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I have an app that extracts information from incoming messages. The messages all contain the same information, but they have different forms depending on the source that sent them.


Message from source A :

A: You spent $50.00 at Macy's on 2/20/12

Message from source B :

Purchase, $50.00, Macy's, 2Feb2012, Balance $5000.00

Every message from a single source has the same form though. So at the moment, I'm doing it by writing a set of regular expressions to first identify which message I'm trying to decode (i.e. what source it came from so I know what the form of the message is), and then extracting the necessary information from the message (in the above example, I want to know the transaction amount, the store where the transaction happened, and the date). If I discover a new source for a message, or a source changes the format of their message (doesn't happen very often, but could happen), I need to manually write the regular expressions for that message. I'm sure however that I could automate this using some kind of machine learning technique. I just don't know much about machine learning, and I don't know where to even start looking for a technique that would apply to my problem. I would like someone to just point me in the right direction on where to start reading.

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up vote 2 down vote accepted

In order to detect and label amounts, dates, person names and similar information you can use a technique called Named Entity Recognition. The Stanford Named Entity Recognizer comes with pretrained, ready to use models. You also use whatever labeled data you have generated so far to learn a custom model for your application. The standard techniques used for this purpose are Conditional Random Fields or Sequence Perceptron. There are many toolkits implementing these models, including:

  • Wapiti - A simple and fast discriminative sequence labelling toolkit.
  • Sequor - sequence labeler based on Collins's (2002) perceptron.
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Thanks, I'll take a look and if I don't get any more answers, mark this one as accepted. – RichardB Jul 24 '12 at 12:47
The Stanford tools look useful. It will take me some time to digest what's out there, but this has certainly pointed me in the right direction. Thanks! – RichardB Aug 1 '12 at 12:43

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