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What are some good algorithms for automatically labeling text with the city / region or origin? That is, if a blog is about New York, how can I tell programatically. Are there packages / papers that claim to do this with any degree of certainty?

I have looked at some tfidf based approaches, proper noun intersections, but so far, no spectacular successes, and I'd appreciate ideas!

The more general question is about assigning texts to topics, given some list of topics.

Simple / naive approaches preferred to full on Bayesian approaches, but I'm open.

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2 Answers 2

up vote 11 down vote accepted

You're looking for a named entity recognition system, or short NER. There are several good toolkits available to help you out. LingPipe in particular has a very decent tutorial. CAGEclass seems to be oriented around NER on geographical place names, but I haven't used it yet.

Here's a nice blog entry about the difficulties of NER with geographical places names.

If you're going with Java, I'd recommend using the LingPipe NER classes. OpenNLP also has some, but the former has a better documentation.

If you're looking for some theoretical background, Chavez et al. (2005) have constructed an interesting syntem and documented it.

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Thanks for the advice. This is a hard, hard problem, and your answer, which I summarize as "Look up NER" is about the best there is, probably :) –  Gregg Lind Dec 26 '08 at 22:20
Did you find any simple solution for this question..?? Since am also looking for same kind of application.. I have implemented my own Trie data structure and i can also easily look up, but problem is collecting data set.. I need to get all the data set in dictionary... Please share your thoughts.. –  Sreedhar GS Feb 28 '14 at 8:33

Latent Semantic Mapping seems like potentially a good fit. That's just about as naive of an algorithm as you're likely to find.

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