mae_s *= 100
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mae_a *= 100
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mae_evt *= 100
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mae_usr *= 100
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plt.axhline(
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y = mae_evt,
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color = '#212121',
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linewidth=lmdk_lib.line_width
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)
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plt.text(x_i[-1] + x_i[-1]*.14, mae_evt - mae_evt*.05, 'event')
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plt.axhline(
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y = mae_usr,
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color = '#616161',
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linewidth=lmdk_lib.line_width
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)
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plt.text(x_i[-1] + x_i[-1]*.14, mae_usr - mae_usr*.05, 'user')
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plt.bar(
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x_i + x_offset,
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mae_s,
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bar_width,
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label='Skip',
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linewidth=lmdk_lib.line_width
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)
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x_offset += bar_width
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plt.bar(
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x_i + x_offset,
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mae_u,
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bar_width,
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label='Uniform',
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linewidth=lmdk_lib.line_width
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)
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x_offset += bar_width
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plt.bar(
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x_i + x_offset,
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mae_a,
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bar_width,
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label='Adaptive',
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linewidth=lmdk_lib.line_width
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)
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x_offset += bar_width
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path = str('../../rslt/bgt_cmp/' + d)
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# Plot legend
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lmdk_lib.plot_legend()
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# # Show plot
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# plt.show()
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# Save plot
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lmdk_lib.save_plot(path + '-sel.pdf')
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print('[OK]', flush=True)
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def parse_args():
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'''
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Parse arguments.
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Optional:
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res - The results archive file.
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iter - The total iterations.
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'''
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# Create argument parser.
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parser = argparse.ArgumentParser()
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# Mandatory arguments.
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# Optional arguments.
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parser.add_argument('-r', '--res', help='The results archive file.', type=str, default='/home/manos/Cloud/Data/Copenhagen/Results.zip')
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parser.add_argument('-i', '--iter', help='The total iterations.', type=int, default=1)
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# Parse arguments.
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args = parser.parse_args()
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return args
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if __name__ == '__main__':
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try:
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start_time = time.time()
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main(parse_args())
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end_time = time.time()
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print('##############################')
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print('Time elapsed: %s' % (time.strftime('%H:%M:%S', time.gmtime(end_time - start_time))))
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print('##############################')
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except KeyboardInterrupt:
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print('Interrupted by user.')
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exit()
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185
code/expt/hue-sel.py
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code/expt/hue-sel.py
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#!/usr/bin/env python3
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import sys
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sys.path.insert(1, '../lib')
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import argparse
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import ast
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from datetime import datetime
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from geopy.distance import distance
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import lmdk_bgt
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import lmdk_lib
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import math
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import numpy as np
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from matplotlib import pyplot as plt
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import time
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def main(args):
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res_file = '/home/manos/Cloud/Data/HUE/Results.zip'
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# User's consumption
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seq = lmdk_lib.load_data(args, 'cons')
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# The name of the dataset
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d = 'HUE'
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# The landmarks percentages
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lmdks_pct = [0, 20, 40, 60, 80, 100]
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# Landmarks' thresholds
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lmdks_th = [0, .54, .68, .88, 1.12, 10]
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# The privacy budget
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epsilon = 10.0
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# Number of methods
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n = 3
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# Width of bars
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bar_width = 1/(n + 1)
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# The x axis
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x_i = np.arange(len(lmdks_pct))
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x_margin = bar_width*(n/2 + 1)
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print('\n##############################', d, '\n')
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# Initialize plot
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lmdk_lib.plot_init()
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# The x axis
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plt.xticks(x_i, np.array(lmdks_pct, int))
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plt.xlabel('Landmarks (%)') # Set x axis label.
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plt.xlim(x_i.min() - x_margin, x_i.max() + x_margin)
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# The y axis
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plt.ylabel('Mean absolute error (kWh)') # Set y axis label.
