# Algorithm for multiple word matching in text

I have a large set of words (about 10,000) and I need to find if any of those words appear in a given block of text.

Is there a faster algorithm than doing a simple text search for each of the words in the block of text?

input the 10,000 words into a hashtable then check each of the words in the block of text if its hash has an entry.

Faster though I don't know, just another method (would depend on how many words you are searching for).

simple perl examp:

``````my \$word_block = "the guy went afk after being popped by a brownrabbit";
my %hash = ();
my @words = split /\s/, \$word_block;
while(<DATA>) { chomp; \$hash{\$_} = 1; }
foreach \$word (@words)
{
print "found word: \$word\n" if exists \$hash{\$word};
}

__DATA__
afk
lol
brownrabbit
popped
garbage
trash
sitdown
``````
• I was going to recommend KMP, but this is EXACTLY the solution that is required. +1 and should get the answer check. Jul 8, 2009 at 19:13
• Yeah this is about as good as you are going to get... O(N) time (assuming a good hash function of course) Jul 8, 2009 at 19:21
• @Polaris: Also assuming that the hash of words fits into memory (which, if it's 10k words, should be no problem. Just being pedantic) Jul 8, 2009 at 19:30
• If the "given block of text" is small, and the 10,000 words are sorted, then it might (might) be faster not to bother with the hashtable, just binary chop (even in a newline-separated list). O(M log N) instead of O(M+N). But for general purposes, it has to be either this hashtable, or something fancy like a trie. Jul 8, 2009 at 19:35
• Why a hash and not just a linked list, for example? Jul 8, 2009 at 19:51

Try out the Aho-Corasick algorithm: http://en.wikipedia.org/wiki/Aho-Corasick_algorithm

• +1 because that should actually solve my real problem (I said "words" but I should have said strings, because they can also be two, three or four-words strings Jul 8, 2009 at 21:01
• Would the Aho-Corasick be efficient enough for such a large set of strings? I found an implementation in Java hkn.eecs.berkeley.edu/~dyoo/java/index.html which I could probably use. Jul 8, 2009 at 21:06
• I believe it is, based on all the articles I was able to find related to it online.
– Cuga
Jul 9, 2009 at 18:57
• If this solves the "real" problem, then accept Cuga's answer. Aho-Corasick is a classy beast. It's especially useful in your case because of the spaces in the strings in the search dictionary (the set of strings to search for). For example, with User105033's method (hashing), you can't just check each word; rather, you have to check each word /and/ each consecutive 2, 3, 4, ... words, etc. In contrast, with the state machine approach, this is done implicitly. Jun 24, 2010 at 4:58

Build up a trie of your words, and then use that to find which words are in the text.

The answer heavily depends on the actual requirements.

1. How large is the word list?
2. How large is the text block?
3. How many text blocks must be processed?
4. How often must each text block be processed?
5. Do the text blocks or the word list change? If, how frequent?

Assuming relativly small text blocks compared to the word list and processing each text block only once, I suggest to put the words from the word list into a hash table. Then you can perform a hash lookup for each word in the text block and find out if the word list contains the word.

If you have to process the text blocks multiple times, I suggest to invert the text blocks. Inverting a text block means creating a list for each word that containing all the text blocks containing the specific word.

In still other situations it might be helpful to generate a bit vector for each text block with one bit per word indicating if the word is contained in the text block.

you can build a graph used as a state machine and when you process the ith character of your input word - Ci - you try to go to the ith level of your graph by checking if your previous node, linked to Ci-1, has a child node linked to Ci

ex: if you have the following words in your corpus
("art", "are", "be", "bee")
you will have the following nodes in your graph
n11 = 'a'
n21 = 'r'
n11.sons = (n21)
n31 = 'e'
n32= 't'
n21.sons = (n31, n32)
n41='art' (here we have a leaf in our graph and the word build from all the upper nodes is associated to this node)
n31.sons = (n41)
n42 = 'are' (here again we have a word)
n32.sons = (n42)
n12 = 'b'
n22 = 'e'
n12.sons = (n22)
n33 = 'e'
n34 = 'be' (word)
n22.sons = (n33,n34)
n43 = 'bee' (word)
n33.sons = (n43)

during your process if you go through a leaf while you are processing the last character of your input word, and only in this case, it means that your input is in your corpus.

This method is more complicated to implement than a single Dictionary or Hashtable but it will be much more optimized in term of memory use

• The (usual) state machine approach is called Aho-Corasick, as per Cuga's answer. Jun 28, 2010 at 19:52

The Boyer-Moore string algorithm should work. depending on the size/# or words in the block of text, you might want to use it as the key to search the word list (are there more words in the list then in the block). Also - you probably want to remove any dups from both lists.