I need to make a composite index from the sum of three power-law distributed variables, which vary on different scales and have different variances. For each variable there are many observations with very low scores and few observations with high scores.
I need to normalize the variables to obtain a common scale, before summing them to obtain a single score of the final index. I'm considering two possibilities:
Min-Max Normalization
(Xi - min (X)) / (max(X) - min(X))
Standardization (Z-scores)
(Xi - mean(X)) / std(X)
Which solution is appropriate, given the power-law distribution of the three variables? Or are they both wrong? Why?
EDIT Please have a look to an example of the distribution I am referring to:
I have three variables distributed like X and I need to normalized them before making a sum of the three.