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plt.yscale('log')
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# plt.ylim(.01, 10000)
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# Bar offset
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x_offset = -(bar_width/2)*(n - 1)
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mae_u = np.zeros(len(lmdks_pct))
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mae_s = np.zeros(len(lmdks_pct))
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mae_a = np.zeros(len(lmdks_pct))
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mae_evt = 0
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mae_usr = 0
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for i, pct in enumerate(lmdks_pct):
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# Find landmarks
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lmdks = seq[seq[:, 1] < lmdks_th[i]]
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for _ in range(args.iter):
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eps_sel = 0
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if pct != 0 and pct != 100:
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# Get landmarks timestamps in sequence
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lmdks_seq = lmdk_lib.find_lmdks_seq(seq, lmdks)
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# Turn landmarks to histogram
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hist, h = lmdk_lib.get_hist(lmdk_lib.get_seq(1, len(seq)), lmdks_seq)
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# Find all possible options
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opts = lmdk_sel.get_opts_from_top_h(lmdk_lib.get_seq(1, len(seq)), lmdks_seq)
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# Landmarks selection budget
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eps_sel = epsilon/(len(lmdks_seq) + 1)
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# Get private landmarks timestamps
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lmdks_seq, _ = exp_mech.exponential_pareto(hist, opts, exp_mech.score, 1.0, eps_sel)
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# Get actual landmarks values
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lmdks = seq[lmdks_seq]
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# Skip
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rls_data_s, bgts_s = lmdk_bgt.skip_cons(seq, lmdks, epsilon - eps_sel)
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# lmdk_bgt.validate_bgts(seq, lmdks, epsilon, bgts_s)
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mae_s[i] += lmdk_bgt.mae_cons(seq, rls_data_s)/args.iter
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# Uniform
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rls_data_u, bgts_u = lmdk_bgt.uniform_cons(seq, lmdks, epsilon - eps_sel)
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mae_u[i] += lmdk_bgt.mae_cons(seq, rls_data_u)/args.iter
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# Adaptive
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rls_data_a, _, _ = lmdk_bgt.adaptive_cons(seq, lmdks, epsilon - eps_sel, .5, .5)
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mae_a[i] += lmdk_bgt.mae_cons(seq, rls_data_a)/args.iter
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# Calculate once
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# Event
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if i == 0:
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rls_data_evt, _ = lmdk_bgt.uniform_cons(seq, seq[seq[:, 1] < lmdks_th[0]], epsilon)
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mae_evt += lmdk_bgt.mae_cons(seq, rls_data_evt)/args.iter
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# User
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if i == 0:
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rls_data_usr, _ = lmdk_bgt.uniform_cons(seq, seq[seq[:, 1] < lmdks_th[len(lmdks_th)-1]], epsilon)
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mae_usr += lmdk_bgt.mae_cons(seq, rls_data_usr)/args.iter
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plt.axhline(
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y = mae_evt,
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color = '#212121',
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linewidth=lmdk_lib.line_width
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)
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plt.text(x_i[-1] + x_i[-1]*.14, mae_evt - mae_evt*.14, 'event')
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plt.axhline(
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y = mae_usr,
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color = '#616161',
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linewidth=lmdk_lib.line_width
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)
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plt.text(x_i[-1] + x_i[-1]*.14, mae_usr - mae_usr*.14, 'user')
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plt.bar(
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x_i + x_offset,
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mae_s,
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bar_width,
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label='Skip',
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linewidth=lmdk_lib.line_width
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)
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x_offset += bar_width
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plt.bar(
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x_i + x_offset,
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mae_u,
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bar_width,
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label='Uniform',
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linewidth=lmdk_lib.line_width
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)
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x_offset += bar_width
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plt.bar(
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x_i + x_offset,
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mae_a,
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bar_width,
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label='Adaptive',
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linewidth=lmdk_lib.line_width
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)
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x_offset += bar_width
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path = str('../../rslt/bgt_cmp/' + d)
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# Plot legend
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lmdk_lib.plot_legend()
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# Show plot
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# plt.show()
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# Save plot
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lmdk_lib.save_plot(path + '-sel.pdf')
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print('[OK]', flush=True)
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def parse_args():
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'''
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Parse arguments.
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Optional:
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res - The results archive file.
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iter - The total iterations.
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'''
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# Create argument parser.
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parser = argparse.ArgumentParser()
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# Mandatory arguments.
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# Optional arguments.
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parser.add_argument('-r', '--res', help='The results archive file.', type=str, default='/home/manos/Cloud/Data/HUE/Results.zip')
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parser.add_argument('-i', '--iter', help='The total iterations.', type=int, default=1)
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# Parse arguments.
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args = parser.parse_args()
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return args
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if __name__ == '__main__':
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try:
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start_time = time.time()
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main(parse_args())
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end_time = time.time()
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print('##############################')
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print('Time elapsed: %s' % (time.strftime('%H:%M:%S', time.gmtime(end_time - start_time))))
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print('##############################')
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except KeyboardInterrupt:
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print('Interrupted by user.')
