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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.

Example:

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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1 Answer 1

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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