I'm looking for a C++ sentiment analysis library that I could use in my own application. Something that would take a text written by a human as an argument and return information on its mood (positive, negative, neutral, angry, happy, ...). Any ideas?

A few remarks:

  • I'm not looking for a library with "just" NLP tools (as text tokenization, PoS tagging etc.), but really something that does sentiment analysis / opinion mining / mood analysis. Of course an NLP library with sentiment analysis tool is great.
  • Something very simple would be ok (e.g. just returning +1/-1/0)
  • I don't care which underlying technique it may use (dictionaries, bayesian stuffs, SVMs, rule-based...)
  • C++ only!

I know it probably does not exist just like that, but hey.

closed as off-topic by Lior Kogan, talonmies, Yotam Omer, devnull, Jerry Jul 6 '13 at 11:20

This question appears to be off-topic. The users who voted to close gave this specific reason:

  • "Questions asking us to recommend or find a tool, library or favorite off-site resource are off-topic for Stack Overflow as they tend to attract opinionated answers and spam. Instead, describe the problem and what has been done so far to solve it." – Lior Kogan, talonmies, Yotam Omer, devnull, Jerry
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  • A few remarks on the off-topic issue : 1. I'm not asking for a recommandation or a favorite tool, but just a list of existing tools. There is only one correct answer to that question and it doesn't leave space for opinionated answer. Currently the list is empty and that's the correct answer. 2. Where does one has the opportunity to ask such a question and reach a wide community such as SO's? 3. I do agree it attracts spam. – Arthur Jul 6 '13 at 16:14
  • I wish this wasn't marked off topic. This is a actually a great question. The highest rated answer is "build your own," which really doesn't help much. This isn't a simple word filter, as the highest rated response says. Whole teams work on this subject and it's a hot topic. Exactly where should one go to find the answer to this question? – continuousqa Dec 6 '18 at 16:55

I'd suggest writing your own. You can capture 80% of mood correctly with a simple filter for positive and negative sentiment words, and you can scale your sign based on some common modal words and punctuation. If you want to squeeze juice out of that remaining 20% of ambiguity and you don't want to train your own SVM or whatever, I'd suggest finding papers at op.to/goog/scholar+ some of those papers will have authors who have written C++ libs and talking about where you can find / download them.

Also see this SO post among many others for more ideas.

  • 1
    A shame none of the links work. – Houman Mar 3 '16 at 20:57

I'd avoid using lists of words that you try to predict - it simply can't account for the niche and varying language found in real human texts (assuming they're social stuff). I can't help you with a C++ library, but if you're happy calling a web service you can use ours for free Sentiment Analysis of social media.


You can also take a look at Bitext's API for sentiment analysis: https://www.bitext.com/text-analysis-api-and-faq/

It currently supports English, Spanish, Portuguese, French, Italian, German, Dutch and Catalan.

There is no need to do any training of data, since Bitext's language technologies are based on language grammar and dictionaries, not machine-learning or statistics.

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