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I'm trying to write a program that takes text(article) as input and outputs the polarity of this text, weather its a positive or a negative sentiment. I've read extensively about different approaches but i am still confused. I read about many techniques like classifiers and machine learning. I would like direction and clear instructions on where to start. For example, i have a classifier which requires a dataset but how do i convert the text(article) into a dataset for the classifier. If anyone can tell me the logical sequence to approach this problem that would be greet. Thanks in advance! PS: please mention any related algorithms or open-source implementation

Regards, Mike

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There are myriad choices for turning text into classifier input, depending o.a. factors on the ML framework used. Read up on ML first. –  larsmans Oct 4 '11 at 9:27

4 Answers 4

up vote 5 down vote accepted

If you're using Python, I'd suggest you have a look at NLTK and the NLTK book.

This blog: streamhacker.com has some very good articles to get you started.

There's been lots of research in this area in the since the late 2000's.

UPDATE (Oct 2013):

Stanford researches made a breakthrough in sentiment analysis that has achieved more than 85% accuracy on average. (http://gigaom.com/2013/10/03/stanford-researchers-to-open-source-model-they-say-has-nailed-sentiment-analysis/)

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start with NLTK. NLP and machine learning are not trivial and it's good to work through some examples. the solution you'll use is probably some word-based sentiment classifier with stemming and maybe n-grams of words with your ML algorithm of choice. Naive Bayes is not bad for this and is easy to implement yourself. See many similar questions on here for more in depth explanations. –  nflacco Oct 5 '11 at 1:32
im looking for something that has great performance and good accuracy. I read that random forests have good performance. Is it practical to use random forests for finding document’s polarity ? –  Mike G Oct 5 '11 at 3:26
performance depends on the problem, data and features. algorithm is not so important. especially if you haven't done this before, it's important to work through the simple stuff so you get a feel for what features actually help you. –  nflacco Oct 10 '11 at 0:42
+1 for NLTK. Look here for a sentiment analysis demo, btw: text-processing.com/demo/sentiment –  Savino Sguera Feb 11 '12 at 18:45

Before starting from scratch, you can have a look at existing NLP frameworks.

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You can check this tutorial on how to use lingpipe language model classifeirs on polarity database of movie review for sentiments. http://alias-i.com/lingpipe/demos/tutorial/sentiment/read-me.html

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You can look at the software WEKA. It has many built-in machine learning classifiers which you can use for sentiment classification. It requires you to convert the input data to ARFF format.

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