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I am working on a text classification problem, I am trying to classify a collection of words into category, yes there are plenty of libraries available for classification, so please dont answer if you are suggesting to use them.

Let me explain what I want to implement. ( take for example )

List of Words:

  1. java
  2. programming
  3. language
  4. c-sharp

List of Categories.

  1. java
  2. c-sharp

here we will train the set, as:

  1. java maps to category 1. java
  2. programming maps to category 1.java
  3. programming maps to category 2.c-sharp
  4. language maps to category 1.java
  5. language maps to category 2.c-sharp
  6. c-sharp maps to category 2.c-sharp

Now we have a phrase "The best java programming book" from the given phrase following words are a match to our "List of Words.":

  1. java
  2. programming

"programming" has two mapped categories "java" & "c-sharp" so it is a common word.

"java" is mapped to category "java" only.

So our matching category for the phrase is "java"

This is what came to my mind, is this solution fine, can it be implemented, what are your suggestions, any thing I am missing out, flaws, etc..

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nothing, that is the question, is this going to work, should i spend time trying to implement this? – Ajay Jadeja Nov 15 '11 at 13:04
up vote 4 down vote accepted

Of course this can be implemented. If you train a Naive Bayes classifier or linear SVM on the right dataset (titles of Java and C# programming books, I guess), it should learn to associate the term "Java" with Java, "C#" and ".NET" with C#, and "programming" with both. I.e., a Naive Bayes classifier would likely learn a roughly even probability of Java or C# for common terms like "programming" if the dataset is divided evenly.

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+1 What if I am trying to classify text under 1000 different category...Still Naive Bayes classifier will be a good option...Can this happen, the text while testing will produce 100 different result...Please suggest... – Wazzzy Jun 20 '14 at 15:55

A dirt simple way of implementing this is using straight-up Lucene (or any text-indexing engine). Create a single Lucene document with all of the "java" examples, and another document with the "c#" examples, and add both to the index. To classify a new document, OR all the terms in the document and execute a query against the index, and grab the category with the highest score.

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If possible then read the section called "A Naive Classifier" in chapter "Document Filtering" in book called "Programming Collective Intelligence". Although the examples are in Python, I hope that will not be of much trouble to you.

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