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Im new to python and need help! i was practicing with python NLTK text classification. Here is the code example i am practicing on

Ive tried this one

from nltk import bigrams
from nltk.probability import ELEProbDist, FreqDist
from nltk import NaiveBayesClassifier
from collections import defaultdict

train_samples = {}

with file ('positive.txt', 'rt') as f:
   for line in f.readlines():

with file ('negative.txt', 'rt') as d:
   for line in d.readlines():

f=open("test.txt", "r")

def bigramReturner(text):
    tweetString = text.lower()
    bigramFeatureVector = {}
    for item in bigrams(tweetString.split()):
        bigramFeatureVector.append(' '.join(item))
    return bigramFeatureVector

def get_labeled_features(samples):
    word_freqs = {}
    for text, label in train_samples.items():
        tokens = text.split()
        for token in tokens:
            if token not in word_freqs:
                word_freqs[token] = {'pos': 0, 'neg': 0}
            word_freqs[token][label] += 1
    return word_freqs

def get_label_probdist(labeled_features):
    label_fd = FreqDist()
    for item,counts in labeled_features.items():
        for label in ['neg','pos']:
            if counts[label] > 0:
    label_probdist = ELEProbDist(label_fd)
    return label_probdist

def get_feature_probdist(labeled_features):
    feature_freqdist = defaultdict(FreqDist)
    feature_values = defaultdict(set)
    num_samples = len(train_samples) / 2
    for token, counts in labeled_features.items():
        for label in ['neg','pos']:
            feature_freqdist[label, token].inc(True, count=counts[label])
            feature_freqdist[label, token].inc(None, num_samples - counts[label])
    for item in feature_freqdist.items():
        print item[0],item[1]
    feature_probdist = {}
    for ((label, fname), freqdist) in feature_freqdist.items():
        probdist = ELEProbDist(freqdist, bins=len(feature_values[fname]))
        feature_probdist[label,fname] = probdist
    return feature_probdist

labeled_features = get_labeled_features(train_samples)

label_probdist = get_label_probdist(labeled_features)

feature_probdist = get_feature_probdist(labeled_features)

classifier = NaiveBayesClassifier(label_probdist, feature_probdist)

for sample in test_samples:
    print "%s | %s" % (sample, classifier.classify(bigramReturner(sample)))

but getting this error, why?

    Traceback (most recent call last):
  File "C:\python\", line 76, in <module>
    print "%s | %s" % (sample, classifier.classify(bigramReturner(sample)))
  File "C:\python\", line 23, in bigramReturner
    bigramFeatureVector.append(' '.join(item))
AttributeError: 'dict' object has no attribute 'append'
share|improve this question
Why do you not use Weka, Is it your assignment? – Grijesh Chauhan Dec 22 '12 at 13:53
this code is for bi-gram – Grijesh Chauhan Dec 22 '12 at 13:53
up vote 7 down vote accepted

A bigram feature vector follows the exact same principals as a unigram feature vector. So, just like the tutorial you mentioned you will have to check if a bigram feature is present in any of the documents you will use. As for the bigram features and how to extract them, I have written the code bellow for it. You can simply adopt them to change the variable "tweets" in the tutorial.

import nltk
text = "Hi, I want to get the bigram list of this string"
for item in nltk.bigrams (text.split()): print ' '.join(item)

Instead of printing them you can simply append them to the "tweets" list and you are good to go! I hope this would be helpful enough. Otherwise, let me know if you still have problems. Please note that in applications like sentiment analysis some researchers tend to tokenize the words and remove the punctuation and some others don't. From experince I know that if you don't remove punctuations, Naive bayes works almost the same, however an SVM would have a decreased accuracy rate. You might need to play around with this stuff and decide what works better on your dataset. Edit1: There is a book named "Natural language processing with Python" which I can recommend it to you. It contains examples of bigrams as well as some exercises. However, I think you can even solve this case without it. The idea behind selecting bigrams a features is that we want to know the probabilty that word A would appear in our corpus followed by the word B. So, for example in the sentence "I drive a truck" the word unigram features would be each of those 4 words while the word bigram features would be: [I drive, drive a, a truck]. Now you want to use those 3 as your features. So the code function bellow puts all bigrams of a string in a list named bigramFeatureVector.

  def bigramReturner (tweetString):
    tweetString = tweetString.lower()
    tweetString = removePunctuation (tweetString)
    bigramFeatureVector = []
    for item in nltk.bigrams(tweetString.split()):
        bigramFeatureVector.append(' '.join(item))
    return bigramFeatureVector

Note that you have to write your own removePunctuation function. What you get as output of the above function is the bigram feature vector. You will treat it exactly the same way the unigram feature vectors are treated in the tutorial you mentioned.

share|improve this answer
really thanks for your advices! I will try ma best with it! – Aikin Jan 8 '13 at 10:33
ahhhh dont understand how to use bigrams in there any tutorials? – Aikin Jan 11 '13 at 6:37
Check out my edit above. I guess it should be clearer now! – user823743 Jan 12 '13 at 0:21
thank you for your explanations! – Aikin Jan 14 '13 at 12:55
Ive editted my question could you help me with the error im getting? i used your code. – Aikin Jan 14 '13 at 13:19

My understanding is that link uses words as keys. Furthermore it only considers words longer than 2 letters.

Unigram is 1 letter.

Bigram is 2-letter sequence.

I think you want to replace get_words_in_tweets with your own function, that instead converts tweets to bigrams.

Looks like you just started learning, so I recommend that you write this function yourself. It will give you clearer understanding of what's going on.

NLTK actually contains a bunch of useful text feature(?) extraction functions, including n-grams. Eventually you want to learn using those too.

share|improve this answer
ALthough bigrams can be any two letters in a given token, usually for document classification bigrams are two word sequences. It often doesn't make sense to classify using single or double letters. – English Grad Dec 25 '13 at 13:13
yes it makes perfect sense to classify 2-letter and sometimes 3-letter sequences. an alphabet of letters is small, thus 2- or 3-letter sequence space is bounded. a 2-word space is humongous by comparison. Have a look at example in you can clearly see how to determine natural language used based on bigram frequency. moreover n-grams are resilient to spelling errors, etc, and thus are widely used in e.g. spam filters. – qarma Jan 2 '14 at 17:43
Granted, but the question is about twitter classification not spelling errors. If you feel that 2-letter bigrams are helpful in determining twitter sentiment I am very interested to hear the approach. – English Grad Jan 2 '14 at 23:23
I think 2-letter classifier should be roughly as good as 2-word classifier for common short tweets. Pros: comprehensive training set; cons: small loss of precision. In the end though, point of N-grams is moot, as proper sentiment analysis requires grammar parser, e.g. consider awesome x! vs. awesome x, not! – qarma Jan 3 '14 at 14:27

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