# How to calculate the different metrics for multi class classification

My confusion matrix has the following structure:

                (Predicted)

C=   ( actual)    [TN FP
FN TP]


How can I calculate the Mathews Correlation Coefficient (MCC) value for multi-class expressed as MCC = (TP .* TN - FP .* FN) ./ ... sqrt( (TP + FP) .* (TP + FN) .* (TN + FP) .* (TN + FN) );

Also, I have some doubts regarding the calculation of the following measures for multi-class. Please correct me where wrong.

for i=1:nClasses
TN(i)=C(i,i);
FP(i)=sum(C(i,:))-C(i,i);
FN(i)=sum(C(:,i))-C(i,i);
TP(i)=sum(C(:))-TP(i)-FP(i)-FN(i);
end


As you can see this MCC formula is for binary classification, so you can only calculate its results by considering the problem as binary.

[edited to clarify OP's confusion] What is a confusion matrix? It shows for every true class $$X$$ as a row and every predicted class $$Y$$ as a column how many instances have true class $$X$$ and are predicted as $$Y$$. If there are only two classes (binary classification), the only possibilities are

• $$X$$ positive and $$Y$$ positive -> TP
• $$X$$ positive and $$Y$$ negative -> FP
• $$X$$ negative and $$Y$$ positive -> FN
• $$X$$ negative and $$Y$$ negative -> TN

However when there are more than two classes (multiclass classification) it's impossible to use this distinction positive/negative directly, so there are no general TP,FP,FN,TN cases.

With multiple classes one can calculate binary classification metrics for every class. This is done by considering the target class as positive and all the other classes as negative (as if they are merged into one big negative class).

Example: suppose we have classes A, B, C. If we focus on class A, the confusion matrix is like this:

    A   B   C
A   TP  FN  FN
B   FP  TN  TN
C   FP  TN  TN


to present it another way:

         A    B or C
A        TP    FN
B or C   FP    TN


Now if we focus on class B the confusion matrix becomes:

    A   B   C
A   TN  FP  TN
B   FN  TP  FN
C   TN  FP  TN


In your code the TP and TN categories are swapped:

TP(i)=C(i,i);
...
TN(i)=sum(C(:))-TP(i)-FP(i)-FN(i);

• Thank you for answering. In my confusion matrix, I have represented the first row as the negative class (class 0) and second row as positive class (Class 1). That is why A is TN and B row is TP. Based on that, how can I calculate the MCC value and other metrics for multiple classes. – Sm1 Jan 23 at 20:24
• @Sm1 your confusion matrix is ok but it's only for binary classification, not for multiclass. Maybe you need help understanding the confusion matrix, I'm going to edit my answer to explain it. The important point is that MCC is for binary classification (same for precision, recall, f-score), so in the case of multiclass there is one MCC value for every class. – Erwan Jan 23 at 21:02