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)
- "fruit" (too broad)

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.