How to Automatically Extract and Label Data Points on a Seaborn KDE Plot
Published in
8 min readSep 5, 2023
A Kernel Density Estimate plot is a method — similar to a histogram — for visualizing the distribution of data points. While a histogram bins and counts observations, a KDE plot smooths the observations using a Gaussian kernel. As alternatives to histograms, KDEs are arguably more attractive, easier to compare in the same figure, and better at accentuating patterns…