# How To Find Phrases Inside a Large Text Using C?

Remark: I know there are many similar questions on SO, but none specific to the C language, hence why I am asking this.

Here's the problem I am facing: I will be provided a large text (e.g., 150,000 words) and after that a series of phrases (each phrase has from 1 up to 10 words). For each of those phrases I need to find the word that immediately follows the phrase in the text and return it.

My only idea to solve it so far: create a struct that holds:

• the current word
• the 3 words that preceded that word
• the word that follows

Then I would parse the text creating one struct for each word, and store all those structs on a hash table. As each phrase comes along I would search on the hash table for the last word of that phrase, check if the previous 3 words match, and then return the next word. I believe going to back to 3 words would be enough to uniquely identify phrases, but I could increase that number.

Do you think this would work? Do you know a better way?

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Depends on how fast you need it to be. Until the requirements are intense, I would just use `strstr(whole_text, phrase)+strlen(phrase)`. –  R.. Nov 1 '11 at 20:57
I need it to be pretty fast. In this case I think my solution would be faster than strstr, right? –  DanielS Nov 1 '11 at 20:59
Are you talking about hundreds or thousands of queries per second? Or do you just need a single query to finish in a fraction of a second? I think `strstr` should meet the latter criterion but not the former. Surely your approach should be faster, but programmer time is also worth something... :-) –  R.. Nov 1 '11 at 21:01
First, do a naïve implementation (using `strstr()`.) If and only if that's too slow should you worry about a more complex approach. –  Jonathan Grynspan Nov 1 '11 at 21:16

Much easier approach: run through the text, storing all n-grams (subsequences of n words) for 1 <= n <= 10 in a hash table or trie. Retrieval is then trivial, just look up the n-gram in the hash table or trie.

In the hash table version, you'd just store the n-grams as concatenations of word strings with normalized space in between.

The problem with this approach is that with a hash table, you'll need up to 45 * N entries, where N is the number of words in the text. Lookup should be very fast, though, and 150.000 words is a small enough dataset to make this work.

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The process to build and store all n-grams doesn't look that simple to me, but I'll give it some thought, thanks. –  DanielS Nov 1 '11 at 21:37