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I have written the code for sentiment analysis of a tweet using nltk. The code is working fine but the problem is when I execute it multiple times it stores the output. I have even tried clearing cache memory but it doesn't help.

Can anyone please help me with this? Here is my code:

    def dictionary():
     pos_filename=open("D:/HPCC/pos.csv", "r")
     pos_tweets=[]
     neg_tweets=[]
     pos_reader=csv.reader(pos_filename)
     for rows in pos_reader:
         pos_tweets.append(rows)
     #print pos_tweets
     neg_filename=open("D:/HPCC/neg.csv", "r")
     neg_reader=csv.reader(neg_filename)
     for rows in neg_reader:
          neg_tweets.append(rows)
     #print neg_tweets

     return pos_tweets+neg_tweets
    word_dict=dictionary()
    tweets = []
    for (words,sentiment) in word_dict:
     words_filtered = [e.lower() for e in words.split() if len(e) >= 3]
     tweets.append((words_filtered, sentiment))

    #print tweets

    test_tweets = [
     (['feel', 'happy', 'this', 'morning','good'], 'positive'),
     (['larry', 'friend','like'], 'positive'),
     (['not', 'that', 'man'], 'negative'),
     (['house', 'not', 'great'], 'negative'),
     (['your', 'song', 'annoying','bad'], 'negative')]

#print test_tweets

def get_words_in_tweets(tweets):
    all_words = []
    for (words, sentiment) in tweets:
        all_words.extend(words)
    return all_words
    for words in all_words:
          print words
def get_word_features(wordlist):
    wordlist = nltk.FreqDist(wordlist)
    word_features = wordlist.keys()
    return word_features

word_features = get_word_features(get_words_in_tweets(tweets))
#print word_features

def extract_features(document):
    document_words = set(document)
    features = {}
    for word in word_features:
          features['contains(%s)' % word] = (word in document_words)
    return features
#doc = raw_input("Enter The Tweet: ")
#ft = extract_features(doc)
#print ft

training_set = nltk.classify.util.apply_features(extract_features, tweets)
#print training_set

#classifier = nltk.NaiveBayesClassifier.train(training_set)
f=open('D:/my_classifier.pickle')
classifier=pickle.load(f)
tweet = raw_input("Enter The Tweet: ")
newtweet=word_tokenize(tweet)
newtweet=[w.lower() for w in newtweet]
print 'Tokenize word are ' ,newtweet
tokenizetweet=[]
POSwords=""
wording=""
tokenizetweet=newtweet
m=len(tokenizetweet)
ps=nltk.pos_tag(newtweet)
#print ps
pslength=len(ps)
for pslength in range(0,pslength):
     if (ps[pslength][1] == 'RBR' or ps[pslength][1]=='RBS'or ps[pslength][1]=='JJ' or ps[pslength][1]=='JJS'):
          POSwords=ps[pslength][0]
          #print 'Adj words are ' ,POSwords
POSlen=len(PO`enter code here`Swords)
answer= (classifier.classify(extract_features(tweet.split())))
wording=(classifier.classify(extract_features(POSwords.split())))
#print POSwords.split(),wording
print 'Output is ',answer
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