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'm working on a project at the moment where I need to pick out the most common phrases in a huge body of text. For example say we have three sentences like the following:

  • The dog jumped over the woman.
  • The dog jumped into the car.
  • The dog jumped up the stairs.

From the above example I would want to extract "the dog jumped" as it is the most common phrase in the text. At first I thought, "oh lets use a directed graph [with repeated nodes]":

directed graph

EDIT: Apologies, I made a mistake while making this diagram "over", "into" and "up" should all link back to "the".

I was going to maintain a count of how many times a word occurred in each node object ("the" would be 6; "dog" and "jumped", 3; etc.) but despite many other problems the main one came up when we add a few more examples like (please ignore the bad grammar :-)):

  • Dog jumped up and down.
  • Dog jumped like no dog had ever jumped before.
  • Dog jumped happily.

We now have a problem since "dog" would start a new root node (at the same level as "the") and we would not identify "dog jumped" as now being the most common phrase. So now I am thinking maybe I could use an undirected graph to map the relationships between all the words and eventually pick out the common phrases but I'm not sure how this is going to work either, as you lose the important relationship of order between the words.

So does anyone have any general ideas on how to identify common phrases in a large body of text and what data structure I would use.

Thanks, Ben

share|improve this question
    
Just linking back to a later post stackoverflow.com/questions/8898521/… –  conr404 Sep 27 '13 at 20:16

2 Answers 2

up vote 5 down vote accepted

Check out this related question: What techniques/tools are there for discovering common phrases in chunks of text? Also related to the longest common substring problem.

I've posted this before, but I use R for all of my data-mining tasks and it's well suited to this kind of analysis. In particular, look at the tm package. Here are some relevant links:

More generally, there are a large number of text mining packages on the Natural Language Processing view on CRAN.

share|improve this answer
    
I don't believe the longest common substring problem solves the problem as from what I've read an LCS algorithm is going to favour a longer less popular common string over a shorter more popular common string, correct me if I am wrong. R looks interesting, I've only looked at it shortly before, will definitely take another look. Thank you. –  benofsky Dec 18 '09 at 23:31
    
From the link above, Norman Ramsey's suggestion to use n-grams should help. –  schultkl Dec 20 '09 at 23:20
    
Turns out I was being ignorant, this lead me to solve my problem. :) –  benofsky Dec 29 '09 at 12:05

I'm not in a position to offer anything specific about algorithms to use. However, Have you noticed the arrival of igraph for representing and manipulating graphs? I use Python and the bindings for that make the underlying product look pretty nifty.

http://igraph.sourceforge.net

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.