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Hi when using a classifier in matlab (naive bayes) is there a method in which you can compare the classified labels to the original labels?

For instance take the image below, im manually having to go through each row and check which one it classified correctly and which one it didnt.

enter image description here

I was hoping for a list like Classified 550 smurf missclassified 50 and then it outputs another file with the idx of those rows misclassified.

Quick table of what it might look like

       Corrrectly Classified  |  Missclassified

Smruf        550                      50
Neptune      100                      80
and so on...

And then the index misclassified for Smruf

Smurf missclassified (row index)


Rince and complete for the other misclassified labels.

share|improve this question

You're looking for the confusionmat function. Let's generate some sample data.

>> y = [repmat(1,100,1); repmat(2,100,1); repmat(3,100,1)];

And "classify" it

>> yhat = randsample(y,300); # randomly shuffle the inputs to 'classify' them

Now you call confusionmat

>> [c order] = confusionmat(y,yhat)
ans =
    37    35    28
    30    32    38
    33    33    34

The way to interpret this table is that row r and column c tells you the number of data points from class r that were classified as class c.

That is, the diagonal elements are the ones that are correctly classified, and the nondiagonal elements are incorrectly classified.

The variable c contains this matrix. The variable order contains the names of your classes, in the same order as they appear in the confusion matrix (i.e. you can intepret them as column headings).

In my example I classified points randomly, which is why I have so many misclassified examples.

share|improve this answer
Hey Chris I already use the confusion matric but its horrid, in my question it is much easyier to read and understand, the confusion matrix takes a book to learn how to interpret. – Garrith Graham Jul 20 '12 at 23:25
Just write a utility function that converts a confusion matrix into the form you want. Then you only need to interpret it once (and the interpretation isn't so hard). If c is your confusion matrix, then something like N=size(c,1); for i=1:N; correct(i)=c(i,i); incorrect(i)=sum(c,2)-correct(i); end should do the trick. – Chris Taylor Jul 20 '12 at 23:37

Unless you're classifying really huge datasets, a simple for-loop should be fine.

num_correct = 0;
num_wrong = 0;
for i=1:length(target_class)
    if isequal(taget_class{i}, class{i})
        num_correct = num_correct + 1;
        num_wrong = num_wrong + 1;
share|improve this answer
Hey Isaac thats quite elegant but what about determining the index? – Garrith Graham Jul 20 '12 at 23:26
You could just throw indices[count] = i; count = count + 1; into the if-statement you care about. – Isaac Jul 20 '12 at 23:31

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