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I have a number of customer review articles about cars. Some of them are written by advanced/experienced users while some others are no more than casual comments written by novice user. I am considering to differentiate those professional reviews from casual comments

For example, a professional review:

The most impressive technical aspect has to be the 13:1 compression ratio; that’s stratospherically high and almost rivals the compression of some diesels.Usually an engine like this would depend on high octane fuel, but the CX-5 asks for nothing more than standard fuel, and runs without a trace of pinging.....

A casual comment:

I like my new car so much, it's the best-value buying in mid-spec models....

I guess some NLP or Machine Learning tools can do this. Anybody can point me in the right direction? Thanks!

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closed as not a real question by Brian Roach, larsmans, blahdiblah, Tim, joran Jul 27 '12 at 5:29

It's difficult to tell what is being asked here. This question is ambiguous, vague, incomplete, overly broad, or rhetorical and cannot be reasonably answered in its current form. For help clarifying this question so that it can be reopened, visit the help center. If this question can be reworded to fit the rules in the help center, please edit the question.

Can you give any example where the expert comment is very short, whilst the non-expert one is very long? If not, then simply remove stop words, then count words. –  HappyTimeGopher Jul 25 '12 at 15:33

2 Answers 2

Sounds like you're looking for a Bayesian classifier. Plenty to read here: http://stackoverflow.com/search?q=naive+bayesian+classification

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Why recommend Naive Bayes? There are much better classification algorithms. –  Grzegorz Chrupała Jul 25 '12 at 10:25
I have very limited experience with classifiers; it was the first one that came to mind. –  Matt Ball Jul 25 '12 at 10:56
@Grzegorz: Naive Bayes is very fast and produces a pretty good baseline for text classification tasks. Picking the appropriate features is, in my experience, much more important than NB vs. SVM. –  larsmans Jul 25 '12 at 14:56
@larsmans Picking appropriate features is easier with discriminative methods since they don't make assumptions about features being independent (like NB does) so you can just throw any feature which you think may be useful, and dependent or uninformative features won't hurt (much). You have to much more careful about which features to use with NB. –  Grzegorz Chrupała Jul 27 '12 at 12:03
@Grzegorz: actually, the feature independence assumption is that much of a problem in practice, nor in theory for that matter. Words in a text aren't really mutually independent, so by your reasoning NB with BoW features shouldn't work, but in practice it fares quite well. –  larsmans Jul 27 '12 at 12:07

The question is whether you have (or are willing to produce) some labeled data. I you do then you can use a supervised classification approach and define some simple features such as bag-of-words features, text length, average word length etc.

Classifiers such as Support Vector Machines obtain state of the art performance in supervised text classification.

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Thanks, I'll give a try. –  Eric Aug 9 '12 at 4:03

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