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Update models.py
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16
models.py
16
models.py
@ -347,8 +347,8 @@ class BigMarketModel(BaseBehaviour):
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self.type="User"
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self.tweet_probability = settings.tweet_probability_users
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self.tweet_relevant_probability = settings.tweet_relevant_probability
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self.tweet_probability_about = settings.tweet_probability_about #Lista
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self.sentiment_about = settings.sentiment_about #Lista
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self.tweet_probability_about = settings.tweet_probability_about #List
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self.sentiment_about = settings.sentiment_about #List
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def step(self, now):
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@ -356,15 +356,15 @@ class BigMarketModel(BaseBehaviour):
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self.enterpriseBehaviour()
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else: # Usuario
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self.userBehaviour()
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for i in range(self.number_of_enterprises): # Para que nunca este a 0 si no ha habido cambios(logs)
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for i in range(self.number_of_enterprises): # So that it never is set to 0 if there are not changes (logs)
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self.attrs['sentiment_enterprise_%s'% self.enterprises[i]] = self.sentiment_about[i]
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super().step(now)
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def enterpriseBehaviour(self):
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if random.random()< self.tweet_probability: #Twittea
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aware_neighbors = self.get_neighboring_agents(state_id=self.number_of_enterprises) #Nodos vecinos usuarios
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if random.random()< self.tweet_probability: #Tweets
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aware_neighbors = self.get_neighboring_agents(state_id=self.number_of_enterprises) #Nodes neighbour users
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for x in aware_neighbors:
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if random.uniform(0,10) < 5:
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x.sentiment_about[self.id] += 0.1 #Aumenta para empresa
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@ -400,7 +400,7 @@ class BigMarketModel(BaseBehaviour):
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self.userTweets("positive",i)
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def userTweets(self,sentiment,enterprise):
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aware_neighbors = self.get_neighboring_agents(state_id=self.number_of_enterprises) #Nodos vecinos usuarios
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aware_neighbors = self.get_neighboring_agents(state_id=self.number_of_enterprises) #Nodes neighbours users
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for x in aware_neighbors:
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if sentiment == "positive":
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x.sentiment_about[enterprise] +=0.003
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@ -427,7 +427,7 @@ class SentimentCorrelationModel(BaseBehaviour):
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self.sadness_prob = settings.sadness_prob
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self.disgust_prob = settings.disgust_prob
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self.time_awareness=[]
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for i in range(4): #En este modelo tenemos 4 sentimientos
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for i in range(4): #In this model we have 4 sentiments
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self.time_awareness.append(0) #0-> Anger, 1-> joy, 2->sadness, 3 -> disgust
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sentimentCorrelationNodeArray[self.id][self.env.now]=0
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@ -485,7 +485,7 @@ class SentimentCorrelationModel(BaseBehaviour):
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if(num<outside_effects_prob):
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self.state['id'] = random.randint(1,4)
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sentimentCorrelationNodeArray[self.id][self.env.now]=self.state['id'] #Almaceno cuando se ha infectado para la red dinamica
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sentimentCorrelationNodeArray[self.id][self.env.now]=self.state['id'] #It is stored when it has been infected for the dynamic network
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self.time_awareness[self.state['id']-1] = self.env.now
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self.attrs['sentiment'] = self.state['id']
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