An exploratory data analysis is an essential step for every data analyst to
gain insights, evaluate data quality and (if required) select a machine
learning model for further processing. While privacy-preserving machine
learning is on the rise, more often than not this initial analysis is not
counted towards the privacy budget. In this paper, we quantify the privacy loss
for basic statistical functions and highlight the importance of taking it into
account when calculating the privacy-loss budget of a machine learning
approach.