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import matplotlib.pyplot as plt
import numpy as np
import cascade_creation
import convex_optimization
import algorithms
import rip_condition
def compare_greedy_and_lagrange_cs284r():
"""
Compares the performance of the greedy algorithm on the
lagrangian sparse recovery objective on the Facebook dataset
for the CS284r project
"""
G = cascade_creation.InfluenceGraph(max_proba = .8)
G.import_from_file("../datasets/subset_facebook_SNAPnormalize.txt")
A = cascade_creation.generate_cascades(G, p_init=.05, n_cascades=100)
#Greedy
G_hat = algorithms.greedy_prediction(G, A)
algorithms.correctness_measure(G, G_hat, print_values=True)
#Lagrange Objective
G_hat = algorithms.recovery_l1obj_l2constraint(G, A,
passed_function=convex_optimization.type_lasso,
floor_cstt=.05, lbda=10)
algorithms.correctness_measure(G, G_hat, print_values=True)
def watts_strogatz(n_cascades, lbda, passed_function):
"""
Test running time on different algorithms
"""
G = cascade_creation.InfluenceGraph(max_proba=.7, min_proba=.2)
G.import_from_file("../datasets/watts_strogatz_300_30_point3.txt")
A = cascade_creation.generate_cascades(G, p_init=.05, n_cascades=n_cascades)
if passed_function==algorithms.greedy_prediction:
G_hat = algorithms.greedy_prediction(G, A)
else:
G_hat = algorithms.recovery_passed_function(G, A,
passed_function=passed_function,
floor_cstt=.1, lbda=lbda, n_cascades=n_cascades)
algorithms.correctness_measure(G, G_hat, print_values=True)
# def test():
# """
# unit test
# """
# G = cascade_creation.InfluenceGraph(max_proba=1, min_proba=.2)
# G.erdos_init(n=50, p=.2)
# A = cascade_creation.generate_cascades(G, p_init=.1, n_cascades=1000)
# G_hat = algorithms.recovery_passed_function(G, A,
# passed_function=convex_optimization.sparse_recovery,
# floor_cstt=.1, lbda=.001, n_cascades=1000)
# algorithms.correctness_measure(G, G_hat, print_values=True)
if __name__=="__main__":
watts_strogatz(n_cascades=3000, lbda=.002, passed_function=
convex_optimization.sparse_recovery)
#algorithms.greedy_prediction)
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