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exit()
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211
code/expt/t-drive-sel.py
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211
code/expt/t-drive-sel.py
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#!/usr/bin/env python3
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import sys
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sys.path.insert(1, '../lib')
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import argparse
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from datetime import datetime
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from geopy.distance import distance
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import lmdk_bgt
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import lmdk_lib
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import numpy as np
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from matplotlib import pyplot as plt
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import time
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def main(args):
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# The data files
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data_files = {
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'T-drive': '/home/manos/Cloud/Data/T-drive/Results.zip',
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}
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# Data related info
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data_info = {
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'T-drive': {
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'uid': 2,
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'lmdks': {
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0: {'dist': 0, 'per': 1000}, # 0.0%
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20: {'dist': 2095, 'per': 30}, # 19.6%
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40: {'dist': 2790, 'per': 30}, # 40.2%
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60: {'dist': 3590, 'per': 30}, # 59.9%
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80: {'dist': 4825, 'per': 30}, # 79.4%
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100: {'dist': 10350, 'per': 30} # 100.0%
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}
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}
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}
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# The data sets
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data_sets = {}
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# Load data sets
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for df in data_files:
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args.res = data_files[df]
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data_sets[df] = lmdk_lib.load_data(args, 'usrs_data')
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# Geo-I configuration
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# epsilon = level/radius
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# Radius is in meters
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bgt_conf = [
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{'epsilon': 1},
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]
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# Number of methods
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n = 3
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# Width of bars
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bar_width = 1/(n + 1)
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# The x axis
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x_i = np.arange(len(list(data_info.values())[0]['lmdks']))
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x_margin = bar_width*(n/2 + 1)
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for d in data_sets:
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print('\n##############################', d, '\n')
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args.res = data_files[d]
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data = data_sets[d]
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# Truncate trajectory according to arguments
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seq = data[data[:,0]==data_info[d]['uid'], :][:args.time]
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# Initialize plot
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lmdk_lib.plot_init()
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# The x axis
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plt.xticks(x_i, np.array([key for key in data_info[d]['lmdks']]).astype(int))
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plt.xlabel('Landmarks (%)') # Set x axis label.
|
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plt.xlim(x_i.min() - x_margin, x_i.max() + x_margin)
|
||||
# The y axis
|
||||
plt.ylabel('Mean absolute error (m)') # Set y axis label.
|
||||
plt.yscale('log')
|
||||
# plt.ylim(1, 100000000)
|
||||
# Bar offset
|
||||
x_offset = -(bar_width/2)*(n - 1)
