I'm doing sentiment analysis for documents. Theoretically i need to classify the document in to three groups. Positive ,Negative and Neutral. My results are produced between -1(negative) and +1(positive), obviously 0 is neutral.

Is that right if i classified the range as [-1 to -0.33]Negative ,[-0.34 to +0.33]Neutral and [+0.34 to +1]Positive.

Or is there is any benchmark range for classifying sentiment range. BTW: I'm using python TextBlob sentiment API to analyse the Enron email dataset.

  • Without revealing your data and your methods, your question really doesn't make much sense. My suggestion would be to plot your performance on your training data and establish what boundaries make sense for you completely empirically. – tripleee Feb 22 '16 at 8:48
  • Thank you tripleee. Please check my edited Question. – Miller Feb 22 '16 at 9:28
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    Without a graph of your actual numbers, we'd have to repeat your experiment to obtain any useful guesstimate. From my limited experience with this particular corpus, I would expect "neutral" to dominate, so maybe you'll want to narrow the middle band to capture even more mildly positive/negative sentiments out of the dull grey inertia of bulk "please read the attached Excel sheet" messages. – tripleee Feb 22 '16 at 9:45
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    If you are lucky, you might be able to find notches like in the lower picture here: i.stack.imgur.com/8leUx.jpg (notice the arrows). – tripleee Feb 22 '16 at 9:57
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    A graph on that level would hardly be confidential, and would finally give us something concrete to say; but up to your judgement, obviously. – tripleee Feb 22 '16 at 15:53

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