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I have classified a set of documents with Lucene (fields: content, category). Each document has it's own category, but some of them are labeled as uncategorized. Is there any way to classify these documents easily in java?

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2 Answers 2

Classification is a broad problem in the field of Machine Learning/Statistics. After reading your question what I feel you have used kind of SQL group by clause (though in Lucene). If you want the machine to classify the documents than you need to know Machine Learning Algorithms like Neural Networks, Bayesian, SVM etc. There are excellent libraries available in Java for these tasks. For this to work you will need features (a set of attributes extracted from data) on which you can train you Algorithm so that it may predict your classification label.

There are some good API's in Java (which allows you to concentrate on code without going in too much in understanding the mathematical theory behind those Algorithms, though if you know it would be very advantageous). Weka is good. I also came across a couple of books from Manning which have handled these tasks well. Here you go:

Chapter 10 (Classification) of Collective Intelligence in Action: http://www.manning.com/alag/

Chapter 5 (Classification) of Algorithms of Intelligent Web: http://www.manning.com/marmanis/

These are absolutely fantastic material (for Java people) on classification particularly suited for people who just dont want to dive in in to the theory (though very essential :)) and just quickly want a working code.

Collective Intelligence in Action has solved the problem of classification using JDM and Weka. So have a look at these two for your tasks.

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Of course I can extract features from my indexes produced by Lucene. Let me check it out in this book and I will come back ;) –  emab Feb 28 '12 at 8:03
    
I think the problem with many of these ML is that they produce single label categorization where it would be ideal to have multi-label categorization. I may be wrong, but Weka had a good implementation of this. The rest didn't seem like they did the job. –  Amir Raminfar Oct 20 '13 at 19:22

Yes you can use similarity queries such as implemented by the MoreLikeThisQuery class for this kind of things (assuming you have some large text field in the documents for your lucene index). Have a look at the javadoc of the underlying MoreLikeThis class for details on how it works.

To turn your lucene index into a text classifier you have two options:

  1. For any new text to classifier, query for the top 10 or 50 most similar documents that have at least one category, sum the category occurrences among those "neighbors" and pick up the top 3 frequent categories among those similar documents (for instance).

  2. Alternatively you can index a new set of aggregate documents, one for each category by concatenating (all or a sample of) the text of the documents of this category. Then run similarity query with you input text directly on those "fake" documents.

The first strategy is known in machine learning as k-Nearest Neighbors classification. The second is a hack :)

If you have many categories (say more than 1000) the second option might be better (faster to classify). I have not run any clean performance evaluation though.

You might also find this blog post interesting.

If you want to use Solr, your need to enable the MoreLikeThisHandler and set termVectors=true on the content field.

The sunburnt Solr client for python is able to perform mlt queries. Here is a prototype python classifier that uses Solr for classification using an index of Wikipedia categories:

https://github.com/ogrisel/pignlproc/blob/master/examples/topic-corpus/categorize.py

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Thank you for the advice, but there are about 10^6 documents to be classified, is the first option good? –  emab Feb 28 '12 at 8:04
    
I think the first is simpler to implement: you don't need any new object in you index. If it's not working good enough for you application try the latter too. I don't have enough experience to know for sure. To classify that many examples in batch might take some time. Depending on the number on max query term (I use 30), if you use shingles and the number of documents with a category in the index, the individual query time might be quite long, say 300ms. Training a mahout SGD classifier and predicting in batch on a one time feature extraction might be faster. –  ogrisel Feb 28 '12 at 8:56

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