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I am trying to match a single search term against a dictionary of possible matches using a Levenshtein distance algorithm. The algorithm returns a distance expressed as number of operations required to convert the search string into the matched string. I want to present the results in ranked percentage list of top "N" (say 10) matches.

Since the search string can be longer or shorter than the individual dictionary strings, what would be an appropriate logic for expressing the distance as a percentage, which would qualitatively refelct how close "as a percentage" is each result to the query string, with 100% indicating an exact match.

I considered the following options:

Q = query string
M = matched string
PM = Percentage Match
Option 1. PMi = (1 - Lev_distance(Q, Mi)/Strlen(Q)) * 100
Option 2. PMi = (1 - Lev_distance(Q, Mi)/max(Strlen(Q), strlen(Mi))) * 100

Option 1 has the possibility of negative percentages in case the distance is greater than the search string length, where the match string is long. For example query "ABC" matched with "ABC Corp." would result in a negative match percent.

Option 2 does not appear to give a consistent percentage across a set of Mi, as each calculation would possibly use a different denominator and hence the resulting percentage values would not be normalized.

Only other way I can think of is to ditch the comparison of the lev_distance to either string lenghts, but instead present the comparitive distances of the top "N" matches as an inverse percentile rank (100-percentile-rank).

Any thoughts? Are there better approaches? I must be missing something as Levenshtein distance is probably the most common algorithm for fuzzy matches and this must be a very common problem.

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4 Answers 4

I had a similar problem and this thread helped me to figure out a solution. Hope it can help others too.

int levDis = Lev_distance(Q, Mi)
int bigger = max(strlen(Q), strlen(Mi))
double pct = (bigger - levDis) / bigger

It should return 100% if both strings are exactly the same and 0% if they are totaly different.

(sorry if my english isn't that good)

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(1 - (levNum / Math.max(s.length,t.length) ) ) *100

should be correct

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The initial question already has this solution as the "Option 2". He is looking for an alternative solution to the problem. –  Jim Clouse Aug 30 '13 at 20:04

This is essentially option 2 mentioned in my question. However let me demonstrate a problem with that approach.

Q = "ABC Corp" (len = 8)
M1 = "ABC"
M2 = "ABC Corporati"
M3 = "ABC Corp"

I have chosen M1 and M2 such that their Lev distances are same (5 each). Using option 2, the match percentages would be

M1 = (1 - 5/8)*100  = 37.5%
M2 = (1 - 5/13)*100 = 61.5%
M3 = 100%

As you can see if I present the matches in that order, there is a huge rank difference between M1 and M2, even though they have the exact same lev distance. You see the problem?

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My approach to this problem was by calculating maximum allowed operations, which is what Levenshtein distance is. The formula I used is:

percent = 0.75; // at least 75% of string must match
maxOperationsFirst = s1.length() - s1.length() * percent;
maxOperationsSecond = s2.length() - s2.length() * percent;
maxOperations = round(min(maxOperationsFirst, maxOperationsSecond));

It calculates maximum operations for each string, I believe that the calculation is easy to understand. I use the minimum value of both results and round it to closest whole number. You can skip this part and use just value of max operations from either of strings, it really depends on your data.

Once you've got the number of maximum operations, you can compare it with levenshtein result and determine if the string is acceptable. This way you can use any extended levenshtein methods, for example Damerau–Levenshtein distance, which count misspelling, e.g. test -> tset, only as 1 operation, which is quite useful when checking user input where those misspellings occur very often.

I hope this helps you get an idea on how to solve this problem.

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