How should we carry out cluster validation in terms of average error index or precision or recall? My doubt is that say using a dataset D and following my algorithm I get 6 clusters labelled c1,c2,c3,c4,c5,c6 with 50,60,30,40,10,10,10 no of elements in each cluster respectively .
In the dataset D,the actual cluster labels are 1,2,3....6 with 55,45,5,35,10,60 no of elements in each cluster respectively.
Is it necessary that my cluster label c1 must correspond to actual cluster label 1, c2 to 2, c3 to 3,....and so on?
How will I calculate average error index in this scenario?