Welcome to OGeek Q&A Community for programmer and developer-Open, Learning and Share
Welcome To Ask or Share your Answers For Others

Categories

0 votes
329 views
in Technique[技术] by (71.8m points)

python - n-grams with Naive Bayes classifier

Im new to python and need help! i was practicing with python NLTK text classification. Here is the code example i am practicing on http://www.laurentluce.com/posts/twitter-sentiment-analysis-using-python-and-nltk/

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():
       train_samples[line]='pos'

with file ('negative.txt', 'rt') as d:
   for line in d.readlines():
       train_samples[line]='neg'

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

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_fd.inc(label)
    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])
            feature_values[token].add(None)
            feature_values[token].add(True)
    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
aive_test.py", line 76, in <module>
    print "%s | %s" % (sample, classifier.classify(bigramReturner(sample)))
  File "C:python
aive_test.py", line 23, in bigramReturner
    bigramFeatureVector.append(' '.join(item))
AttributeError: 'dict' object has no attribute 'append'
See Question&Answers more detail:os

与恶龙缠斗过久,自身亦成为恶龙;凝视深渊过久,深渊将回以凝视…
Welcome To Ask or Share your Answers For Others

1 Reply

0 votes
by (71.8m points)

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.

Edit 1:

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.


与恶龙缠斗过久,自身亦成为恶龙;凝视深渊过久,深渊将回以凝视…
OGeek|极客中国-欢迎来到极客的世界,一个免费开放的程序员编程交流平台!开放,进步,分享!让技术改变生活,让极客改变未来! Welcome to OGeek Q&A Community for programmer and developer-Open, Learning and Share
Click Here to Ask a Question

...