|
||||
|
||||
mae_u = np.zeros(len(data_info[d]['lmdks']))
|
||||
mae_s = np.zeros(len(data_info[d]['lmdks']))
|
||||
mae_a = np.zeros(len(data_info[d]['lmdks']))
|
||||
mae_evt = 0
|
||||
mae_usr = 0
|
||||
for i, lmdk in enumerate(data_info[d]['lmdks']):
|
||||
# Find landmarks
|
||||
args.dist = data_info[d]['lmdks'][lmdk]['dist']
|
||||
args.per = data_info[d]['lmdks'][lmdk]['per']
|
||||
lmdks = lmdk_lib.find_lmdks(seq, args)[:args.time]
|
||||
for bgt in bgt_conf:
|
||||
for _ in range(args.iter):
|
||||
|
||||
eps_sel = 0
|
||||
if lmdk != 0 and lmdk != 100:
|
||||
# Get landmarks timestamps in sequence
|
||||
lmdks_seq = lmdk_lib.find_lmdks_seq(seq, lmdks)
|
||||
# Turn landmarks to histogram
|
||||
hist, h = lmdk_lib.get_hist(lmdk_lib.get_seq(1, len(seq)), lmdks_seq)
|
||||
# Find all possible options
|
||||
opts = lmdk_sel.get_opts_from_top_h(lmdk_lib.get_seq(1, len(seq)), lmdks_seq)
|
||||
# Landmarks selection budget
|
||||
eps_sel = bgt['epsilon']/(len(lmdks_seq) + 1)
|
||||
# Get private landmarks timestamps
|
||||
lmdks_seq, _ = exp_mech.exponential_pareto(hist, opts, exp_mech.score, 1.0, eps_sel)
|
||||
# Get actual landmarks values
|
||||
lmdks = seq[lmdks_seq]
|
||||
|
||||
# Skip
|
||||
rls_data_s, _ = lmdk_bgt.skip(seq, lmdks, bgt['epsilon'] - eps_sel)
|
||||
mae_s[i] += lmdk_bgt.mae(seq, rls_data_s)/args.iter
|
||||
|
||||
# Uniform
|
||||
rls_data_u, _ = lmdk_bgt.uniform_r(seq, lmdks, bgt['epsilon'] - eps_sel)
|
||||
mae_u[i] += lmdk_bgt.mae(seq, rls_data_u)/args.iter
|
||||
|
||||
# Adaptive
|
||||
rls_data_a, _, _ = lmdk_bgt.adaptive(seq, lmdks, bgt['epsilon'] - eps_sel, .5, .5)
|
||||
mae_a[i] += lmdk_bgt.mae(seq, rls_data_a)/args.iter
|
||||
|
||||
# Event
|
||||
if lmdk == 0:
|
||||
rls_data_evt, _ = lmdk_bgt.uniform_r(seq, lmdks, bgt['epsilon'])
|
||||
mae_evt += lmdk_bgt.mae(seq, rls_data_evt)/args.iter
|
||||
# User
|
||||
if lmdk == 100:
|
||||
rls_data_usr, _ = lmdk_bgt.uniform_r(seq, lmdks, bgt['epsilon'])
|
||||
mae_usr += lmdk_bgt.mae(seq, rls_data_usr)/args.iter
|
||||
|
||||
# Plot lines
|
||||
plt.axhline(
|
||||
y = mae_evt,
|
||||
color = '#212121',
|
||||
linewidth=lmdk_lib.line_width
|
||||
)
|
||||
plt.text(x_i[-1] + x_i[-1]*.14, mae_evt - mae_evt*.14, 'event')
|
||||
plt.axhline(
|
||||
y = mae_usr,
|
||||
color = '#616161',
|
||||
linewidth=lmdk_lib.line_width
|
||||
)
|
||||
plt.text(x_i[-1] + x_i[-1]*.14, mae_usr - mae_usr*.14, 'user')
|
||||
|
||||
# Plot bars
|
||||
plt.bar(
|
||||
x_i + x_offset,
|
||||
mae_s,
|
||||
bar_width,
|
||||
label='Skip',
|
||||
linewidth=lmdk_lib.line_width
|
||||
)
|
||||
x_offset += bar_width
|
||||
plt.bar(
|
||||
x_i + x_offset,
|
||||
mae_u,
|
||||
bar_width,
|
||||
label='Uniform',
|
||||
linewidth=lmdk_lib.line_width
|
||||
)
|
||||
x_offset += bar_width
|
||||
plt.bar(
|
||||
x_i + x_offset,
|
||||
mae_a,
|
||||
bar_width,
|
||||
label='Adaptive',
|
||||
linewidth=lmdk_lib.line_width
|
||||
)
|
||||
|
||||
path = str('../../rslt/bgt_cmp/' + d)
|
||||
# Plot legend
|
||||
lmdk_lib.plot_legend()
|
||||
# Show plot
|
||||
# plt.show()
|
||||
# Save plot
|
||||
lmdk_lib.save_plot(path + '-sel.pdf')
|
||||
print('[OK]', flush=True)
|
||||
|
||||
|
||||
def parse_args():
|
||||
'''
|
||||
Parse arguments.
|
||||
|
||||
Optional:
|
||||
dist - The coordinates distance threshold in meters.
|
||||
per - The timestaps period threshold in mimutes.
|
||||
time - The total timestamps.
|
||||
iter - The total iterations.
|
||||
'''
|
||||
# Create argument parser.
|
||||
parser = argparse.ArgumentParser()
|
||||
|
||||
# Mandatory arguments.
|
||||
|
||||
# Optional arguments.
|
||||
parser.add_argument('-l', '--dist', help='The coordinates distance threshold in meters.', type=int, default=200)
|
||||
parser.add_argument('-p', '--per', help='The timestaps period threshold in mimutes.', type=int, default=30)
|
||||
parser.add_argument('-r', '--res', help='The results archive file.', type=str, default='/home/manos/Cloud/Data/T-drive/Results.zip')
|
||||
parser.add_argument('-t', '--time', help='The total timestamps.', type=int, default=1000)
|
||||
parser.add_argument('-i', '--iter', help='The total iterations.', type=int, default=1)
|
||||
|
||||
# Parse arguments.
|
||||
args = parser.parse_args()
|
||||
|
||||
return args
|
||||
|
||||
|
||||
if __name__ == '__main__':
|
||||
try:
|
||||
start_time = time.time()
|
||||
main(parse_args())
|
||||
end_time = time.time()
|
||||
print('##############################')
|
||||
print('Time elapsed: %s' % (time.strftime('%H:%M:%S', time.gmtime(end_time - start_time))))
|
||||
print('##############################')
|
||||
except KeyboardInterrupt:
|
||||
print('Interrupted by user.')
|
||||
exit()
|
@ -907,6 +907,14 @@ def find_lmdks(usrs_data, args):
|
||||
return usrs_lmdks
|
||||
|
||||
|
||||
def find_lmdks_seq(seq, lmdks):
|
||||
lmdks_seq = []
|
||||
for i, p in enumerate(seq):
|
||||
if any(np.equal(lmdks, p).all(1)):
|
||||
lmdks_seq.append(i + 1)
|
||||
return np.numpy(lmdks_seq, dtype = int)
|
||||
|
||||
|
||||
def find_lmdks_tim(lmdk_data, seq, uid, pct):
|
||||
'''
|
||||
Find user's landmarks timestamps.
|
||||
|
Loading…
Reference in New Issue
Block a user