# Finding Similar Paragraphs in Different Documents

I am trying to figure out what type of analysis and currently available libraries there are out there to, when feed in two text paragraphs, determine if there is some degree of similarity between the two (whether with regards to subjects and verbs, or context). I imagine there might be some NLP type analysis that could be done but seeing what experiences people have had in these solutions.

For example, consider the following two paragraphs:

1. Governing Law. This Agreement is governed by the laws of the State of Missouri without reference to its conflict of law principles.

2. Law to Apply. The laws of the State of Missouri shall apply to this Agreement.

Fundamentally, I'd want the have those two clauses picked as identical.

I am looking for a library available under .Net.

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Could you do a simple percentage of similar words? I would imagine anything more sophisticated would be proprietary as it would have to be a pretty complex and clever algorithm to do more than that –  T. Kiley Oct 11 '11 at 19:04
I was thinking that might work. But the above is an example and not sure if there is an alternative that may handle a broader amount of paragraphs –  user990137 Oct 12 '11 at 2:37

Well that is an interesting question. You could use NLTK to extract the core concepts (Noun groups) and compare those directly. In this case you'd get:

1. Governing Law, Agreement, Laws, State, Missouri, conflict, law principles
2. Law, laws, State, Missouri, Agreement

Now, similarity is not bi-directional. Group 2 is fully represented in Group 1, but not the other way around. You could apply a harmonic mean where you count the percentage of a group in another group so G21 would be 1.0 and G12 would be 0.57. So the harmonic mean would be H = 2AB/(A+B) == 2(1.0)*(0.57)/(1.0 + 0.57) = 0.72.

Now, this isn't identical but in your example you wanted there to be a match between the two paragraphs. In this case their harmonic mean, H, is 0.72. The higher the number, the harder it is to achieve. H>0.8 is considered good. H>0.9 for most systems is exceptional. So what you must decide is where do you want your arbitrary line in the sand drawn? It has to be arbitrary because you haven't given a definition of the degree of similarity. So do you set it at 0.6, 0.7? How about 0.12948737? A good way of discovering this threshold is to take test examples and without doing the math just judge for yourself their similarity and then run the numbers and see what you come up with.

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Here is a great article I found on integrating C# and NLTK using IronPython. I suggest the separate processes method as the first route to go by. NLTK is definitely a bit sluggish. I hope that when they finally port it to Python 3.x it will be optimized better. –  Pete Mancini Oct 12 '11 at 17:02
Can you repost the link? It didn't appear. –  user990137 Nov 6 '11 at 19:02

I don't know whether there is a .NET implementation, but you can easily code this yourself.

You can use a reversed n-gram index (A), look up n-grams in your search paragraph (B), calculate common n-grams divided by total n-grams (C) which gives you a probability measure, for which you can set a threshold and probably do other stuff as well.

(A) Create a reversed n-gram index: get all n-grams from the paragraphs you want to search through and store them in a db.

Example:

A small corpus consisting of the following (short) paragraphs: {rain, spain, main, plain}

has the following 3-grams: {#ra, rai, ain, in#, #sp, spa, pai, #ma, mai, #pl, pla, lai}

You get the following key-value pairs: {(#ra, rain), (rai, rain), (ain, rain), (ain, spain), (ain, main), (ain, plain), (in#, rain), (in#, spain), (in#, main), (in#, plain), (#sp, spain), (spa, spain), (pai, spain), (#ma, main), (mai, main), (#pl, plain), (pla, plain), (lai, plain)}

(B) When looking up a paragraph to match against the corpus, calculate all its n-grams, look up each n-gram in the reversed index.

Example:

Look up "pain" in the db we just created. We get the following n-grams: {#pa, pai, ain, in#}

Here are the matching entries:

#pa -> no match

pai -> {spain}

ain -> {rain, spain, main, plain}

in# -> {rain, spain, main, plain}

(C) Calculate a score for each entry you find by dividing the amount of its common n-grams and the union of all n-grams in search paragraph and result paragraph.

Example

pain vs. spain: common n-grams: {pai, ain, in#}, union of n-grams {#pa, #sp, pai, ain, in#}, score: 3/5 (0.6)

pain vs. rain: common n-grams: {ain, in#}, union of n-grams {#pa, #ra, ain, in#}, score: 2/4 (0.5)

pain vs. main: common n-grams: {ain, in#}, union of n-grams {#pa, #ma, ain, in#}, score: 2/4 (0.5)

pain vs. plain: common n-grams: {ain, in#}, union of n-grams {#pa, #pl, lai, ain, in#}, score: 2/5 (0.4)

Implementation details:

• Make the n in n-grams configurable both in search and storage, this gives you flexibility to experiment with 3-grams, 4-grams, 5-grams, ...
• Use a fast (in-memory/in-process) db, such as SQLite or BerkeleyDb
• Make sure duplicate keys are allowed (BerkeleyDb allows this - but you need to find a workaround for duplicate key-value pairs, for example "maintain" has twice the 3-grams ain and in#, so technically you cannot store this in the db)

Happy coding

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Great guidance! –  user990137 Nov 6 '11 at 19:03

I suggest you want to use the same algorithm Google uses to find duplicate documents on the web http://www.cs.sunysb.edu/~cse692/papers/henzinger_sigir06.pdf

Hash the phrases using Rubin's algorithm, sort these hashes and compare the bottom 10. Very fast.

Patrick.

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