Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I have a typical AI Problem to solve. Customers gonna submit comments about a product. I have to be able to create a program that classify these comment as either good,bad or neutral.

Surely, Neural Network gonna play a great role in it. Also, I think fuzzy logic can play some role in it. Such as how far a comment is good,bad or neutral!! Some more ideas about how to solve it??

share|improve this question
Apart from searching keywords like great, nice, thanks, or crap, sh*t, etc, I don't know if there is a better option. –  Petar Minchev Oct 12 '11 at 16:45
Just use a real rating system, like number of stars. Amazon, Netflix, they all use a star rating system, and customers are used to this as a feedback mechanism. AI will never pick up on sarcasm, and stars don't require that a user know how to spell English. If you search for specific words, be aware that "this product was a great disappointment" is not a compliment. –  Nikki9696 Oct 12 '11 at 17:00
@Nikki9696 re Sarcasm, never say never: aclweb.org/anthology/P/P11/P11-2102.pdf –  Ofri Raviv Oct 12 '11 at 17:11
Do u think we include a fuzzy system in it, for e.g. How far is a comment Good, bad or Neutral?? –  Noor Oct 15 '11 at 14:01

3 Answers 3

up vote 3 down vote accepted

This problem is usually referred to as Sentiment Analysis. You can check out the wikipedia entry about Sentiment Analysis for a brief review, or Liu Bing's page on sentiment analysis for more detailed resources and tutorials.

share|improve this answer

You can use some form of supervised learning.

The most important thing for classification is then choosing the right features. "Features" means you extract some values from the review that still capture the essence with respect to the classification task. Things that come to my mind are

  • number of words
  • average number of words per sentence
  • number of words from some set like {crap, shit, damn, viagra, ...}

Then you can use any available machine learning algorithm (neural networks, SVM) and train a classifier given you have enough reviews that are labeled with good/neutral/bad.

share|improve this answer

Neural networks would certainly work for it, however I would be supicious about introducing new words, and languages. I would go for a Bayes net approach for determining the probability of being in a "good/neutral/bad" state. You should consider cleaning the data [stemming, etc] before putting it through the bayes net.

Additionally: The meta attributes [what ziggy mentioned] are more of an indicator to boost the performance of the approach you take.

EDIT: Bayes-Nets are a form of supervised learning.

share|improve this answer
Do you mean also learn the structure of the BN or just the CPTs? –  ziggystar Oct 12 '11 at 21:14
By meta attributes I meant # of words, average words per sentence, # of words from a collection etc –  monksy Oct 12 '11 at 23:41

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.