I am using
Nltk to remove stopwords from a sentence.
"I would love to fly again via American Airlines"
"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.