If I have three strings, the first one is `string1 = Laptop`

, the second one is `string2 = Latpop`

and the third one is `string3 = Lavmop`

, then the levenshtein distance algorithm will return the same distance for the similarities of `string1`

and `string2`

and the similarities of `string1`

and `string3`

. that is because the levenshtein algorithm calculate only the operations: insert, delete and substution, which is not including the transposition operation, for example, we can swap the third and forth character at `Latpop`

string which yields `Laptop`

.

It's obviouse that `Latpop`

is more similar to the `Laptop`

than `Lavmop`

, and it's not correct to classify them in the same similarity level.

Is there an algorithm, that take into account the transposition operation?

adjacentcharacters en.wikipedia.org/wiki/Damerau%E2%80%93Levenshtein_distance