I want some data to fit the corresponding Gaussian distribution.
The data is meant to be Gaussian already, but for some filtering reasons, they will not perfectly match the prescribed and expected Gaussian distribution. I therefore aim to reduce the existing scatter between data and desired distribution.
For example, my data fit the Gaussian distribution as follows (the expected mean value is 0 and the standard deviation 0.8):
The approximation is already decent, but I really want to crunch the still tangible scatter between simulated data and expected distribution.
How can I achieve this?
Up to now, I have introducing kinda safety factor, defined as:
SF = expected_std/actual_std;
new_data = SF*old_data;
This way the standard deviation matches the expected value, but this procedure looks quite poor from my understanding.