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soil/settings_org.py
2017-04-21 13:55:42 +02:00

105 lines
2.6 KiB
Python

# settings.py
def init():
global number_of_nodes
global max_time
global num_trials
global bite_prob
global timeout
global network_type
global heal_prob
global innovation_prob
global imitation_prob
global outside_effects_prob
global anger_prob
global joy_prob
global sadness_prob
global disgust_prob
global tweet_probability_users
global tweet_relevant_probability
global tweet_probability_about
global sentiment_about
global tweet_probability_enterprises
global enterprises
global neutral_discontent_spon_prob
global neutral_discontent_infected_prob
global neutral_content_spon_prob
global neutral_content_infected_prob
global discontent_content
global discontent_neutral
global content_discontent
global content_neutral
global variance_d_c
global variance_c_d
global standard_variance
global prob_neutral_making_denier
global prob_infect
global prob_cured_healing_infected
global prob_cured_vaccinate_neutral
global prob_vaccinated_healing_infected
global prob_vaccinated_vaccinate_neutral
global prob_generate_anti_rumor
# Network settings
network_type = 1
number_of_nodes = 1000
max_time = 50
num_trials = 1
timeout = 2
# Zombie model
bite_prob = 0.01 # 0-1
heal_prob = 0.01 # 0-1
# Bass model
innovation_prob = 0.001
imitation_prob = 0.005
# Sentiment Correlation model
outside_effects_prob = 0.2
anger_prob = 0.06
joy_prob = 0.05
sadness_prob = 0.02
disgust_prob = 0.02
# Big Market model
## Names
enterprises = ["BBVA", "Santander", "Bankia"]
## Users
tweet_probability_users = 0.44
tweet_relevant_probability = 0.25
tweet_probability_about = [0.15, 0.15, 0.15]
sentiment_about = [0, 0, 0] # Default values
## Enterprises
tweet_probability_enterprises = [0.3, 0.3, 0.3]
# SISa
neutral_discontent_spon_prob = 0.04
neutral_discontent_infected_prob = 0.04
neutral_content_spon_prob = 0.18
neutral_content_infected_prob = 0.02
discontent_neutral = 0.13
discontent_content = 0.07
variance_d_c = 0.02
content_discontent = 0.009
variance_c_d = 0.003
content_neutral = 0.088
standard_variance = 0.055
# Spread Model M2 and Control Model M2
prob_neutral_making_denier = 0.035
prob_infect = 0.075
prob_cured_healing_infected = 0.035
prob_cured_vaccinate_neutral = 0.035
prob_vaccinated_healing_infected = 0.035
prob_vaccinated_vaccinate_neutral = 0.035
prob_generate_anti_rumor = 0.035