Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I am sorry, if my question sounds stupid :) Can you please recommend me any pseudo code or good algo for LSI implementation in java? I am not math expert. I tried to read some articles on wikipedia and other websites about LSI ( latent semantic indexing ) they were full of math. I know LSI is full of math. But if i see some source code or algo. I understand things more easily. That's why i asked here, because so many GURU are here ! Thanks in advance

share|improve this question
2  
Duplicate: stackoverflow.com/questions/1746568/… –  Amit Jan 7 '10 at 6:08
    
Thanks Amit, But if you read my question. So it is different. Even if you think it's same then you can't find some good answer there :) –  user238384 Jan 8 '10 at 1:41
    
Do we always have to reduce the dimension in lsa ? cant we just use the v matrix to find the similarity between the documents and the u matrix to find the similarity between the terms ? –  CTsiddharth Mar 7 '12 at 10:59

3 Answers 3

An idea of LSA is based on one assumption: the more two words occur in same documents, the more similar they are. Indeed, we can expect that words "programming" and "algorithm" will occur in same documents much more often then, say, "programming" and "dog-breeding".

Same for documents: the more common/similar words two documents have, the more similar themselves they are. So, you can express similarity of documents by frequencies of words and vice versa.

Knowing this, we can construct a co-occurrence matrix, where column names represent documents, row names - words and each cells[i][j] represents frequency of word words[i] in document documents[j]. Frequency may be computed in many ways, IIRC, original LSA uses tf-idf index.

Having such matrix, you can find similarity of two documents by comparing corresponding columns. How to compare them? Again, there are several ways. The most popular is a cosine distance. You must remember from school maths, that matrix may be treated as a bunch of vectors, so each column is just a vector in some multidimensional space. That's why this model is called "Vector Space Model". More on VSM and cosine distance here.

But we have one problem with such matrix: it is big. Very very big. Working with it is too computationally expensive, so we have to reduce it somehow. LSA uses SVD technique to keep the most "important" vectors. After reduction matrix is ready to use.

So, algorithm for LSA will look something like this:

  1. Collect all documents and all unique words from them.
  2. Extract frequency information and build co-occurrence matrix.
  3. Reduce matrix with SVD.

If you're going to write LSA library by yourself, the good point to start is Lucene search engine, which will make much easier steps 1 and 2, and some implementation of high-dimensional matrices with SVD capability like Parallel Colt or UJMP.

Also pay attention to other techinques, which grown up from LSA, like Random Indexing. RI uses same idea and shows approximately same results, but doesn't use full matrix stage and is completely incremental, which makes it much more computationally efficient.

share|improve this answer
    
Hi i have been working on lsa lately . Do we always have to reduce the dimensions of the diagonal matrix . My need is to find the similarity between two documents . Is it ok if i take the v matrix alone and use it to find the similarity . I read this approach in this paper : miislita.com/information-retrieval-tutorial/… –  CTsiddharth Mar 7 '12 at 10:58
    
@CTsiddharth: if you don't want to reduce your dimensionality, there's no need in SVD and thus V matrix at all - you can use original term-document matrix as is. However, dimensionality reduction gives you 2 big advantages: 1) it reduces noise; 2) it makes document similarity computation much more fast (less elements to compare). So, it makes sense to use full matrix for relatively small corpora (say, < 5000 documents), for larger documents you need complete dimensionality reduction (SVD + selecting k first vectors). –  ffriend Mar 7 '12 at 14:39
    
In my case , i have 35 documents and around 1500 words . If i do an svd the v matrix becomes a 35*35 . So can i use this 35*35 matrix to find the similarity instead of a 1500*35 ? this has been one question i have been thinking of for quite a while –  CTsiddharth Mar 8 '12 at 4:20
    
And also please help me answer this question : stackoverflow.com/questions/9582291/… –  CTsiddharth Mar 8 '12 at 4:53
    
@CTsiddharth: when you reduce dimensions, you filter noise, but also you lose some information. So there's no single answer to your question - it all depends on you dataset. Make some test set and check results for both full and reduced dataset. Same thing to your another question - try different values for reduced dimensions and take the best. –  ffriend Mar 9 '12 at 21:34

This maybe a bit late but I always liked Sujit Pal's blog http://sujitpal.blogspot.com/2008/09/ir-math-with-java-tf-idf-and-lsi.html and I have written a bit on my site if you are interested.

The process is way less complicated than it is often written up as. And really all you need is a library that can do single value decomposition of a matrix.

If you are interested I can explain in a couple of the short take away bits:

1) you create a matrix/dataset/etc with word counts of various documents - the different documents will be your columns and the rows the distinct words.

2) Once you've created the matrix you use a library like Jama (for Java) or SmartMathLibrary (for C#) and run the single value decomposition. All this does is take your original matrix and break it up in to three different parts/matrix that essentially represent your documents, your words, and kind of a multiplier (sigma) these are called the vectors.

3) Once you have you word, document, sigma vectors you shrink them equally (k) by just copying smaller parts of the vector/matrix and then multiply them back together. By shrinking them it kind of normalizes your data and this is LSI.

here are some fairly clear resources:

http://puffinwarellc.com/index.php/news-and-articles/articles/30-singular-value-decomposition-tutorial.html

http://lsa.colorado.edu/papers/JASIS.lsi.90.pdf http://www.soe.ucsc.edu/classes/cmps290c/Spring07/proj/Flynn_talk.pdf

Hope this help you out a bit.

Eric

share|improve this answer
    
Hi, I learned alot meanwhile. But still your answer is very helpfull +1. I saw sujit pall blog too. It is good but i don't agree with his results. I asked him when there is not context similarity between two documents why it is saying 100% same. He couldn't answer it. Now i am looking how can I use LDA other than LSI. Is it possible to use LDA for this purpose???? –  user238384 Feb 14 '10 at 0:46

I know this is way too late :) But recently I found this link quite helpful to understand the principles. Just noting it down so people searching for it might find it useful.

currently, I'm looking out for a similar introduction to Probabilistic Latent Semantic Analysis/Indexing. Less of math and more of examples explaining the principles behind it. If anyone knows such an introduction, please let me know.

share|improve this answer

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.