I have a set of data, over 1000 rows and 20 attributes ( shown in columns ). I am wanting use mean centering, which includes taking the mean away from each value to give a mean of 0. Do I remove the mean on an attribute by attribute basis, or do I remove the mean of all attributes from each?
For example, if the mean of attribute A was 500, and the mean of attribute B was 1,000. For all values in A I could remove 500, which gives the A attribute a mean of 0. Then I could do the same for attribute B.
I could take 750 off all values for both attributes.
Which is more statistically correct?
My question is due to this: If I subtract different values from the different attributes, the attributes are then no longer comparable as different amount have been taken from each. If I subtract the same value from all, then some columns may be full of just negative figures ( and so negating the effect of mean centering ).