What's the straightforward way to distinguish between this two:

  1. the movie received critical acclaim
  2. the movie did not attain critical acclaim.

Seems to me 'sentiment analysis' of nlp could do it for me. So I'm using Textblob sentiment analysis. But both sentences' polarity is 0.0.

  • From the machine learning point of view, it is similar to sentiment analysis. They are both classification problems but keep in mind your labels convey different supervision, they are showing if the verb is positive or negative.
    – meti
    Dec 12, 2021 at 6:17
  • what's the rough framework towards solving this? i'm currently learning NLP and 'nltk' from zero
    – kyw
    Dec 12, 2021 at 7:28
  • Can you provide labeled data for your task? @kyw
    – meti
    Dec 12, 2021 at 7:30
  • Do you get exactly 0.0 for subjectivity too? That suggests your code is not set up correctly, and it is not actually parsing anything. Dec 12, 2021 at 8:38
  • @meti I don't have labeled data of any sorts.. sounds like i have to train some kinda models?
    – kyw
    Dec 12, 2021 at 12:24

2 Answers 2


For simple in your case, you can use flair which is based on LSTM model, that takes sequences of words into account for prediction.

1. installing flair

!pip3 install flair

2. code

import flair
flair_sentiment = flair.models.TextClassifier.load('en-sentiment')

sentence1 = 'the movie received critical acclaim'
sentence2 = 'the movie did not attain critical acclaim'

s1 = flair.data.Sentence(sentence1)
s1_sentiment = s1.labels

s2 = flair.data.Sentence(sentence2)
s2_sentiment = s2.labels

3. result

[POSITIVE (0.9995)]

[NEGATIVE (0.9985)]

For more details about flair, you can visit this github repo.


It requires negation handling capabilities. For example, wink-nlp supports negation handling. You can checkout the code with this example at runkit.

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