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I'm working on a sentiment analysis project in Python using NLTK. The output of the project must show whether the given statement is positive or negative. I have succeeded in doing that, but how can I obtain an output for a neutral statement? And is it possible to output in the form of percentages (i.e., positive %, negative %, or neutral %)?

classifier.py

import random
import preprocess
import nltk

def get_classifier():
    data = preprocess.get_data()
    random.shuffle(data)

    split = int(0.8 * len(data))

    train_set = data[:split]
    test_set =  data[split:]

    classifier = nltk.NaiveBayesClassifier.train(train_set)

    accuracy = nltk.classify.util.accuracy(classifier, test_set)
    print("Generated Classifier")
    print('-'*70)
    print("Accuracy: ", accuracy)
    return classifier

preprocess.py

import nltk.classify
from nltk.corpus import stopwords
from nltk.tokenize import word_tokenize

stop_words = stopwords.words("english")

def create_word_features_pos(words):
    useful_words = [word for word in words if word not in stop_words]
    my_list = [({word: True}, 'positive') for word in useful_words]
    return my_list

def create_word_features_neg(words):
    useful_words = [word for word in words if word not in stop_words]
    my_list = [({word: True}, 'negative') for word in useful_words]
    return my_list

def create_word_features(words):
    useful_words = [word for word in words if word not in stopwords.words("english")]

    pos_txt = get_tokenized_file(u"positive-words.txt")
    neg_txt = get_tokenized_file(u"negative-words.txt")

    my_dict = dict([(word, True) for word in pos_txt if word in useful_words])
    my_dict1 = dict([(word, False) for word in neg_txt if word in useful_words])
    my_dict3 = dict([word,])
    my_dict.update(my_dict1)

    return my_dict

def get_tokenized_file(file):
    return word_tokenize(open(file, 'r').read())

def get_data():
    print("Collecting Negative Words")
    neg_txt = get_tokenized_file(u"negative-words.txt")
    neg_features = create_word_features_neg(neg_txt)

    print("Collecting Positive Words")
    pos_txt = get_tokenized_file(u"positive-words.txt")
    pos_features = create_word_features_pos(pos_txt)
    return pos_features + neg_features

def process(data):
    return [word.lower() for word in word_tokenize(data)]
  • Fix your indentations and Use proper formatting for your code – AkshayNevrekar Mar 14 at 4:37
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The doc for nltk.NaiveBayesClassifier.train:

Parameters: labeled_featuresets – A list of classified featuresets, i.e., a list of tuples (featureset, label).

This means your train_set is a set of tuples of (features, label).

If you want to add a neutral type, you need to label some of your data as neutral otherwise there is no way for the classifier to learn this new type.

Right now you label your data as: (word, True) and (word, False), an example of switching to 3 labels is (word, 0), (word, 1), (word, 2)

nltk.NaiveBayesClassifier.prob_classify will return the probability of each label.

Documentation can be found here: https://www.nltk.org/api/nltk.classify.html#nltk.classify.naivebayes.NaiveBayesClassifier

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