# Allow faults in typing

I want to make a quiz and the user should type the right answer. Let's say the answer is correct if the answer matches 90%. For example, if the user types

`Britney Spers` instead of `Britney Spears`, the answer should be right.

I searched for Javascript functions to determine how accurate the answer is, I found some interesting functions for PHP, Ruby etc, but I need it in JavaScript.

Has anybody experience with these kind of algorhitms? Thank you if you answer :)

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You're looking for the edit distance (aka Levenshtein distance). Under this scheme, the distance between two strings is the number of insertions, deletions, or substitutions required to make the strings match. For example, if the right answer is "oranges", then:

• "oranges" has a distance of 0 (they are the same word)
• "orange" has a distance of 1 (delete `s`)
• "roranger" has a distance of 2 (insert `r`, substitute `s -> r`)
• "sponges" has a distance of 3 (substitute `o -> s`, substitute `r -> p`, substitute `o -> a`)
• "" has a distance of 7 (insert every letter in `oranges`)

A simple algorithm for it in Javascript would look like this (adapted and modified from this gist):

``````function(a, b){
// Return the number of characters in the other
// string if either string is blank.
if(a.length == 0) return b.length;
if(b.length == 0) return a.length;

// Otherwise, let's make a matrix to represent the possible choices
// we can take.
var matrix = [];

var i;
for(i = 0; i <= b.length; i++){
matrix[i] = [i];
}

var j;
for(j = 0; j <= a.length; j++){
matrix[0][j] = j;
}

for(i = 1; i <= b.length; i++){
for(j = 1; j <= a.length; j++){
if(b.charAt(i-1) == a.charAt(j-1)){
matrix[i][j] = matrix[i-1][j-1];
} else {
matrix[i][j] = Math.min(matrix[i-1][j-1] + 1, // substitution
Math.min(matrix[i][j-1] + 1, // insertion
matrix[i-1][j] + 1)); // deletion
}
}
}

return matrix[b.length][a.length];
};
``````

One problem with your question is that the examples you wrote about what you're looking for (e.g. "matches 90%" or "accuracy of the answer") are not well-defined metrics.

There are a lot of ways an answer can be wrong. For example, let's say the right answer is "apple". Which of these should be accepted?

• "APPLE" (wrong capitalization)
• "ppple" (misspelled)
• "apples" (plural, but you wanted the singular)
• "Fuji apple" (too specific)

and so on. Deciding which of these should be accepted is beyond the power of a simple edit-distance algorithm and will require heavier lifting, like NLP.

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Thanks! This works surprisingly good! I will accept it in 5 min. – Jonny Burger Apr 22 '12 at 18:47
It is a music-only based quiz and I will make it case-insensitive, so there shouldn't be a lot of problems with it. – Jonny Burger Apr 22 '12 at 18:55

You're looking for an edit distance algorithm. Basically, you want to see how many character changes (add/delete/replace) it will take to get from one string to another. Of course now you have to have a dictionary of target strings to find the distance to.

http://en.wikipedia.org/wiki/Edit_distance

More specifically : http://en.wikipedia.org/wiki/Levenshtein_distance

The edit distance between `Britney Spers` and `Britney Spears` would be one: insert `'a'`.

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