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I am using Nltk to remove stopwords from a sentence.

eg. "I would love to fly again via American Airlines"

Result: "Love to fly American Airlines"

I had tried the following Code :

# Tokenizing the text 
txt = "I love to fly with American Airlines"
stopWords = set(stopwords.words("english")) 
words = word_tokenize(txt) 

# Creating a frequency table to keep the  
# score of each word 

freqTable = dict() 
for word in words: 
    word = word.lower() 
    if word in stopWords: 
        continue
    if word in freqTable: 
        freqTable[word] += 1
    else: 
        freqTable[word] = 1

# Creating a dictionary to keep the score 
# of each sentence 
sentences = sent_tokenize(txt) 
sentenceValue = dict() 

for sentence in sentences: 
    for word, freq in freqTable.items(): 
        if word in sentence.lower(): 
            if sentence in sentenceValue: 
                sentenceValue[sentence] += freq 
            else: 
                sentenceValue[sentence] = freq 



sumValues = 0
for sentence in sentenceValue: 
    sumValues += sentenceValue[sentence] 

# Average value of a sentence from the original text 

average = int(sumValues / len(sentenceValue)) 

# Storing sentences into our summary. 
summary = '' 
for sentence in sentences: 
    if (sentence in sentenceValue) and (sentenceValue[sentence] > (1.2 * average)): 
        summary += " " + sentence 

print("Summary: " + summary)

This result is an empty string because I think the sentence is too short for Nltk to work. Just researching if there's an easier approach to this, I'm planning to train a model for this.

  • post the code you have tried – deadshot Jul 4 at 4:53
0

The Python Library that can easily and efficiently shorten the Sentence by removing stop words is nlkt, you are using it too. but there might be some problem with your approch(Logic or code).

The below code works perfectly

from nltk.corpus import stopwords 
from nltk.tokenize import word_tokenize 
 
example_sent = "I love to fly with American Airlines"
  
stop_words = set(stopwords.words('english')) 
  
word_tokens = word_tokenize(example_sent) 
  
filtered_sentence = [w for w in word_tokens if not w in stop_words] 
  
filtered_sentence = [] 
  
for w in word_tokens: 
    if w not in stop_words: 
        filtered_sentence.append(w) 
  
print(word_tokens)
print(filtered_sentence)
print(" ".join(filtered_sentence))
| improve this answer | |
  • this simple code is exactly what im looking for. Thanks! – Rekt Jul 4 at 16:14

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