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I am super new to matlab. I want to implement the KNN algorithm. I tried to read the fitcknn classifier but I can't get it. I have matrix x that has 4 input vectors (each vector has 3 features)

     1     2     3
     5    19    20
     1     2     4
     8    19    21

I want to get out an output matrix Y that gives me the nearest neighbors (in order) for each vector of the input matrix. For example: y in this case will be

      3     2     4
      4     3     1
      1     2     4
      2     3     1

Explanation: the first row of matrix Y shows that the closest vectors to vector 1 are: vector 3 then vector 2 then vector 4.

Is there a library to do this classification (using the cosine distance as a similarity function)? Thanks.

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1 Answer 1

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n = size(x,1);
dist = squareform(pdist(x,'cosine')); %// distance matrix
dist(1:n+1:end) = inf; %// self-distance doesn't count
[~, y] = sort(dist,2);
y = y(:,1:n-1);

To save memory, you can work in chunks using pdist2 instead of pdist:

n = size(x,1);
m = 100; %// chunk size. As large as memory allows. Divisor of n
y = NaN(n,n-1); %// pre-allocate results
for ii = 0:m:size(x,1)-1
    ind = ii+(1:m); %// current chunk: these rows
    dist_chunk = pdist2(x(ind,:),x,'cosine'); %// results for this chunk
    [~, y_chunk] = sort(dist_chunk,2);
    y(ind,:) = y_chunk(:,2:end); %// fill results, except self-distance
end
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  • with sort(dist,2) you don't have to do the transpose, and you can use cosine for the cosine distance.
    – Jonas
    Commented Mar 9, 2014 at 16:36
  • @Jonas Thanks. I hadn't noticed the OP specified that metric
    – Luis Mendo
    Commented Mar 9, 2014 at 16:39
  • @LuisMendo this works fine with a small matrix (5 rows * 5 columns) but I tried it on a huge matrix (18000 * 33000) and it takes forever! (More than 9 hours and did not finish!). Any idea why or how to fix this?
    – CSawy
    Commented Mar 10, 2014 at 15:41
  • @AliEmara Have you noticed if Matlab is using virtual memory (disk cache) due to lack of physical RAM? If that's what's slowing things down, you could use pdist2 several times, passing it the whole matrix and small chunks of the same matrix
    – Luis Mendo
    Commented Mar 10, 2014 at 15:44

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