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I have a list of several dozen product attributes that people are concerned with, like

  • Financing
  • Manufacturing quality
  • Durability
  • Sales experience

and several million free-text statements from customers about the product, e.g.

"The financing was easy but the housing is flimsy."

I would like to score each free text statement in terms of how strongly it relates to each of the attributes, and whether that is a positive or negative association.

In the given example, there would be a strong positive association to Financing and a strong negative association to Manufacturing quality.

It feels like this type of problem is probably the realm of Natural Language Programming (NLP). However, I spent several hours reading up on things like OpenNLP and NLTK and find there's so much domain specific terminology that I cannot figure out where to focus to solve this specific problem.

So my three-part question:

  • Is NLP the correct route to solve this class of problem?
  • What aspect of NLP should I focus on learning for this specific problem?
  • Are there alternatives I have not considered?
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up vote 1 down vote accepted

Yes, this is a NLP problem by the name of Sentiment analysis. Sentiment analysis is an active research area with different approaches and a task where a lot of other NLP-methods have to work together, so it is certainly not the easiest field to get started with in NLP.

A more or less recent survey of the academic research in the field can be found in Pang & Lee (2008).

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A resource you might find handy is SentiWordNet. (http://sentiwordnet.isti.cnr.it/) Which is like a dictionary that has a sentiment grade for words. It will tell you to what degree it thinks a word is positive, negative, or objective.

You can then combine that with some nltk code that looks through your sentences for the words you want to associate the sentiment with. So you would write a script to get some level of meaningful chunks of text that surround the words you were looking at, maybe sentence or clause level. Then you can have another thing that runs through the surrounding words and grab all the sentiment scores from the SentiWordNet.

I have some old code that did this and can place on github if you'd like, but you'd still need to make your own request for SentiWordNet.

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I guess your problem is more on association rather than just classification. Now moving forward with this assumption:

Is NLP the correct route to solve this class of problem?


What aspect of NLP should I focus on learning for this specific problem?

Are there alternatives I have not considered?

In depth study of automata theory with respect to NLP will help you a lot, it helped me a lot in grasping the implementations like OpenNLP.

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Did you intend to post this link for Maximum entropy? en.wikipedia.org/wiki/Maximum_entropy_classifier – Eric J. Dec 27 '11 at 18:10
Yea,this one is more specific.I thought to begin with, the one I shared originally, could have given some mathematical background.So have things worked out? – samridhi Dec 28 '11 at 15:40

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