@Tim: I'm actually looking for a way
to process/measure similarities in a
pedagogical game context. Let's say
that a student's task is to select
objects from a pool, and put those
objects in a specific order (sort them
by alphabet or whatever). I then need
a way to measure the similarity
between the students answer and the
Algorithms to calculate the degree-of-correctness of the order of characters in a word (i.e. its spelling) could be very different from an algorithm to measure the correct order of words in a list. The way spelling algorithms handle omissions or dittography or transpositions might not apply very well to your use case.
If you know the order of elements in advance, and know the number of elements too, then you could simply loop through the answer and compare value-at-position to correct-value-at-position and arrive at a percentage-correct. Yet that would be a crude measure, and misleading, for if the goal of your game was to test, say, whether the gamer understood alphabetic sorting, and the gamer happened to get the first word wrong, every word could be in the wrong position even if the words were in otherwise correct alphabetic order:
So what you could do to improve the accuracy of your measurement in our hypothetical situation is this: loop through the gamer's answer-list looking to see if the answer value is immediately followed by the correct word; every time a word is followed by the correct word, you would give the gamer a point. The gamer who produced the list above would get 9 points out of a possible 10 and that score would indeed accurately reflect the gamer's understanding of the rules of alphabetic sorting.