Suppose 2 continuous variables X and Y. Their Pearson correlation equals 0.8. This correlation is symmetric (it does not assume a dependent or independent variable). We proceed to a linear regression, in which we regress Y on X. Regardless of the unstandardized solution, we immediately go to the standardized solution (both Y and X standardized), leading to the following solution:
Z_Y = 0.8*Z_X
I interpret this as: if X increases with 1 standard deviation, Y increases with 0.8 standard deviations. Now, suppose, for whatever reason, we also regress X on Y. That standardized solution is:
Z_X = 0.8*Z_Y
This true because the standardized regression coefficient is equal to the correlation coefficient, and thus both are symmetric. When interpreting this result, I would say: if Y increases with 1 standard deviation, X increases with 0.8 standard deviations.
As both interpretations seem contradictory, how can they be reconciled? I know the correlation coefficient (or standardized regression coefficient) cannot go below -1 or above 1, but why is the second equation not: Z_X = (1/0.8)*Z_Y?
I cannot get my head around this, so clearly I am missing out on something fundamental here. Many thanks!