I would like to be able to search a table as follows for smith as get everything that it within 1 variance.

Data:

O'Brien
Smithe
Dolan
Smuth
Wong
Smoth
Gunther
Smiht

I have looked into using Levenshtein distance does anyone know how to implement this with it?

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I have looked a lot on google and haven't found a decent implementation. – Andrew Clark Mar 11 '09 at 15:39
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7 Answers

Does this help? MySQL Levenshtein distance query

EDIT: The old link Levenshtein Distance as a MySQL stored function (Google Cache) is broken, thanks to Robert for pointing this out in the comment.

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+1 - I have implemented this one, I looked at it before posting. Its works but the putting it in a search(with some performance) is what I am trying to figure out. – Andrew Clark Mar 11 '09 at 16:06
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The link doesn't seem to be up anymore. Here's another artfulsoftware.com/infotree/queries.php#552 – Robert Gowland May 10 '11 at 19:17
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In order to efficiently search using levenshtein distance, you need an efficient, specialised index, such as a bk-tree. Unfortunately, no database system I know of, including MySQL, implements bk-tree indexes. This is further complicated if you're looking for full-text search, instead of just a single term per row. Off-hand, I can't think of any way that you could do full-text indexing in a manner that allows for searching based on levenshtein distance.

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An implementation for the damerau-levenshtein distance can be found here: Damerau-Levenshtein algorithm: Levenshtein with transpositions The improvement over pure Levenshtein distance is that the swapping of characters is considered. I found it in the comments of schnaader's link, thanks!

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unfortunately this result in it being 10% slower. I have however implemented the string length, he proposes using string at max or smaller, I have implemented a compare on only string +/- 1 length. – Andrew Clark Mar 13 '09 at 14:42
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you can use this function


CREATE FUNCTION `levenshtein`( s1 text, s2 text) RETURNS int(11)
    DETERMINISTIC
BEGIN 
    DECLARE s1_len, s2_len, i, j, c, c_temp, cost INT; 
    DECLARE s1_char CHAR; 
    DECLARE cv0, cv1 text; 
    SET s1_len = CHAR_LENGTH(s1), s2_len = CHAR_LENGTH(s2), cv1 = 0x00, j = 1, i = 1, c = 0; 
    IF s1 = s2 THEN 
      RETURN 0; 
    ELSEIF s1_len = 0 THEN 
      RETURN s2_len; 
    ELSEIF s2_len = 0 THEN 
      RETURN s1_len; 
    ELSE 
      WHILE j  c_temp THEN SET c = c_temp; END IF; 
            SET c_temp = CONV(HEX(SUBSTRING(cv1, j+1, 1)), 16, 10) + 1; 
            IF c > c_temp THEN  
              SET c = c_temp;  
            END IF; 
            SET cv0 = CONCAT(cv0, UNHEX(HEX(c))), j = j + 1; 
        END WHILE; 
        SET cv1 = cv0, i = i + 1; 
      END WHILE; 
    END IF; 
    RETURN c; 
  END

and for getting it as XX% use this function


CREATE FUNCTION `levenshtein_ratio`( s1 text, s2 text ) RETURNS int(11)
    DETERMINISTIC
BEGIN 
    DECLARE s1_len, s2_len, max_len INT; 
    SET s1_len = LENGTH(s1), s2_len = LENGTH(s2); 
    IF s1_len > s2_len THEN  
      SET max_len = s1_len;  
    ELSE  
      SET max_len = s2_len;  
    END IF; 
    RETURN ROUND((1 - LEVENSHTEIN(s1, s2) / max_len) * 100); 
  END
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I am setting up a search based on Levenshtein or Damerau-Levenshtein (probably the latter) for multiple searches over an indexed text, based on a paper by by Gonzalo Navarro and Ricardo Baeza-yates: link text

After building a suffix array (see wikipedia), if you are interested in a string with at most k mismatches to the search string, break the search string into k+1 pieces; at least one of those must be intact. Find the substrings by binary search over the suffix array, then apply the distance function to the patch around each matched piece.

The links here were a big help. Thanks to all.

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I had a specialized case of k-distance searching and after installing the Damerau-Levenshtein UDF in MySQL found that the query was taking too long. I came up with the following solution:

  • I have a very restrictive search space (9 character string limited to numeric values).

Create a new table (or append columns to your target table) with columns for each character position in your target field. ie. My VARCHAR(9) ended up as 9 TINYINT columns + 1 Id column that matches my main table (add indexes for each column). I added triggers to ensure that these new columns always get updated when my main table gets updated.

To perform a k-distance query use the following predicate:

(Column1=s[0]) + (Column2=s[1]) + (Column3=s[2]) + (Column4=s[3]) + ... >= m

where s is your search string and m is the required number of matching characters (or m = 9 - d in my case where d is the maximum distance I want returned).

After testing I found that a query over 1 million rows that was taking 4.6 seconds on average was returning matching ids in less than a second. A second query to return the data for the matching rows in my main table similarly took under a second. (Combining these two queries as a subquery or join resulted in significantly longer execution times and I'm not sure why.)

Though this is not Damerau-Levenshtein (doesn't account for substitution) it suffices for my purposes.

Though this solution probably doesn't scale well for a larger (length) search space it worked for this restrictive case very well.

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