I have a database of companies. My application receives data that references a company by name, but the name may not exactly match the value in the database. I need to match the incoming data to the company it refers to.

For instance, my database might contain a company with name "A. B. Widgets & Co Ltd." while my incoming data might reference "AB Widgets Limited", "A.B. Widgets and Co", or "A B Widgets".

Some words in the company name (A B Widgets) are more important for matching than others (Co, Ltd, Inc, etc). It's important to avoid false matches.

The number of companies is small enough that I can maintain a map of their names in memory, ie. I have the option of using Java rather than SQL to find the right name.

How would you do this in Java?


You could standardize the formats as much as possible in your DB/map & input (i.e. convert to upper/lowercase), then use the Levenshtein (edit) distance metric from dynamic programming to score the input against all your known names.

You could then have the user confirm the match & if they don't like it, give them the option to enter that value into your list of known names (on second thought--that might be too much power to give a user...)

  • 1
    I only recently found out about this algorithm about 6 months ago, but it has served me incredibly well since! Also it makes me look smart when I say "oh just use a Levenshtein Distance'. :-)
    – Aidos
    Nov 27 '08 at 11:46

Although this thread is a bit old, I recently did an investigation on the efficiency of string distance metrics for name matching and came across this library:


If you don't want to spend ages on implementing string distance algorithms, I recommend to give it a try as the first step, there's a ~20 different algorithms already implemented (incl. Levenshtein, Jaro-Winkler, Monge-Elkan algorithms etc.) and its code is structured well enough that you don't have to understand the whole logic in-depth, but you can start using it in minutes.

(BTW, I'm not the author of the library, so kudos for its creators.)


You can use an LCS algorithm to score them.

I do this in my photo album to make it easy to email in photos and get them to fall into security categories properly.


I'd do LCS ignoring spaces, punctuation, case, and variations on "co", "llc", "ltd", and so forth.


Have a look at Lucene. It's an open source full text search Java library with 'near match' capabilities.


Your database may suport the use of Regular Expressions (regex) - see below for some tutorials in Java - here's the link to the MySQL documentation (as an example):


You would probably want to store in the database a fairly complex regular express statement for each company that encompassed the variations in spelling that you might anticipate - or the sub-elements of the company name that you would like to weight as being significant.

You can also use the regex library in Java

JDK 1.4.2

JDK 1.5.0

Using Regular Expressions in Java

The Java Regex API Explained

You might also want to see if your database supports Soundex capabilities (for example, see the following link to MySQL)


vote up 1 vote down

You can use an LCS algorithm to score them.

I do this in my photo album to make it easy to email in photos and get them to fall into security categories properly.

* LCS code
* Example usage (guessing a category based on what people entered)

to be more precise, better than Least Common Subsequence, Least Common Substring should be more precise as the order of characters is important.


You could use Lucene to index your database, then query the Lucene index. There are a number of search engines built on top of Lucene, including Solr.

  • This does not provide an answer to the question. To critique or request clarification from an author, leave a comment below their post. Aug 31 '12 at 2:15
  • Thanks for the feedback, I've made my answer more like an answer. Aug 31 '12 at 4:49

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