Announcing Stack Overflow Documentation

We started with Q&A. Technical documentation is next, and we need your help.

Whether you're a beginner or an experienced developer, you can contribute.

Sign up and start helping → Learn more about Documentation →

Here is the situation:

I have a webpage that I have scraped as a string.

I have several fields in a MSSQL database. For example, car model, it has an ID and a Name, such as Mustang or Civic. It is pre-filled with most models of car.

I want to find any match for any row in my models table. So if I have Civic, Mustang and E350 in my Model Table I want to find any occurance of any of the three on the page I have scraped.

What is an efficient way to do this in C#. I am using LINQ to SQL to interface with the db.

Does creating a dictionary of all models, tokenizing the page and iterating through the tokens make sense? Or should I just iterate through the tokens and use a WHERE clause and ask the database if there is a match?

    //Dictionary dic contains all models from the DB, with the name being the key and the id being the value...
    foreach(string pageToken in pageTokens)
              //Do what I need to do

Both of these methods seem terrible to me. Any suggestions on what I should do? Something with set intersection I would imagine might be nice?

Neither of these methods address what happens when a Model name is more than one word..like "F150 Extended Cab". Thoughts on that?

share|improve this question
Have you already broken down the text to determine what piece of text is a car? For example perhaps the page is structured in a predictable way to extract the matches. Or is this one gigantic block of text that hasn't been evaluated? – Ahmad Mageed Jan 19 '10 at 21:10
It is a giant block of text. Craigslist. The title will most likely contain the model. But the model issue was for illustration purposes. I have a lot of other stuff I need to find. – Blankasaurus Jan 19 '10 at 21:15
up vote 5 down vote accepted

Searching for multiple strings in a larger text is a well-understood problem, and signifigant research has been made into making it fast. The two most popular and effective methods for this are the Aho-Corasick Algorithm (I'd rcommend this one) and the Rabin-Karp Algorithm. They use a little preprocessing, but are orders of magnitude less complex & faster than the naieve method (the naieve method is worst-case O(m*n^2*p) where m is the length of the long string [the webpage you scraped] and n is the average length of the needles and p is the number of needles). Aho-Corsaik is linear. A C# implementation of it can be found at CodeProject for free.

Edit: Oops, I was wrong about the complexity of Aho-Corasick -- it's linear in the number & length of input strings + the size of the string being analyzed [the scraped text] plus the number of matches. But it's still linear and linear is a lot better than cubic :-).

share|improve this answer
+1 Very cool. Thanks. – Blankasaurus Jan 19 '10 at 21:16
I decided to do the processing at a later stage, which eliminates the performance issues. This is very useful info though. – Blankasaurus Jan 19 '10 at 23:02

My first approach would be super-simple:

foreach(string carModel in listOfCarModelsFromDatabase) {
    if(pageText.Contains(carModel) {
        // do something

I'd only start worrying about making it faster if the above weren't fast enough. The list of car models just can't possibly be that large (< 10000?) and it's only one page of text.

share|improve this answer
This would get rather inefficient with large lists of models, but would work for small lists. – Brett Allen Jan 19 '10 at 21:02
Yes, but there just aren't that many car models. How many car companies has there been in the history of the world? Fifty? What's the maximum number of car models each has had? Two hundred? So maybe there's been 50 * 200 = 10000 models in the history of the world? This is certainly the right order of magnitude. – jason Jan 19 '10 at 21:04
I have about 1500 objects I need to compare to the text. – Blankasaurus Jan 19 '10 at 21:09
True, I'm just imagining that if he is "indexing" 100000 pages, each with 10 kilobytes of text, that's ~1 gig of data, to foreach loop over even say 500 models. – Brett Allen Jan 19 '10 at 21:09
String matching from a dictionary is a well-understood problem in computer science; this answer is like suggesting bubble sort. – Robert Fraser Jan 19 '10 at 21:11

You should be using Regex, not tokenizing based on space.

With Regex you could use spaces and be just fine, and I believe it would be faster than tokenizing and looping through list of possible values.

How you construct that Regex though I am not sure.

Most simply, you could simply build a Regex with every model like

(Model 1|Model 2|Model 3) 

But I am sure there are more efficient ways to do this in regex.

share|improve this answer
If there are many models, the regex pattern will be pretty big... I'm not sure how efficient that would be. – Thomas Levesque Jan 19 '10 at 21:05
Yeah, interesting question for sure. – Brett Allen Jan 19 '10 at 21:07
Some regex engines may optimize it, but a traditional NFA/DFA with that many brances would be slow and terribly memory-inefficient. I'd expect a regex to perform worse than a naieve search. – Robert Fraser Jan 19 '10 at 21:13
Yup, here's a comparison of Aho-Corasick, naieve search (IndexOf) and regex: codeproject.com/KB/recipes/ahocorasick.aspx . Regex performance is godawful. – Robert Fraser Jan 19 '10 at 21:25

For a really simple solution that does substring matches (that should perform reasonably well), you could use a parameterized SQL query like this:

select ModelID, ModelName
from Model
where ? like '%' + ModelName + '%'

where the ? is a parameter that gets replaced with the entire webpage text.

share|improve this answer
-1: This is the naive, obvious solution. It's morally equivalent to the "awful" solution the author posted. While it might be fast enough for his purposes, he kind of asked for an alternative. – Brian Jan 19 '10 at 21:14
What database engine is being used? Some database engines will implement a good search method automatically and this would be better (more maintainable, more optimized, less data transfeer, etc.) than a hand-implementation of Aho-Corasick or Rabin-Karp. – Robert Fraser Jan 19 '10 at 21:16
As I said in my answer, this is a very simple solution. What I think might be interesting to some is the inverted use of LIKE - many people are not aware that can be done. – RedFilter Jan 19 '10 at 21:28

Your Answer


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.