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I applied the KNN algorithm in matlab for classifying handwritten digits. the digits are in vector format initially 8*8, and stretched to form a vector 1*64. So each time I am comparing the first digit with all the rest data set, (which is quite huge), then the second one with the rest of the set etc etc etc. Now my question is, isn't 1 neighbor the best choice always? Since I am using Euclidean Distance, (I pick the one that is closer) why should I also choose 2 or 3 more neighbors since I got the closest digit?

Thanks

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Let's say you have one 7 which is wrongly written and looks exactly like the 1 you are checking now. You get the wrong result. Now, how likely is it that among 5 best matches, there are more 7s than 1s? –  svinja Apr 16 '12 at 14:13
    
guys is it normal to get 90.21% success? on a 1593 digits data set? –  Test Test Apr 16 '12 at 19:57
    
@TestTest I'm not an expert on image recognition, I usually use ML for other purposes, but 90.2% sounds pretty good to me. –  amit Apr 16 '12 at 20:03

1 Answer 1

up vote 1 down vote accepted

You have to take noise into consideration. Assume that maybe some of your classified examples were classified wrongly, or maybe one of them is oddly very close to other examples - which are different, but it is actually only a "glitch". In these cases - classifying according to this off the track example could lead to a mistake.

From personal experience, usually the best results are achieved for k=3/5/7, but it is instance dependent.

If you want to achieve best performance - you should use cross validation top chose the optimal k for your specific instance.

Also, it is common to use only odd number as k for KNN, to avoid "draws"

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guys is it normal to get 90.21% success? on a 1593 digits data set? –  Test Test Apr 16 '12 at 19:57

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